dnn.cpp 172.9 KB
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/*M///////////////////////////////////////////////////////////////////////////////////////
//
//  IMPORTANT: READ BEFORE DOWNLOADING, COPYING, INSTALLING OR USING.
//
//  By downloading, copying, installing or using the software you agree to this license.
//  If you do not agree to this license, do not download, install,
//  copy or use the software.
//
//
//                           License Agreement
//                For Open Source Computer Vision Library
//
// Copyright (C) 2013, OpenCV Foundation, all rights reserved.
// Third party copyrights are property of their respective owners.
//
// Redistribution and use in source and binary forms, with or without modification,
// are permitted provided that the following conditions are met:
//
//   * Redistribution's of source code must retain the above copyright notice,
//     this list of conditions and the following disclaimer.
//
//   * Redistribution's in binary form must reproduce the above copyright notice,
//     this list of conditions and the following disclaimer in the documentation
//     and/or other materials provided with the distribution.
//
//   * The name of the copyright holders may not be used to endorse or promote products
//     derived from this software without specific prior written permission.
//
// This software is provided by the copyright holders and contributors "as is" and
// any express or implied warranties, including, but not limited to, the implied
// warranties of merchantability and fitness for a particular purpose are disclaimed.
// In no event shall the Intel Corporation or contributors be liable for any direct,
// indirect, incidental, special, exemplary, or consequential damages
// (including, but not limited to, procurement of substitute goods or services;
// loss of use, data, or profits; or business interruption) however caused
// and on any theory of liability, whether in contract, strict liability,
// or tort (including negligence or otherwise) arising in any way out of
// the use of this software, even if advised of the possibility of such damage.
//
//M*/

#include "precomp.hpp"
#include "op_halide.hpp"
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#include "op_inf_engine.hpp"
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#include "ie_ngraph.hpp"

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#include "halide_scheduler.hpp"
#include <set>
#include <algorithm>
#include <iostream>
#include <sstream>
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#include <fstream>
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#include <iterator>
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#include <numeric>
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#include <opencv2/dnn/shape_utils.hpp>
#include <opencv2/imgproc.hpp>

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#include <opencv2/core/utils/configuration.private.hpp>
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#include <opencv2/core/utils/logger.hpp>
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namespace cv {
namespace dnn {
CV__DNN_EXPERIMENTAL_NS_BEGIN
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static size_t DNN_NETWORK_DUMP = utils::getConfigurationParameterSizeT("OPENCV_DNN_NETWORK_DUMP", 0);

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// this option is useful to run valgrind memory errors detection
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static bool DNN_DISABLE_MEMORY_OPTIMIZATIONS = utils::getConfigurationParameterBool("OPENCV_DNN_DISABLE_MEMORY_OPTIMIZATIONS", false);

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#ifdef HAVE_OPENCL
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static bool DNN_OPENCL_ALLOW_ALL_DEVICES = utils::getConfigurationParameterBool("OPENCV_DNN_OPENCL_ALLOW_ALL_DEVICES", false);
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#endif
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static int PARAM_DNN_BACKEND_DEFAULT = (int)utils::getConfigurationParameterSizeT("OPENCV_DNN_BACKEND_DEFAULT",
#ifdef HAVE_INF_ENGINE
    (size_t)DNN_BACKEND_INFERENCE_ENGINE
#else
    (size_t)DNN_BACKEND_OPENCV
#endif
);

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// Additional checks (slowdowns execution!)
static bool DNN_CHECK_NAN_INF = utils::getConfigurationParameterBool("OPENCV_DNN_CHECK_NAN_INF", false);
static bool DNN_CHECK_NAN_INF_DUMP = utils::getConfigurationParameterBool("OPENCV_DNN_CHECK_NAN_INF_DUMP", false);
static bool DNN_CHECK_NAN_INF_RAISE_ERROR = utils::getConfigurationParameterBool("OPENCV_DNN_CHECK_NAN_INF_RAISE_ERROR", false);

using std::vector;
using std::map;
using std::make_pair;
using std::set;
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using std::string;
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//==================================================================================================

class BackendRegistry
{
public:
    typedef std::vector< std::pair<Backend, Target> > BackendsList;
    const BackendsList & getBackends() const { return backends; }
    static BackendRegistry & getRegistry()
    {
        static BackendRegistry impl;
        return impl;
    }
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#ifdef HAVE_INF_ENGINE
    static inline bool checkIETarget(Target target)
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    {
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#if INF_ENGINE_VER_MAJOR_GE(INF_ENGINE_RELEASE_2019R3)
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        // Lightweight detection
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        const std::vector<std::string> devices = getCore("").GetAvailableDevices();
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        for (std::vector<std::string>::const_iterator i = devices.begin(); i != devices.end(); ++i)
        {
            if (std::string::npos != i->find("MYRIAD") && target == DNN_TARGET_MYRIAD)
                return true;
            else if (std::string::npos != i->find("FPGA") && target == DNN_TARGET_FPGA)
                return true;
            else if (std::string::npos != i->find("CPU") && target == DNN_TARGET_CPU)
                return true;
            else if (std::string::npos != i->find("GPU") && (target == DNN_TARGET_OPENCL || target == DNN_TARGET_OPENCL_FP16))
                return true;
        }
        return false;
#else
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        cv::dnn::Net net;
        cv::dnn::LayerParams lp;
        lp.set("kernel_size", 1);
        lp.set("num_output", 1);
        lp.set("bias_term", false);
        lp.type = "Convolution";
        lp.name = "testLayer";
        lp.blobs.push_back(Mat({1, 2, 1, 1}, CV_32F, Scalar(1)));
        net.addLayerToPrev(lp.name, lp.type, lp);
        net.setPreferableBackend(cv::dnn::DNN_BACKEND_INFERENCE_ENGINE);
        net.setPreferableTarget(target);
        static int inpDims[] = {1, 2, 3, 4};
        net.setInput(cv::Mat(4, &inpDims[0], CV_32FC1, cv::Scalar(0)));
        try
        {
            net.forward();
        }
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        catch(const std::exception& e)
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        {
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            CV_LOG_INFO(NULL, "checkIETarget(" << (int)target << ") has failed with message: " << e.what());
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            return false;
        }
        return true;
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#endif
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    }
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#endif
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private:
    BackendRegistry()
    {
#ifdef HAVE_HALIDE
        backends.push_back(std::make_pair(DNN_BACKEND_HALIDE, DNN_TARGET_CPU));
#  ifdef HAVE_OPENCL
        if (cv::ocl::useOpenCL())
            backends.push_back(std::make_pair(DNN_BACKEND_HALIDE, DNN_TARGET_OPENCL));
#  endif
#endif // HAVE_HALIDE

#ifdef HAVE_INF_ENGINE
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        if (checkIETarget(DNN_TARGET_CPU)) {
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#ifdef HAVE_DNN_IE_NN_BUILDER_2019
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            backends.push_back(std::make_pair(DNN_BACKEND_INFERENCE_ENGINE_NN_BUILDER_2019, DNN_TARGET_CPU));
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#endif
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#ifdef HAVE_DNN_NGRAPH
            backends.push_back(std::make_pair(DNN_BACKEND_INFERENCE_ENGINE_NGRAPH, DNN_TARGET_CPU));
#endif
        }
        if (checkIETarget(DNN_TARGET_MYRIAD)) {
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#ifdef HAVE_DNN_IE_NN_BUILDER_2019
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            backends.push_back(std::make_pair(DNN_BACKEND_INFERENCE_ENGINE_NN_BUILDER_2019, DNN_TARGET_MYRIAD));
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#endif
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#ifdef HAVE_DNN_NGRAPH
            backends.push_back(std::make_pair(DNN_BACKEND_INFERENCE_ENGINE_NGRAPH, DNN_TARGET_MYRIAD));
#endif
        }
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#ifdef HAVE_DNN_IE_NN_BUILDER_2019
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        if (checkIETarget(DNN_TARGET_FPGA))
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            backends.push_back(std::make_pair(DNN_BACKEND_INFERENCE_ENGINE_NN_BUILDER_2019, DNN_TARGET_FPGA));
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#endif
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#ifdef HAVE_OPENCL
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        if (cv::ocl::useOpenCL() && ocl::Device::getDefault().isIntel())
        {
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            if (checkIETarget(DNN_TARGET_OPENCL)) {
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#ifdef HAVE_DNN_IE_NN_BUILDER_2019
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                backends.push_back(std::make_pair(DNN_BACKEND_INFERENCE_ENGINE_NN_BUILDER_2019, DNN_TARGET_OPENCL));
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#endif
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#ifdef HAVE_DNN_NGRAPH
                backends.push_back(std::make_pair(DNN_BACKEND_INFERENCE_ENGINE_NGRAPH, DNN_TARGET_OPENCL));
#endif
            }
            if (checkIETarget(DNN_TARGET_OPENCL_FP16)) {
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#ifdef HAVE_DNN_IE_NN_BUILDER_2019
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                backends.push_back(std::make_pair(DNN_BACKEND_INFERENCE_ENGINE_NN_BUILDER_2019, DNN_TARGET_OPENCL_FP16));
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#endif
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#ifdef HAVE_DNN_NGRAPH
                backends.push_back(std::make_pair(DNN_BACKEND_INFERENCE_ENGINE_NGRAPH, DNN_TARGET_OPENCL_FP16));
#endif
            }
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        }
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#endif
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#endif // HAVE_INF_ENGINE

#ifdef HAVE_OPENCL
        if (cv::ocl::useOpenCL())
        {
            backends.push_back(std::make_pair(DNN_BACKEND_OPENCV, DNN_TARGET_OPENCL));
            backends.push_back(std::make_pair(DNN_BACKEND_OPENCV, DNN_TARGET_OPENCL_FP16));
        }
#endif

        backends.push_back(std::make_pair(DNN_BACKEND_OPENCV, DNN_TARGET_CPU));
    }

    BackendsList backends;
};


std::vector< std::pair<Backend, Target> > getAvailableBackends()
{
    return BackendRegistry::getRegistry().getBackends();
}

std::vector<Target> getAvailableTargets(Backend be)
{
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    if (be == DNN_BACKEND_DEFAULT)
        be = (Backend)PARAM_DNN_BACKEND_DEFAULT;
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#ifdef HAVE_INF_ENGINE
    if (be == DNN_BACKEND_INFERENCE_ENGINE)
        be = getInferenceEngineBackendTypeParam();
#endif
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    std::vector<Target> result;
    const BackendRegistry::BackendsList all_backends = getAvailableBackends();
    for(BackendRegistry::BackendsList::const_iterator i = all_backends.begin(); i != all_backends.end(); ++i )
    {
        if (i->first == be)
            result.push_back(i->second);
    }
    return result;
}

//==================================================================================================

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namespace
{
    typedef std::vector<MatShape> ShapesVec;

    struct LayerShapes
    {
        ShapesVec in, out, internal;
        // No guarantees that layer which support in-place computations
        // will be computed in-place (input.data_ptr == output.data_ptr).
        // If layer said that it could work in-place and layers after it
        // no longer use input blob, we'll set output = input.
        bool supportInPlace;
        LayerShapes() {supportInPlace = false;}
    };
}

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Mat blobFromImage(InputArray image, double scalefactor, const Size& size,
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                  const Scalar& mean, bool swapRB, bool crop, int ddepth)
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{
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    CV_TRACE_FUNCTION();
    Mat blob;
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    blobFromImage(image, blob, scalefactor, size, mean, swapRB, crop, ddepth);
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    return blob;
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}

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void blobFromImage(InputArray image, OutputArray blob, double scalefactor,
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                   const Size& size, const Scalar& mean, bool swapRB, bool crop, int ddepth)
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{
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    CV_TRACE_FUNCTION();
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    std::vector<Mat> images(1, image.getMat());
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    blobFromImages(images, blob, scalefactor, size, mean, swapRB, crop, ddepth);
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}

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Mat blobFromImages(InputArrayOfArrays images, double scalefactor, Size size,
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                   const Scalar& mean, bool swapRB, bool crop, int ddepth)
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{
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    CV_TRACE_FUNCTION();
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    Mat blob;
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    blobFromImages(images, blob, scalefactor, size, mean, swapRB, crop, ddepth);
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    return blob;
}

void blobFromImages(InputArrayOfArrays images_, OutputArray blob_, double scalefactor,
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                    Size size, const Scalar& mean_, bool swapRB, bool crop, int ddepth)
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{
    CV_TRACE_FUNCTION();
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    CV_CheckType(ddepth, ddepth == CV_32F || ddepth == CV_8U, "Blob depth should be CV_32F or CV_8U");
    if (ddepth == CV_8U)
    {
        CV_CheckEQ(scalefactor, 1.0, "Scaling is not supported for CV_8U blob depth");
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        CV_Assert(mean_ == Scalar() && "Mean subtraction is not supported for CV_8U blob depth");
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    }

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    std::vector<Mat> images;
    images_.getMatVector(images);
    CV_Assert(!images.empty());
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    for (size_t i = 0; i < images.size(); i++)
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    {
        Size imgSize = images[i].size();
        if (size == Size())
            size = imgSize;
        if (size != imgSize)
        {
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            if(crop)
            {
              float resizeFactor = std::max(size.width / (float)imgSize.width,
                                            size.height / (float)imgSize.height);
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              resize(images[i], images[i], Size(), resizeFactor, resizeFactor, INTER_LINEAR);
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              Rect crop(Point(0.5 * (images[i].cols - size.width),
                              0.5 * (images[i].rows - size.height)),
                        size);
              images[i] = images[i](crop);
            }
            else
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              resize(images[i], images[i], size, 0, 0, INTER_LINEAR);
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        }
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        if(images[i].depth() == CV_8U && ddepth == CV_32F)
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            images[i].convertTo(images[i], CV_32F);
        Scalar mean = mean_;
        if (swapRB)
            std::swap(mean[0], mean[2]);

        images[i] -= mean;
        images[i] *= scalefactor;
    }

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    size_t nimages = images.size();
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    Mat image0 = images[0];
    int nch = image0.channels();
    CV_Assert(image0.dims == 2);
    if (nch == 3 || nch == 4)
    {
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        int sz[] = { (int)nimages, nch, image0.rows, image0.cols };
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        blob_.create(4, sz, ddepth);
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        Mat blob = blob_.getMat();
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        Mat ch[4];

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        for(size_t i = 0; i < nimages; i++ )
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        {
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            const Mat& image = images[i];
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            CV_Assert(image.depth() == blob_.depth());
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            nch = image.channels();
            CV_Assert(image.dims == 2 && (nch == 3 || nch == 4));
            CV_Assert(image.size() == image0.size());

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            for( int j = 0; j < nch; j++ )
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                ch[j] = Mat(image.rows, image.cols, ddepth, blob.ptr((int)i, j));
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            if(swapRB)
                std::swap(ch[0], ch[2]);
            split(image, ch);
        }
    }
    else
    {
       CV_Assert(nch == 1);
       int sz[] = { (int)nimages, 1, image0.rows, image0.cols };
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       blob_.create(4, sz, ddepth);
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       Mat blob = blob_.getMat();
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       for(size_t i = 0; i < nimages; i++ )
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       {
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           const Mat& image = images[i];
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           CV_Assert(image.depth() == blob_.depth());
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           nch = image.channels();
           CV_Assert(image.dims == 2 && (nch == 1));
           CV_Assert(image.size() == image0.size());

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           image.copyTo(Mat(image.rows, image.cols, ddepth, blob.ptr((int)i, 0)));
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       }
    }
}

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void imagesFromBlob(const cv::Mat& blob_, OutputArrayOfArrays images_)
{
    CV_TRACE_FUNCTION();

    //A blob is a 4 dimensional matrix in floating point precision
    //blob_[0] = batchSize = nbOfImages
    //blob_[1] = nbOfChannels
    //blob_[2] = height
    //blob_[3] = width
    CV_Assert(blob_.depth() == CV_32F);
    CV_Assert(blob_.dims == 4);

    images_.create(cv::Size(1, blob_.size[0]), blob_.depth());

    std::vector<Mat> vectorOfChannels(blob_.size[1]);
    for (int n = 0; n <  blob_.size[0]; ++n)
    {
        for (int c = 0; c < blob_.size[1]; ++c)
        {
            vectorOfChannels[c] = getPlane(blob_, n, c);
        }
        cv::merge(vectorOfChannels, images_.getMatRef(n));
    }
}

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#ifdef HAVE_OPENCL
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class OpenCLBackendWrapper : public BackendWrapper
{
public:
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    OpenCLBackendWrapper(Mat& m) : BackendWrapper(DNN_BACKEND_OPENCV, DNN_TARGET_OPENCL)
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    {
        m.copyTo(umat);
        host = &m;
        hostDirty = false;
    }

    OpenCLBackendWrapper(const Ptr<BackendWrapper>& baseBuffer, Mat& m)
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        : BackendWrapper(DNN_BACKEND_OPENCV, DNN_TARGET_OPENCL)
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    {
        Ptr<OpenCLBackendWrapper> base = baseBuffer.dynamicCast<OpenCLBackendWrapper>();
        CV_Assert(!base.empty());

        host = &m;

        int shape[] = {1, (int)base->umat.total()};
        umat = base->umat.reshape(1, 2, &shape[0])
                         .colRange(0, host->total())
                         .reshape(1, host->dims, &host->size[0]);
        hostDirty = false;
    }

    static Ptr<BackendWrapper> create(Mat& m)
    {
        return Ptr<BackendWrapper>(new OpenCLBackendWrapper(m));
    }

    static Ptr<BackendWrapper> create(const Ptr<BackendWrapper>& baseBuffer, Mat& m)
    {
        return Ptr<BackendWrapper>(new OpenCLBackendWrapper(baseBuffer, m));
    }

    static std::vector<UMat> getUMatVector(const std::vector<Ptr<BackendWrapper> >& wrappers)
    {
        const int numWrappers = wrappers.size();
        std::vector<UMat> mats(wrappers.size());
        for (int i = 0; i < numWrappers; ++i)
        {
            Ptr<OpenCLBackendWrapper> umatWrapper = wrappers[i].dynamicCast<OpenCLBackendWrapper>();
            CV_Assert(!umatWrapper.empty());
            umatWrapper->copyToDevice();
            mats[i] = umatWrapper->umat;
        }
        return mats;
    }

    // Replaces all umats in wrappers to specific ones.
    static void update(const std::vector<Ptr<BackendWrapper> >& wrappers,
                       const std::vector<UMat>& umats)
    {
        CV_Assert(wrappers.size() == umats.size());
        for (int i = 0, n = umats.size(); i < n; ++i)
        {
            Ptr<OpenCLBackendWrapper> umatWrapper = wrappers[i].dynamicCast<OpenCLBackendWrapper>();
            CV_Assert(!umatWrapper.empty());
            umatWrapper->umat = umats[i];
        }
    }

    ~OpenCLBackendWrapper() {}

    // Copies data from device to a host memory.
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    virtual void copyToHost() CV_OVERRIDE
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    {
        umat.copyTo(*host);
    }

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    virtual void setHostDirty() CV_OVERRIDE
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    {
        hostDirty = true;
    };

    void copyToDevice()
    {
        if (hostDirty)
        {
            host->copyTo(umat);
            hostDirty = false;
        }
    }

private:
    UMat umat;
    Mat* host;
    bool hostDirty;
};
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#endif
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struct LayerPin
{
    int lid;
    int oid;

    LayerPin(int layerId = -1, int outputId = -1)
        : lid(layerId), oid(outputId) {}

    bool valid() const
    {
        return (lid >= 0 && oid >= 0);
    }

    bool equal(const LayerPin &r) const
    {
        return (lid == r.lid && oid == r.oid);
    }

    bool operator<(const LayerPin &r) const
    {
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        return lid < r.lid || (lid == r.lid && oid < r.oid);
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    }

    bool operator ==(const LayerPin &r) const
    {
        return lid == r.lid && oid == r.oid;
    }
};

struct LayerData
{
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    LayerData() : id(-1), skip(false), flag(0) {}
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    LayerData(int _id, const String &_name, const String &_type, LayerParams &_params)
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        : id(_id), name(_name), type(_type), params(_params), skip(false), flag(0)
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    {
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        CV_TRACE_FUNCTION();

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        //add logging info
        params.name = name;
        params.type = type;
    }

    int id;
    String name;
    String type;
    LayerParams params;

    std::vector<LayerPin> inputBlobsId;
    std::set<int> inputLayersId;
    std::set<int> requiredOutputs;
    std::vector<LayerPin> consumers;
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    std::vector<Ptr<BackendWrapper> > outputBlobsWrappers;
    std::vector<Ptr<BackendWrapper> > inputBlobsWrappers;
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    std::vector<Ptr<BackendWrapper> > internalBlobsWrappers;
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    Ptr<Layer> layerInstance;
    std::vector<Mat> outputBlobs;
    std::vector<Mat*> inputBlobs;
    std::vector<Mat> internals;
    // Computation nodes of implemented backends (except DEFAULT).
    std::map<int, Ptr<BackendNode> > backendNodes;
    // Flag for skip layer computation for specific backend.
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    bool skip;
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    int flag;

    Ptr<Layer> getLayerInstance()
    {
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        CV_TRACE_FUNCTION();
        CV_TRACE_ARG_VALUE(type, "type", type.c_str());

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        if (layerInstance)
            return layerInstance;

        layerInstance = LayerFactory::createLayerInstance(type, params);
        if (!layerInstance)
        {
            CV_Error(Error::StsError, "Can't create layer \"" + name + "\" of type \"" + type + "\"");
        }

        return layerInstance;
    }
};

//fake layer containing network input blobs
struct DataLayer : public Layer
{
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    DataLayer() : Layer()
    {
        skip = false;
    }

    virtual bool supportBackend(int backendId) CV_OVERRIDE
    {
        return backendId == DNN_BACKEND_OPENCV ||
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               (backendId == DNN_BACKEND_INFERENCE_ENGINE_NN_BUILDER_2019 && inputsData.size() == 1);
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    }
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    void forward(InputArrayOfArrays inputs_arr, OutputArrayOfArrays outputs_arr, OutputArrayOfArrays internals_arr) CV_OVERRIDE
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    {
        CV_TRACE_FUNCTION();
        CV_TRACE_ARG_VALUE(name, "name", name.c_str());

        CV_OCL_RUN(IS_DNN_OPENCL_TARGET(preferableTarget),
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                   forward_ocl(inputs_arr, outputs_arr, internals_arr))
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        if (outputs_arr.depth() == CV_16S)
        {
            forward_fallback(inputs_arr, outputs_arr, internals_arr);
            return;
        }

        std::vector<Mat> outputs, internals;
        outputs_arr.getMatVector(outputs);
        internals_arr.getMatVector(internals);
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        // Supported modes:
        // | Input type | Output type |
        // |       fp32 |        fp32 |
        // |      uint8 |        fp32 |
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        for (int i = 0; i < inputsData.size(); ++i)
        {
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            double scale = scaleFactors[i];
            Scalar& mean = means[i];
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            CV_Assert(mean == Scalar() || inputsData[i].size[1] <= 4);
            CV_CheckTypeEQ(outputs[i].type(), CV_32FC1, "");
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            bool singleMean = true;
            for (int j = 1; j < std::min(4, inputsData[i].size[1]) && singleMean; ++j)
            {
                singleMean = mean[j] == mean[j - 1];
            }

            if (singleMean)
            {
                inputsData[i].convertTo(outputs[i], CV_32F, scale, -mean[0] * scale);
            }
            else
635
            {
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                for (int n = 0; n < inputsData[i].size[0]; ++n)
                    for (int c = 0; c < inputsData[i].size[1]; ++c)
                    {
                        Mat inp = getPlane(inputsData[i], n, c);
                        Mat out = getPlane(outputs[i], n, c);
                        inp.convertTo(out, CV_32F, scale, -mean[c] * scale);
                    }
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            }
        }
    }

#ifdef HAVE_OPENCL
648
    std::vector<Mat> tmp_expressions;
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    bool forward_ocl(InputArrayOfArrays, OutputArrayOfArrays outputs_, OutputArrayOfArrays internals_)
    {
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        // Supported modes:
        // | Input type | Output type |
        // |       fp32 |        fp32 |
        // |       fp32 |        fp16 |
        // |      uint8 |        fp32 |
        std::vector<UMat> outputs;
        outputs_.getUMatVector(outputs);

659
        tmp_expressions.clear();
660
        for (int i = 0; i < inputsData.size(); ++i)
661
        {
662 663
            Mat inputData = inputsData[i];

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            double scale = scaleFactors[i];
            Scalar& mean = means[i];

            CV_Assert(mean == Scalar() || inputsData[i].size[1] <= 4);
            bool singleMean = true;
            for (int j = 1; j < std::min(4, inputsData[i].size[1]) && singleMean; ++j)
670
            {
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                singleMean = mean[j] == mean[j - 1];
            }

            if (outputs_.depth() == CV_16S)
            {
                if (singleMean)
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                {
                    tmp_expressions.push_back(Mat(scale * (inputsData[i] - mean[0])));
                    convertFp16(tmp_expressions.back(), outputs[i]);
                }
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                else
                {
                    for (int n = 0; n < inputsData[i].size[0]; ++n)
                        for (int c = 0; c < inputsData[i].size[1]; ++c)
                        {
                            Mat inp = getPlane(inputsData[i], n, c);

                            std::vector<cv::Range> plane(4, Range::all());
                            plane[0] = Range(n, n + 1);
                            plane[1] = Range(c, c + 1);
                            UMat out = outputs[i](plane).reshape(1, inp.dims, inp.size);

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                            tmp_expressions.push_back(scale * (inp - mean[c]));
                            convertFp16(tmp_expressions.back(), out);
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                        }
                }
            }
            else
            {
                CV_Assert(outputs_.depth() == CV_32F);
                if (singleMean)
702
                {
703
                    inputsData[i].convertTo(outputs[i], CV_32F, scale, -mean[0] * scale);
704
                }
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                else
                {
                    for (int n = 0; n < inputsData[i].size[0]; ++n)
                        for (int c = 0; c < inputsData[i].size[1]; ++c)
                        {
                            Mat inp = getPlane(inputsData[i], n, c);

                            std::vector<cv::Range> plane(4, Range::all());
                            plane[0] = Range(n, n + 1);
                            plane[1] = Range(c, c + 1);
                            UMat out = outputs[i](plane).reshape(1, inp.dims, inp.size);

                            inp.convertTo(out, CV_32F, scale, -mean[c] * scale);
                        }
                }
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            }
        }
        return true;
    }
#endif
725

726
    int outputNameToIndex(const String& tgtName) CV_OVERRIDE
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    {
        int idx = (int)(std::find(outNames.begin(), outNames.end(), tgtName) - outNames.begin());
        return (idx < (int)outNames.size()) ? idx : -1;
    }

    void setNames(const std::vector<String> &names)
    {
        outNames.assign(names.begin(), names.end());
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        shapes.clear(); shapes.resize(outNames.size());
    }

    void setInputShape(const String& tgtName, const MatShape& shape)
    {
        std::vector<String>::const_iterator it = std::find(outNames.begin(), outNames.end(), tgtName);
        CV_Check(tgtName, it != outNames.end(), "Unknown input");
        int idx = (int)(it - outNames.begin());

        CV_Assert(idx < (int)shapes.size());
        CV_Check(tgtName, shapes[idx].empty(), "Input shape redefinition is not allowed");
        shapes[idx] = shape;
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    }

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    bool getMemoryShapes(const std::vector<MatShape> &inputs,
                         const int requiredOutputs,
                         std::vector<MatShape> &outputs,
752
                         std::vector<MatShape> &internals) const CV_OVERRIDE
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    {
        CV_Assert(inputs.size() == requiredOutputs);
        outputs.assign(inputs.begin(), inputs.end());
        return false;
    }

759
    virtual void finalize(InputArrayOfArrays, OutputArrayOfArrays outputs_arr) CV_OVERRIDE
760
    {
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        std::vector<Mat> outputs;
        outputs_arr.getMatVector(outputs);

764
        CV_Assert_N(outputs.size() == scaleFactors.size(), outputs.size() == means.size(),
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                  inputsData.size() == outputs.size());
        skip = true;
        for (int i = 0; skip && i < inputsData.size(); ++i)
        {
            if (inputsData[i].data != outputs[i].data || scaleFactors[i] != 1.0 || means[i] != Scalar())
                skip = false;
        }
    }

774
#ifdef HAVE_DNN_IE_NN_BUILDER_2019
775 776
    virtual Ptr<BackendNode> initInfEngine(const std::vector<Ptr<BackendWrapper> >&) CV_OVERRIDE
    {
777 778
        CV_CheckEQ(inputsData.size(), (size_t)1, "");
        CV_CheckEQ(inputsData[0].dims, 4, "");
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        const size_t numChannels = inputsData[0].size[1];
        CV_Assert(numChannels <= 4);

        // Scale
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        InferenceEngine::TensorDesc td(InferenceEngine::Precision::FP32, {numChannels},
                                       InferenceEngine::Layout::C);
        auto weights = InferenceEngine::make_shared_blob<float>(td);
786
        weights->allocate();
787 788 789

        float* weight_buf = weights->buffer().as<float*>();
        std::fill(weight_buf, weight_buf + numChannels, scaleFactors[0]);
790 791

        // Mean subtraction
792
        auto biases = InferenceEngine::make_shared_blob<float>(td);
793
        biases->allocate();
794 795
        float* bias_buf = biases->buffer().as<float*>();

796 797
        for (int i = 0; i < numChannels; ++i)
        {
798
            bias_buf[i] = -means[0][i] * scaleFactors[0];
799 800
        }

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        InferenceEngine::Builder::Layer ieLayer = InferenceEngine::Builder::ScaleShiftLayer(name);
        addConstantData("weights", weights, ieLayer);
        addConstantData("biases", biases, ieLayer);
804 805
        return Ptr<BackendNode>(new InfEngineBackendNode(ieLayer));
    }
806
#endif  // HAVE_DNN_IE_NN_BUILDER_2019
807

808
    std::vector<String> outNames;
809
    std::vector<MatShape> shapes;
810 811 812
    // Preprocessing parameters for each network's input.
    std::vector<double> scaleFactors;
    std::vector<Scalar> means;
813
    std::vector<Mat> inputsData;
814
    bool skip;
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};

struct BlobManager
{
public:
    // Increase references counter to layer output.
    void addReference(const LayerPin& lp)
    {
        std::map<LayerPin, int>::iterator it = refCounter.find(lp);
        if (it == refCounter.end())
            refCounter[lp] = 1;
        else
            it->second += 1;
    }

    void addReferences(const std::vector<LayerPin>& pins)
    {
        for (int i = 0; i < pins.size(); i++)
        {
            addReference(pins[i]);
        }
    }

    // Returns number of references to allocated memory that used in specific
    // layer blob.
    int numReferences(const LayerPin& lp)
    {
        std::map<LayerPin, LayerPin>::iterator mapIt = reuseMap.find(lp);
        CV_Assert(mapIt != reuseMap.end());
        LayerPin memHost = mapIt->second;

        std::map<LayerPin, int>::iterator refIt = refCounter.find(memHost);
        CV_Assert(refIt != refCounter.end());
        return refIt->second;
    }

    // Reuse data allocated in <host> inside the <user> blob.
    void reuse(const LayerPin& host, const LayerPin& user)
    {
        CV_Assert(reuseMap.find(user) == reuseMap.end());
        CV_Assert(reuseMap.find(host) != reuseMap.end());
        LayerPin memHost = reuseMap[host];
        reuseMap[user] = memHost;
        if (refCounter.find(memHost) != refCounter.end())
        {
            std::map<LayerPin, int>::iterator userRefIt = refCounter.find(user);
            if (userRefIt != refCounter.end())
            {
                refCounter[memHost] += userRefIt->second;
                refCounter.erase(userRefIt);
            }
            else
                refCounter[memHost] += 1;
        }
    }

    // Decrease references counter to allocated memory inside specific blob.
    void releaseReference(const LayerPin& lp)
    {
        std::map<LayerPin, LayerPin>::iterator mapIt = reuseMap.find(lp);
        CV_Assert(mapIt != reuseMap.end());

        std::map<LayerPin, int>::iterator refIt = refCounter.find(mapIt->second);
        CV_Assert(refIt != refCounter.end());
        CV_Assert(refIt->second > 0);
        refIt->second -= 1;
    }

    void releaseReferences(const std::vector<LayerPin>& pins)
    {
        for (int i = 0; i < pins.size(); i++)
        {
            releaseReference(pins[i]);
        }
    }

891
    void reuseOrCreate(const MatShape& shape, const LayerPin& lp, Mat& dst, bool use_half)
892
    {
893
        if (!DNN_DISABLE_MEMORY_OPTIMIZATIONS)
894 895 896
        {
            Mat bestBlob;
            LayerPin bestBlobPin;
897

898 899
            std::map<LayerPin, Mat>::iterator hostIt;
            std::map<LayerPin, int>::iterator refIt;
900

901 902
            const int targetTotal = total(shape);
            int bestBlobTotal = INT_MAX;
903

904
            for (hostIt = memHosts.begin(); hostIt != memHosts.end(); ++hostIt)
905
            {
906 907 908 909
                refIt = refCounter.find(hostIt->first);
                // Use only blobs that had references before because if not,
                // it might be used as output.
                if (refIt != refCounter.end() && refIt->second == 0)
910
                {
911 912 913 914 915 916 917 918
                    Mat& unusedBlob = hostIt->second;
                    if (unusedBlob.total() >= targetTotal &&
                        unusedBlob.total() < bestBlobTotal)
                    {
                        bestBlobPin = hostIt->first;
                        bestBlob = unusedBlob;
                        bestBlobTotal = unusedBlob.total();
                    }
919 920
                }
            }
921 922 923 924 925 926
            if (!bestBlob.empty())
            {
                reuse(bestBlobPin, lp);
                dst = bestBlob.reshape(1, 1).colRange(0, targetTotal).reshape(1, shape);
                return;
            }
927
        }
928

929 930
        {
            // if dst already has been allocated with total(shape) elements,
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            // it won't be recreated and pointer of dst.data remains the same.
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            dst.create(shape, use_half ? CV_16S : CV_32F);
933 934 935 936 937
            addHost(lp, dst);
        }
    }

    void allocateBlobsForLayer(LayerData &ld, const LayerShapes& layerShapes,
938
                               std::vector<LayerPin>& pinsForInternalBlobs,
939
                               bool use_half = false)
940
    {
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941 942
        CV_TRACE_FUNCTION();

943 944 945 946 947 948 949 950 951 952 953 954 955 956 957 958 959 960 961 962 963 964 965 966 967 968 969 970 971 972 973 974 975 976 977 978 979 980 981 982 983 984 985 986 987 988 989 990 991 992 993 994 995 996 997 998 999 1000 1001 1002
        pinsForInternalBlobs.clear();

        std::vector<Mat>& outputBlobs = ld.outputBlobs,
                &internalBlobs = ld.internals;

        const ShapesVec& outShapes = layerShapes.out,
                internalShapes = layerShapes.internal;

        outputBlobs.resize(std::max((size_t)1, outShapes.size())); //layer produce at least one output blob
        internalBlobs.resize(internalShapes.size());

        CV_Assert(ld.requiredOutputs.size() <= outShapes.size());

        // Check that layer could work in-place.
        bool inPlace = false;
        if (layerShapes.supportInPlace)
        {
            if (ld.inputBlobs.size() == 1)
            {
                // Get number of references to the input memory.
                int numRef = numReferences(ld.inputBlobsId[0]);
                // If current layer is one and only customer of this blob.
                inPlace = numRef == 1;
            }
        }

        ShapesVec shapes(outShapes);
        shapes.insert(shapes.end(), internalShapes.begin(), internalShapes.end());
        std::vector<Mat*> blobs;
        for(int i = 0; i < outputBlobs.size(); i++)
        {
            blobs.push_back(&outputBlobs[i]);
        }

        for(int i = 0; i < internalBlobs.size(); i++)
        {
            blobs.push_back(&internalBlobs[i]);
            if (total(internalShapes[i]))
            {
                pinsForInternalBlobs.push_back(LayerPin(ld.id, ld.outputBlobs.size() + i));
            }
        }

        addReferences(pinsForInternalBlobs);

        std::map<int, std::vector<int> > idxSizes;
        for(int i = 0; i < shapes.size(); i++)
        {
            idxSizes[total(shapes[i])].push_back(i);
        }

        std::map<int, std::vector<int> >::reverse_iterator it;
        for(it = idxSizes.rbegin(); it != idxSizes.rend(); it++)
        {
            for(int j = 0; j < it->second.size(); j++)
            {
                int index = it->second[j];
                if (total(shapes[index]))
                {
                    LayerPin blobPin(ld.id, index);
1003
                    if (index < outShapes.size() && inPlace)
1004
                    {
1005 1006
                        CV_Assert(ld.inputBlobs[0]->total() == total(shapes[index]));
                        ld.outputBlobs[index] = ld.inputBlobs[0]->reshape(1, shapes[index]);
1007 1008 1009
                        reuse(ld.inputBlobsId[0], blobPin);
                    }
                    else
1010
                        reuseOrCreate(shapes[index], blobPin, *blobs[index], use_half);
1011 1012 1013 1014 1015 1016 1017 1018
                }
            }
        }
    }

    // Clear internal state. Calls before an every reallocation.
    void reset()
    {
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Alexander Alekhin 已提交
1019 1020
        CV_TRACE_FUNCTION();

1021 1022 1023 1024 1025 1026 1027 1028 1029 1030 1031 1032 1033 1034 1035 1036 1037 1038 1039 1040 1041
        refCounter.clear();
        reuseMap.clear();
        memHosts.clear();
    }

private:
    // Register allocated memory.
    void addHost(const LayerPin& lp, const Mat& mat)
    {
        CV_Assert(memHosts.find(lp) == memHosts.end());
        reuseMap[lp] = lp;
        memHosts[lp] = mat;
    }

    std::map<LayerPin, int> refCounter;
    // Maps pin to origin blob (for whom memory was allocated firstly).
    // For origin blobs key == value.
    std::map<LayerPin, LayerPin> reuseMap;
    std::map<LayerPin, Mat> memHosts;
};

1042
static Ptr<BackendWrapper> wrapMat(int backendId, int targetId, cv::Mat& m)
1043
{
1044
    if (backendId == DNN_BACKEND_OPENCV)
1045
    {
1046 1047
        if (targetId == DNN_TARGET_CPU)
            return Ptr<BackendWrapper>();
1048
#ifdef HAVE_OPENCL
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Li Peng 已提交
1049
        else if (IS_DNN_OPENCL_TARGET(targetId))
1050
            return OpenCLBackendWrapper::create(m);
1051
#endif
1052
        else
1053
            CV_Error(Error::StsNotImplemented, "Unknown/unsupported target identifier");
1054 1055 1056 1057 1058 1059 1060
    }
    else if (backendId == DNN_BACKEND_HALIDE)
    {
        CV_Assert(haveHalide());
#ifdef HAVE_HALIDE
        return Ptr<BackendWrapper>(new HalideBackendWrapper(targetId, m));
#endif  // HAVE_HALIDE
1061
    }
1062
    else if (backendId == DNN_BACKEND_INFERENCE_ENGINE_NN_BUILDER_2019)
1063
    {
1064
#ifdef HAVE_DNN_IE_NN_BUILDER_2019
1065
        return Ptr<BackendWrapper>(new InfEngineBackendWrapper(targetId, m));
1066
#else
1067
        CV_Error(Error::StsNotImplemented, "This OpenCV version is built without Inference Engine NN Builder API support");
1068 1069 1070 1071 1072 1073 1074 1075 1076
#endif
    }
    else if (backendId == DNN_BACKEND_INFERENCE_ENGINE_NGRAPH)
    {
#ifdef HAVE_DNN_NGRAPH
        return Ptr<BackendWrapper>(new NgraphBackendWrapper(targetId, m));
#else
        CV_Error(Error::StsNotImplemented, "This OpenCV version is built without support of Inference Engine + nGraph");
#endif
1077 1078 1079
    }
    else
        CV_Error(Error::StsNotImplemented, "Unknown backend identifier");
1080
    return Ptr<BackendWrapper>();  // TODO Error?
1081 1082
}

1083 1084
static int g_networkId = 0;

1085 1086 1087 1088 1089
struct Net::Impl
{
    typedef std::map<int, LayerShapes> LayersShapesMap;
    typedef std::map<int, LayerData> MapIdToLayerData;

1090 1091 1092
    const int networkId; // network global identifier
    int networkDumpCounter; // dump counter

1093
    Impl()
1094 1095
        : networkId(CV_XADD(&g_networkId, 1))
        , networkDumpCounter(0)
1096 1097 1098 1099 1100
    {
        //allocate fake net input layer
        netInputLayer = Ptr<DataLayer>(new DataLayer());
        LayerData &inpl = layers.insert( make_pair(0, LayerData()) ).first->second;
        inpl.id = 0;
1101
        netInputLayer->name = inpl.name = "_input";
1102 1103 1104 1105
        inpl.type = "__NetInputLayer__";
        inpl.layerInstance = netInputLayer;
        layerNameToId.insert(std::make_pair(inpl.name, inpl.id));

1106
        lastLayerId = 0;
1107
        netWasAllocated = false;
1108
        fusion = true;
1109
        isAsync = false;
1110 1111
        preferableBackend = DNN_BACKEND_DEFAULT;
        preferableTarget = DNN_TARGET_CPU;
1112
        skipInfEngineInit = false;
1113 1114 1115 1116 1117 1118 1119 1120 1121 1122
    }

    Ptr<DataLayer> netInputLayer;
    std::vector<LayerPin> blobsToKeep;
    MapIdToLayerData layers;
    std::map<String, int> layerNameToId;
    BlobManager blobManager;
    int preferableBackend;
    int preferableTarget;
    String halideConfigFile;
1123
    bool skipInfEngineInit;
1124 1125
    // Map host data to backend specific wrapper.
    std::map<void*, Ptr<BackendWrapper> > backendWrappers;
1126 1127 1128 1129

    int lastLayerId;

    bool netWasAllocated;
1130
    bool fusion;
1131
    bool isAsync;
1132
    std::vector<int64> layersTimings;
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Li Peng 已提交
1133
    Mat output_blob;
1134

1135
    Ptr<BackendWrapper> wrap(Mat& host)
1136
    {
1137
        if (preferableBackend == DNN_BACKEND_OPENCV && preferableTarget == DNN_TARGET_CPU)
1138 1139 1140 1141 1142 1143 1144 1145 1146 1147
            return Ptr<BackendWrapper>();

        MatShape shape(host.dims);
        for (int i = 0; i < host.dims; ++i)
            shape[i] = host.size[i];

        void* data = host.data;
        if (backendWrappers.find(data) != backendWrappers.end())
        {
            Ptr<BackendWrapper> baseBuffer = backendWrappers[data];
1148
            if (preferableBackend == DNN_BACKEND_OPENCV)
1149
            {
1150
#ifdef HAVE_OPENCL
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Li Peng 已提交
1151
                CV_Assert(IS_DNN_OPENCL_TARGET(preferableTarget));
1152
                return OpenCLBackendWrapper::create(baseBuffer, host);
1153 1154 1155
#else
                CV_Error(Error::StsInternal, "");
#endif
1156 1157
            }
            else if (preferableBackend == DNN_BACKEND_HALIDE)
1158 1159
            {
                CV_Assert(haveHalide());
1160
#ifdef HAVE_HALIDE
1161
                return Ptr<BackendWrapper>(new HalideBackendWrapper(baseBuffer, shape));
1162
#endif
1163
            }
1164 1165 1166 1167 1168
            else if (preferableBackend == DNN_BACKEND_INFERENCE_ENGINE_NN_BUILDER_2019)
            {
                return wrapMat(preferableBackend, preferableTarget, host);
            }
            else if (preferableBackend == DNN_BACKEND_INFERENCE_ENGINE_NGRAPH)
1169 1170 1171
            {
                return wrapMat(preferableBackend, preferableTarget, host);
            }
1172 1173 1174 1175 1176 1177 1178 1179 1180
            else
                CV_Error(Error::StsNotImplemented, "Unknown backend identifier");
        }

        Ptr<BackendWrapper> wrapper = wrapMat(preferableBackend, preferableTarget, host);
        backendWrappers[data] = wrapper;
        return wrapper;
    }

1181
#ifdef HAVE_HALIDE
1182 1183
    void compileHalide()
    {
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Alexander Alekhin 已提交
1184 1185
        CV_TRACE_FUNCTION();

1186 1187 1188
        CV_Assert(preferableBackend == DNN_BACKEND_HALIDE);

        HalideScheduler scheduler(halideConfigFile);
1189 1190
        std::vector< std::reference_wrapper<LayerData> > compileList; compileList.reserve(64);
        for (MapIdToLayerData::iterator it = layers.begin(); it != layers.end(); ++it)
1191 1192 1193
        {
            LayerData &ld = it->second;
            Ptr<Layer> layer = ld.layerInstance;
1194
            if (layer->supportBackend(DNN_BACKEND_HALIDE) && !ld.skip)
1195 1196 1197 1198 1199 1200 1201 1202 1203 1204
            {
                CV_Assert(!ld.backendNodes[DNN_BACKEND_HALIDE].empty());
                bool scheduled = scheduler.process(ld.backendNodes[DNN_BACKEND_HALIDE]);
                if (!scheduled)
                {
                    // Use automatic scheduling provided by layer.
                    layer->applyHalideScheduler(ld.backendNodes[DNN_BACKEND_HALIDE],
                                                ld.inputBlobs, ld.outputBlobs,
                                                preferableTarget);
                }
1205
                compileList.emplace_back(ld);
1206 1207
            }
        }
1208 1209 1210 1211 1212 1213 1214 1215 1216 1217 1218 1219 1220 1221 1222 1223 1224 1225 1226
        std::atomic<int> progress(0);
        auto fn = ([&] () -> void
        {
            for (;;)
            {
                int id = progress.fetch_add(1);
                if ((size_t)id >= compileList.size())
                    return;
                const LayerData& ld = compileList[id].get();
                Ptr<BackendNode> node = ld.backendNodes.find(DNN_BACKEND_HALIDE)->second;
                dnn::compileHalide(ld.outputBlobs, node, preferableTarget);
            }
        });
        size_t num_threads = std::min(compileList.size(), (size_t)std::thread::hardware_concurrency());
        num_threads = std::max((size_t)1u, std::min((size_t)8u, num_threads));
        std::vector<std::thread> threads(num_threads - 1);
        for (auto& t: threads) t = std::thread(fn);
        fn(); // process own tasks
        for (auto& t: threads) t.join();
1227
    }
1228
#endif
1229 1230 1231

    void clear()
    {
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1232 1233
        CV_TRACE_FUNCTION();

1234 1235 1236 1237
        MapIdToLayerData::iterator it;
        for (it = layers.begin(); it != layers.end(); it++)
        {
            if (it->second.id != 0) {
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Aleksandr Rybnikov 已提交
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                it->second.inputBlobs.clear();
1239 1240 1241
                it->second.outputBlobs.clear();
                it->second.internals.clear();
            }
1242
            it->second.skip = false;
1243 1244
            //it->second.consumers.clear();
            Ptr<Layer> currLayer = it->second.layerInstance;
1245

1246 1247 1248
            if( currLayer.empty() )
                continue;

1249
            currLayer->unsetAttached();
1250
        }
1251 1252

        layersTimings.clear();
1253 1254 1255 1256
    }

    void setUpNet(const std::vector<LayerPin>& blobsToKeep_ = std::vector<LayerPin>())
    {
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        CV_TRACE_FUNCTION();

1259 1260 1261 1262 1263
        if (DNN_NETWORK_DUMP > 0 && networkDumpCounter == 0)
        {
            dumpNetworkToFile();
        }

1264
        if (preferableBackend == DNN_BACKEND_DEFAULT)
1265
            preferableBackend = (Backend)PARAM_DNN_BACKEND_DEFAULT;
1266 1267 1268 1269
#ifdef HAVE_INF_ENGINE
        if (preferableBackend == DNN_BACKEND_INFERENCE_ENGINE)
            preferableBackend = getInferenceEngineBackendTypeParam();
#endif
1270

1271 1272 1273 1274 1275 1276 1277
        CV_Assert(preferableBackend != DNN_BACKEND_OPENCV ||
                  preferableTarget == DNN_TARGET_CPU ||
                  preferableTarget == DNN_TARGET_OPENCL ||
                  preferableTarget == DNN_TARGET_OPENCL_FP16);
        CV_Assert(preferableBackend != DNN_BACKEND_HALIDE ||
                  preferableTarget == DNN_TARGET_CPU ||
                  preferableTarget == DNN_TARGET_OPENCL);
1278 1279 1280 1281
        if (preferableBackend == DNN_BACKEND_INFERENCE_ENGINE_NN_BUILDER_2019 ||
            preferableBackend == DNN_BACKEND_INFERENCE_ENGINE_NGRAPH)
        {
            CV_Assert(
1282 1283 1284
                  preferableTarget == DNN_TARGET_CPU ||
                  preferableTarget == DNN_TARGET_OPENCL ||
                  preferableTarget == DNN_TARGET_OPENCL_FP16 ||
1285
                  preferableTarget == DNN_TARGET_MYRIAD ||
1286 1287 1288
                  preferableTarget == DNN_TARGET_FPGA
            );
        }
1289 1290
        if (!netWasAllocated || this->blobsToKeep != blobsToKeep_)
        {
1291
            if (preferableBackend == DNN_BACKEND_OPENCV && IS_DNN_OPENCL_TARGET(preferableTarget))
1292
#ifndef HAVE_OPENCL
1293
            {
1294
                CV_LOG_WARNING(NULL, "DNN: OpenCL target is not available in this OpenCV build, switching to CPU.");
1295 1296
                preferableTarget = DNN_TARGET_CPU;
            }
1297 1298
#else
            {
1299
                if (!DNN_OPENCL_ALLOW_ALL_DEVICES)
1300
                {
1301 1302 1303 1304 1305 1306 1307 1308 1309 1310 1311 1312 1313 1314
                    // Current implementation is only valid for GPU (#11494)
                    if (ocl::Device::getDefault().type() != ocl::Device::TYPE_GPU)
                    {
                        CV_LOG_WARNING(NULL, "DNN: OpenCL target is not supported with current OpenCL device (tested with GPUs only), switching to CPU.");
                        preferableTarget = DNN_TARGET_CPU;
                    }
                    else if (preferableTarget == DNN_TARGET_OPENCL_FP16 && !ocl::Device::getDefault().isIntel())
                    {
                        CV_LOG_WARNING(NULL,
                            "DNN: OpenCL target with fp16 precision is not supported "
                            "with current OpenCL device (tested with Intel GPUs only), "
                            "switching to OpenCL with fp32 precision.");
                        preferableTarget = DNN_TARGET_OPENCL;
                    }
1315 1316
                }
            }
1317
#endif
1318 1319
            clear();

1320 1321
            this->blobsToKeep = blobsToKeep_;

1322
            allocateLayers(blobsToKeep_);
1323 1324 1325 1326 1327

            MapIdToLayerData::iterator it = layers.find(0);
            CV_Assert(it != layers.end());
            it->second.skip = netInputLayer->skip;

1328
            initBackend(blobsToKeep_);
1329 1330 1331

            if (!netWasAllocated )
            {
1332
#ifdef HAVE_HALIDE
1333 1334
                if (preferableBackend == DNN_BACKEND_HALIDE)
                    compileHalide();
1335 1336 1337
#else
                CV_Assert(preferableBackend != DNN_BACKEND_HALIDE);
#endif
1338 1339 1340
            }

            netWasAllocated = true;
1341 1342 1343 1344 1345

            if (DNN_NETWORK_DUMP > 0)
            {
                dumpNetworkToFile();
            }
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        }
    }

    int getLayerId(const String &layerName)
    {
        std::map<String, int>::iterator it = layerNameToId.find(layerName);
        return (it != layerNameToId.end()) ? it->second : -1;
    }

    int getLayerId(int id)
    {
        MapIdToLayerData::iterator it = layers.find(id);
        return (it != layers.end()) ? id : -1;
    }

    int getLayerId(DictValue &layerDesc)
    {
        if (layerDesc.isInt())
            return getLayerId(layerDesc.get<int>());
        else if (layerDesc.isString())
            return getLayerId(layerDesc.get<String>());

        CV_Assert(layerDesc.isInt() || layerDesc.isString());
        return -1;
    }

    String getLayerName(int id)
    {
        MapIdToLayerData::iterator it = layers.find(id);
        return (it != layers.end()) ? it->second.name : "(unknown layer)";
    }

    LayerData& getLayerData(int id)
    {
        MapIdToLayerData::iterator it = layers.find(id);

        if (it == layers.end())
            CV_Error(Error::StsObjectNotFound, format("Layer with requested id=%d not found", id));

        return it->second;
    }

    LayerData& getLayerData(const String &layerName)
    {
        int id = getLayerId(layerName);

        if (id < 0)
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luz.paz 已提交
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            CV_Error(Error::StsError, "Requested layer \"" + layerName + "\" not found");
1394 1395 1396 1397 1398 1399

        return getLayerData(id);
    }

    LayerData& getLayerData(const DictValue &layerDesc)
    {
1400
        CV_Assert(layerDesc.isInt() || layerDesc.isString());
1401 1402
        if (layerDesc.isInt())
            return getLayerData(layerDesc.get<int>());
1403
        else /*if (layerDesc.isString())*/
1404 1405 1406 1407 1408 1409 1410 1411 1412 1413 1414 1415 1416
            return getLayerData(layerDesc.get<String>());
    }

    static void addLayerInput(LayerData &ld, int inNum, LayerPin from)
    {
        if ((int)ld.inputBlobsId.size() <= inNum)
        {
            ld.inputBlobsId.resize(inNum + 1);
        }
        else
        {
            LayerPin storedFrom = ld.inputBlobsId[inNum];
            if (storedFrom.valid() && !storedFrom.equal(from))
1417 1418
                CV_Error(Error::StsError, format("Input #%d of layer \"%s\" already was connected",
                                                 inNum, ld.name.c_str()));
1419 1420 1421 1422 1423 1424 1425 1426 1427 1428 1429 1430
        }

        ld.inputBlobsId[inNum] = from;
    }

    int resolvePinOutputName(LayerData &ld, const String &outName)
    {
        if (outName.empty())
            return 0;
        return ld.getLayerInstance()->outputNameToIndex(outName);
    }

1431
    LayerPin getPinByAlias(const String &layerName)
1432 1433 1434 1435 1436
    {
        LayerPin pin;
        pin.lid = (layerName.empty()) ? 0 : getLayerId(layerName);

        if (pin.lid >= 0)
1437
            pin.oid = resolvePinOutputName(getLayerData(pin.lid), layerName);
1438 1439 1440 1441

        return pin;
    }

1442
    std::vector<LayerPin> getLayerOutPins(const String &layerName)
1443 1444 1445 1446 1447 1448 1449 1450 1451 1452 1453 1454 1455 1456 1457 1458 1459 1460 1461 1462 1463 1464 1465 1466
    {
        int lid = (layerName.empty()) ? 0 : getLayerId(layerName);

        std::vector<LayerPin> pins;

        for (int i = 0; i < layers[lid].outputBlobs.size(); i++)
        {
            pins.push_back(LayerPin(lid, i));
        }

        return pins;
    }

    void connect(int outLayerId, int outNum, int inLayerId, int inNum)
    {
        CV_Assert(outLayerId < inLayerId);
        LayerData &ldOut = getLayerData(outLayerId);
        LayerData &ldInp = getLayerData(inLayerId);

        addLayerInput(ldInp, inNum, LayerPin(outLayerId, outNum));
        ldOut.requiredOutputs.insert(outNum);
        ldOut.consumers.push_back(LayerPin(inLayerId, outNum));
    }

1467
    void initBackend(const std::vector<LayerPin>& blobsToKeep_)
1468
    {
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Alexander Alekhin 已提交
1469
        CV_TRACE_FUNCTION();
1470
        if (preferableBackend == DNN_BACKEND_OPENCV)
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Li Peng 已提交
1471
            CV_Assert(preferableTarget == DNN_TARGET_CPU || IS_DNN_OPENCL_TARGET(preferableTarget));
1472 1473
        else if (preferableBackend == DNN_BACKEND_HALIDE)
            initHalideBackend();
1474 1475
        else if (preferableBackend == DNN_BACKEND_INFERENCE_ENGINE_NN_BUILDER_2019)
        {
1476
#ifdef HAVE_DNN_IE_NN_BUILDER_2019
1477
            initInfEngineBackend(blobsToKeep_);
1478
#else
1479
            CV_Assert(false && "This OpenCV version is built without Inference Engine NN Builder API support");
1480 1481 1482 1483 1484
#endif
        }
        else if (preferableBackend == DNN_BACKEND_INFERENCE_ENGINE_NGRAPH)
        {
#ifdef HAVE_DNN_NGRAPH
1485
            initNgraphBackend(blobsToKeep_);
1486 1487 1488 1489
#else
            CV_Error(Error::StsNotImplemented, "This OpenCV version is built without support of Inference Engine + nGraph");
#endif
        }
1490 1491 1492 1493 1494 1495 1496
        else
            CV_Error(Error::StsNotImplemented, "Unknown backend identifier");
    }

    void initHalideBackend()
    {
        CV_TRACE_FUNCTION();
1497
        CV_Assert_N(preferableBackend == DNN_BACKEND_HALIDE, haveHalide());
1498 1499 1500 1501 1502 1503 1504 1505 1506 1507 1508 1509 1510 1511 1512 1513 1514 1515 1516 1517 1518 1519 1520 1521 1522 1523 1524 1525 1526 1527 1528 1529 1530 1531 1532 1533

        // Iterator to current layer.
        MapIdToLayerData::iterator it = layers.begin();
        // Iterator to base layer for fusion. In example, in case of conv+bn+relu
        // it'll be a conv layer.
        MapIdToLayerData::iterator baseIt = layers.begin();
        for (; it != layers.end(); it++)
        {
            LayerData &ldTop = it->second;
            Ptr<Layer> layerTop = ldTop.layerInstance;
            if (!layerTop->supportBackend(preferableBackend))
            {
                // Move base iterator to layer that don't support preferable
                // backend to prevent fusion over layer of different backend.
                baseIt = it;
                continue;
            }
            // Try to do layers fusion.
            LayerData &ldBot = baseIt->second;
            Ptr<Layer> layerBot = ldBot.layerInstance;
            // 1. Check that bottom and top from the same backends.
            if (it != layers.begin() && layerBot->supportBackend(preferableBackend))
            {
                // 2. Check that current layer works in-place.
                bool inPlace = ldTop.inputBlobs.size() == 1 &&
                               ldBot.outputBlobs.size() == 1 &&
                               ldTop.inputBlobs[0]->data ==
                               ldBot.outputBlobs[0].data;
                if (inPlace)
                {
                    // 3. Try to attach node.
                    CV_Assert(!ldBot.backendNodes[preferableBackend].empty());
                    Ptr<BackendNode> fusedNode =
                        layerTop->tryAttach(ldBot.backendNodes[preferableBackend]);
                    if (!fusedNode.empty())
                    {
1534
                        ldTop.skip = true;
1535
                        ldBot.backendNodes[preferableBackend] = fusedNode;
1536
                        ldBot.outputBlobsWrappers = ldTop.outputBlobsWrappers;
1537 1538 1539 1540 1541
                        continue;
                    }
                }
            }
            // No layers fusion.
1542
            ldTop.skip = false;
1543 1544 1545 1546 1547 1548
            ldTop.backendNodes[DNN_BACKEND_HALIDE] =
                layerTop->initHalide(ldTop.inputBlobsWrappers);
            baseIt = it;
        }
    }

1549
#ifdef HAVE_DNN_IE_NN_BUILDER_2019
1550 1551 1552 1553 1554
    // Before launching Inference Engine graph we need to specify output blobs.
    // This function requests output blobs based on inputs references of
    // layers from default backend or layers from different graphs.
    void addInfEngineNetOutputs(LayerData &ld)
    {
1555
        CV_TRACE_FUNCTION();
1556 1557 1558 1559 1560 1561 1562
        Ptr<InfEngineBackendNet> layerNet;
        if (ld.backendNodes.find(preferableBackend) != ld.backendNodes.end())
        {
            Ptr<BackendNode> node = ld.backendNodes[preferableBackend];
            if (!node.empty())
            {
                Ptr<InfEngineBackendNode> ieNode = node.dynamicCast<InfEngineBackendNode>();
1563
                CV_Assert(!ieNode.empty()); CV_Assert(!ieNode->net.empty());
1564 1565 1566 1567 1568 1569 1570 1571 1572 1573 1574 1575 1576
                layerNet = ieNode->net;
            }
        }
        // For an every input reference we check that it belongs to one of
        // the Inference Engine backend graphs. Request an output blob if it is.
        // Do nothing if layer's input is from the same graph.
        for (int i = 0; i < ld.inputBlobsId.size(); ++i)
        {
            LayerData &inpLd = layers[ld.inputBlobsId[i].lid];
            Ptr<BackendNode> inpNode = inpLd.backendNodes[preferableBackend];
            if (!inpNode.empty())
            {
                Ptr<InfEngineBackendNode> ieInpNode = inpNode.dynamicCast<InfEngineBackendNode>();
1577
                CV_Assert(!ieInpNode.empty()); CV_Assert(!ieInpNode->net.empty());
1578 1579 1580
                if (layerNet != ieInpNode->net)
                {
                    // layerNet is empty or nodes are from different graphs.
1581
                    ieInpNode->net->addOutput(ieInpNode->layer.getName());
1582 1583 1584 1585 1586
                }
            }
        }
    }

1587
    void initInfEngineBackend(const std::vector<LayerPin>& blobsToKeep_)
1588 1589
    {
        CV_TRACE_FUNCTION();
1590
        CV_Assert_N(preferableBackend == DNN_BACKEND_INFERENCE_ENGINE_NN_BUILDER_2019, haveInfEngine());
1591 1592
        MapIdToLayerData::iterator it;
        Ptr<InfEngineBackendNet> net;
1593

1594 1595 1596 1597 1598 1599 1600 1601 1602 1603
        for (it = layers.begin(); it != layers.end(); ++it)
        {
            LayerData &ld = it->second;
            if (ld.id == 0)
            {
                CV_Assert((netInputLayer->outNames.empty() && ld.outputBlobsWrappers.size() == 1) ||
                          (netInputLayer->outNames.size() == ld.outputBlobsWrappers.size()));
                for (int i = 0; i < ld.outputBlobsWrappers.size(); ++i)
                {
                    InferenceEngine::DataPtr dataPtr = infEngineDataNode(ld.outputBlobsWrappers[i]);
1604
#if defined(INF_ENGINE_RELEASE) && INF_ENGINE_VER_MAJOR_LE(2019010000)
1605
                    dataPtr->name = netInputLayer->outNames.empty() ? ld.name : netInputLayer->outNames[i];
1606 1607 1608
#else
                    dataPtr->setName(netInputLayer->outNames.empty() ? ld.name : netInputLayer->outNames[i]);
#endif
1609 1610 1611 1612 1613 1614 1615
                }
            }
            else
            {
                for (int i = 0; i < ld.outputBlobsWrappers.size(); ++i)
                {
                    InferenceEngine::DataPtr dataPtr = infEngineDataNode(ld.outputBlobsWrappers[i]);
1616
#if defined(INF_ENGINE_RELEASE) && INF_ENGINE_VER_MAJOR_LE(2019010000)
1617
                    dataPtr->name = ld.name;
1618 1619 1620
#else
                    dataPtr->setName(ld.name);
#endif
1621 1622 1623 1624
                }
            }
        }

1625 1626 1627 1628 1629 1630 1631 1632 1633 1634 1635
        if (skipInfEngineInit)
        {
            Ptr<BackendNode> node = layers[lastLayerId].backendNodes[preferableBackend];
            CV_Assert(!node.empty());

            Ptr<InfEngineBackendNode> ieNode = node.dynamicCast<InfEngineBackendNode>();
            CV_Assert(!ieNode.empty());

            for (it = layers.begin(); it != layers.end(); ++it)
            {
                LayerData &ld = it->second;
1636
                if (ld.id == 0)
1637
                {
1638 1639 1640
                    for (int i = 0; i < ld.inputBlobsWrappers.size(); ++i)
                    {
                        InferenceEngine::DataPtr dataPtr = infEngineDataNode(ld.inputBlobsWrappers[i]);
1641
#if defined(INF_ENGINE_RELEASE) && INF_ENGINE_VER_MAJOR_LE(2019010000)
1642
                        dataPtr->name = netInputLayer->outNames[i];
1643 1644 1645
#else
                        dataPtr->setName(netInputLayer->outNames[i]);
#endif
1646 1647 1648 1649 1650 1651 1652
                    }
                }
                else
                {
                    for (int i = 0; i < ld.outputBlobsWrappers.size(); ++i)
                    {
                        InferenceEngine::DataPtr dataPtr = infEngineDataNode(ld.outputBlobsWrappers[i]);
1653
#if defined(INF_ENGINE_RELEASE) && INF_ENGINE_VER_MAJOR_LE(2019010000)
1654
                        dataPtr->name = ld.name;
1655 1656 1657
#else
                        dataPtr->setName(ld.name);
#endif
1658
                    }
1659 1660 1661 1662 1663 1664
                }
                ieNode->net->addBlobs(ld.inputBlobsWrappers);
                ieNode->net->addBlobs(ld.outputBlobsWrappers);
                ld.skip = true;
            }
            layers[lastLayerId].skip = false;
1665
            ieNode->net->init((Target)preferableTarget);
1666 1667 1668 1669 1670
            return;
        }

        // Build Inference Engine networks from sets of layers that support this
        // backend. Split a whole model on several Inference Engine networks if
1671
        // some of layers are not implemented.
1672

1673 1674 1675
        bool supportsCPUFallback = preferableTarget == DNN_TARGET_CPU ||
                                   BackendRegistry::checkIETarget(DNN_TARGET_CPU);

1676
        // Set of all input and output blobs wrappers for current network.
1677
        std::map<LayerPin, Ptr<BackendWrapper> > netBlobsWrappers;
1678 1679 1680
        for (it = layers.begin(); it != layers.end(); ++it)
        {
            LayerData &ld = it->second;
1681
            if (ld.id == 0 && ld.skip)
1682 1683
                continue;
            bool fused = ld.skip;
1684

1685
            Ptr<Layer> layer = ld.layerInstance;
1686
            if (!fused && !layer->supportBackend(preferableBackend))
1687
            {
1688
                bool customizable = ld.id != 0 &&
1689 1690
                                    INF_ENGINE_VER_MAJOR_GE(INF_ENGINE_RELEASE_2019R2) &&
                                    supportsCPUFallback;
1691 1692 1693 1694 1695 1696 1697 1698 1699 1700 1701 1702 1703 1704 1705 1706 1707 1708 1709 1710 1711 1712 1713 1714 1715 1716 1717 1718 1719 1720
                // TODO: there is a bug in Myriad plugin with custom layers shape infer.
                if (preferableTarget == DNN_TARGET_MYRIAD)
                {
                    for (int i = 0; customizable && i < ld.inputBlobs.size(); ++i)
                    {
                        customizable = ld.inputBlobs[i]->size[0] == 1;
                    }
                }

                // TODO: fix these workarounds
                if (preferableTarget == DNN_TARGET_MYRIAD ||
                    preferableTarget == DNN_TARGET_OPENCL ||
                    preferableTarget == DNN_TARGET_OPENCL_FP16)
                    customizable &= ld.type != "Concat";

                if (preferableTarget == DNN_TARGET_OPENCL ||
                    preferableTarget == DNN_TARGET_OPENCL_FP16)
                    customizable &= ld.type != "Power";

                if (preferableTarget == DNN_TARGET_OPENCL)
                    customizable &= ld.type != "Eltwise";

                if (!customizable)
                {
                    addInfEngineNetOutputs(ld);
                    net = Ptr<InfEngineBackendNet>();
                    netBlobsWrappers.clear();  // Is not used for R5 release but we don't wrap it to #ifdef.
                    layer->preferableTarget = DNN_TARGET_CPU;
                    continue;
                }
1721
            }
1722
            ld.skip = true;  // Initially skip all Inference Engine supported layers.
1723

1724
            // Create a new network if one of inputs from different Inference Engine graph.
1725 1726 1727 1728 1729 1730 1731
            for (int i = 0; i < ld.inputBlobsId.size(); ++i)
            {
                LayerData &inpLd = layers[ld.inputBlobsId[i].lid];
                Ptr<BackendNode> inpNode = inpLd.backendNodes[preferableBackend];
                if (!inpNode.empty())
                {
                    Ptr<InfEngineBackendNode> ieInpNode = inpNode.dynamicCast<InfEngineBackendNode>();
1732
                    CV_Assert(!ieInpNode.empty()); CV_Assert(!ieInpNode->net.empty());
1733 1734 1735
                    if (ieInpNode->net != net)
                    {
                        net = Ptr<InfEngineBackendNet>();
1736
                        netBlobsWrappers.clear();  // Is not used for R5 release but we don't wrap it to #ifdef.
1737 1738 1739 1740 1741
                        break;
                    }
                }
            }

1742 1743 1744
            Ptr<BackendNode> node;
            if (!net.empty())
            {
1745
                if (fused)
1746
                {
1747 1748 1749 1750 1751
                    bool inPlace = ld.inputBlobsId.size() == 1 && ld.outputBlobs.size() == 1 &&
                                   ld.inputBlobs[0]->data == ld.outputBlobs[0].data;
                    CV_Assert(inPlace);
                    node = layers[ld.inputBlobsId[0].lid].backendNodes[preferableBackend];
                    ld.inputBlobsWrappers = layers[ld.inputBlobsId[0].lid].inputBlobsWrappers;
1752
                }
1753 1754
            }
            else
1755 1756 1757
                net = Ptr<InfEngineBackendNet>(new InfEngineBackendNet());

            if (!fused)
1758
            {
1759 1760 1761 1762 1763 1764 1765
                if (layer->supportBackend(preferableBackend))
                    node = layer->initInfEngine(ld.inputBlobsWrappers);
                else
                {
                    node = Ptr<BackendNode>(new InfEngineBackendNode(
                        ld.layerInstance, ld.inputBlobs, ld.outputBlobs, ld.internals));
                }
1766
            }
1767 1768
            else if (node.empty())
                continue;
1769 1770 1771 1772 1773 1774 1775 1776

            CV_Assert(!node.empty());
            ld.backendNodes[preferableBackend] = node;

            Ptr<InfEngineBackendNode> ieNode = node.dynamicCast<InfEngineBackendNode>();
            CV_Assert(!ieNode.empty());
            ieNode->net = net;

1777 1778 1779 1780 1781 1782 1783 1784 1785
            for (const auto& pin : blobsToKeep_)
            {
                if (pin.lid == ld.id)
                {
                    ieNode->net->addOutput(ieNode->layer.getName());
                    break;
                }
            }

1786 1787 1788 1789 1790
            // Convert weights in FP16 for specific targets.
            if ((preferableTarget == DNN_TARGET_OPENCL_FP16 ||
                 preferableTarget == DNN_TARGET_MYRIAD ||
                 preferableTarget == DNN_TARGET_FPGA) && !fused)
            {
1791
#if INF_ENGINE_VER_MAJOR_GE(INF_ENGINE_RELEASE_2019R1)
1792 1793 1794 1795 1796
                for (const std::string& name : {"weights", "biases"})
                {
                    auto it = ieNode->layer.getParameters().find(name);
                    if (it != ieNode->layer.getParameters().end())
                    {
1797 1798
                        InferenceEngine::Blob::Ptr bp = it->second.as<InferenceEngine::Blob::Ptr>();
                        it->second = convertFp16(std::const_pointer_cast<InferenceEngine::Blob>(bp));
1799 1800 1801
                    }
                }
#else
1802 1803 1804 1805 1806 1807 1808 1809 1810 1811 1812 1813 1814 1815 1816 1817
                auto& blobs = ieNode->layer.getConstantData();
                if (blobs.empty())
                {
                    // In case of non weightable layer we have to specify
                    // it's precision adding dummy blob.
                    auto blob = InferenceEngine::make_shared_blob<int16_t>(
                                    InferenceEngine::Precision::FP16,
                                    InferenceEngine::Layout::C, {1});
                    blob->allocate();
                    blobs[""] = blob;
                }
                else
                {
                    for (auto& it : blobs)
                        it.second = convertFp16(std::const_pointer_cast<InferenceEngine::Blob>(it.second));
                }
1818
#endif
1819 1820 1821 1822 1823 1824 1825 1826 1827
            }

            if (!fused)
                net->addLayer(ieNode->layer);

            net->connect(ld.inputBlobsWrappers, ld.outputBlobsWrappers, ieNode->layer.getName());
            net->addBlobs(ld.inputBlobsWrappers);
            net->addBlobs(ld.outputBlobsWrappers);
            addInfEngineNetOutputs(ld);
1828
        }
1829 1830 1831 1832 1833 1834 1835 1836 1837 1838 1839 1840 1841 1842 1843 1844 1845 1846 1847 1848

        // Initialize all networks.
        for (MapIdToLayerData::reverse_iterator it = layers.rbegin(); it != layers.rend(); ++it)
        {
            LayerData &ld = it->second;
            if (ld.backendNodes.find(preferableBackend) == ld.backendNodes.end())
                continue;

            Ptr<BackendNode> node = ld.backendNodes[preferableBackend];
            if (node.empty())
                continue;

            Ptr<InfEngineBackendNode> ieNode = node.dynamicCast<InfEngineBackendNode>();
            if (ieNode.empty())
                continue;

            CV_Assert(!ieNode->net.empty());

            if (!ieNode->net->isInitialized())
            {
1849
                ieNode->net->init((Target)preferableTarget);
1850 1851 1852
                ld.skip = false;
            }
        }
1853
    }
1854
#endif  // HAVE_DNN_IE_NN_BUILDER_2019
1855 1856 1857 1858 1859 1860 1861 1862 1863 1864 1865 1866 1867 1868 1869 1870 1871 1872 1873 1874 1875 1876 1877 1878 1879 1880 1881 1882 1883 1884 1885 1886 1887 1888 1889 1890 1891


#ifdef HAVE_DNN_NGRAPH
    void addNgraphOutputs(LayerData &ld)
    {
        CV_TRACE_FUNCTION();

        Ptr<InfEngineNgraphNet> layerNet;
        auto it = ld.backendNodes.find(preferableBackend);
        if (it != ld.backendNodes.end())
        {
            Ptr<BackendNode> node = it->second;
            if (!node.empty())
            {
                Ptr<InfEngineNgraphNode> ieNode = node.dynamicCast<InfEngineNgraphNode>();
                CV_Assert(!ieNode.empty()); CV_Assert(!ieNode->net.empty());
                layerNet = ieNode->net;
            }
        }

        for (int i = 0; i < ld.inputBlobsId.size(); ++i)
        {
            LayerData &inpLd = layers[ld.inputBlobsId[i].lid];
            Ptr<BackendNode> inpNode = inpLd.backendNodes[preferableBackend];
            if (!inpNode.empty())
            {
                Ptr<InfEngineNgraphNode> ieInpNode = inpNode.dynamicCast<InfEngineNgraphNode>();
                CV_Assert(!ieInpNode.empty()); CV_Assert(!ieInpNode->net.empty());
                if (layerNet != ieInpNode->net)
                {
                    ieInpNode->net->addOutput(ieInpNode->node->get_friendly_name());
                    ieInpNode->net->setUnconnectedNodes(ieInpNode);
                }
            }
        }
    }

1892
    void initNgraphBackend(const std::vector<LayerPin>& blobsToKeep_)
1893 1894 1895 1896 1897 1898 1899 1900 1901 1902 1903 1904 1905 1906 1907 1908 1909
    {
        CV_TRACE_FUNCTION();
        CV_Assert_N(preferableBackend == DNN_BACKEND_INFERENCE_ENGINE_NGRAPH, haveInfEngine());

        MapIdToLayerData::iterator it;
        Ptr<InfEngineNgraphNet> net;

        for (it = layers.begin(); it != layers.end(); ++it)
        {
            LayerData &ld = it->second;
            if (ld.id == 0)
            {
                CV_Assert((netInputLayer->outNames.empty() && ld.outputBlobsWrappers.size() == 1) ||
                          (netInputLayer->outNames.size() == ld.outputBlobsWrappers.size()));
                for (int i = 0; i < ld.outputBlobsWrappers.size(); ++i)
                {
                    InferenceEngine::DataPtr dataPtr = ngraphDataNode(ld.outputBlobsWrappers[i]);
1910 1911 1912
                    std::string outputName = netInputLayer->outNames.empty() ? ld.name : netInputLayer->outNames[i];
                    outputName = ld.outputBlobsWrappers.size() > 1 ? (outputName + "." + std::to_string(i)) : outputName;
                    dataPtr->setName(outputName);
1913 1914 1915 1916 1917 1918 1919
                }
            }
            else
            {
                for (int i = 0; i < ld.outputBlobsWrappers.size(); ++i)
                {
                    InferenceEngine::DataPtr dataPtr = ngraphDataNode(ld.outputBlobsWrappers[i]);
1920 1921
                    std::string outputName = ld.outputBlobsWrappers.size() > 1 ? (ld.name + "." + std::to_string(i)) : ld.name;
                    dataPtr->setName(outputName);
1922 1923 1924 1925 1926 1927 1928 1929 1930 1931 1932 1933 1934 1935 1936 1937 1938 1939 1940 1941 1942 1943 1944 1945 1946 1947 1948 1949 1950 1951 1952 1953 1954 1955 1956 1957 1958 1959 1960 1961
                }
            }
        }

        if (skipInfEngineInit)
        {
            Ptr<BackendNode> node = layers[lastLayerId].backendNodes[preferableBackend];
            CV_Assert(!node.empty());

            Ptr<InfEngineNgraphNode> ieNode = node.dynamicCast<InfEngineNgraphNode>();
            CV_Assert(!ieNode.empty());

            for (it = layers.begin(); it != layers.end(); ++it)
            {
                LayerData &ld = it->second;
                if (ld.id == 0)
                {
                    for (int i = 0; i < ld.inputBlobsWrappers.size(); ++i)
                    {
                        InferenceEngine::DataPtr dataPtr = ngraphDataNode(ld.inputBlobsWrappers[i]);
                        dataPtr->setName(netInputLayer->outNames[i]);
                    }
                }
                else
                {
                    for (int i = 0; i < ld.outputBlobsWrappers.size(); ++i)
                    {
                        InferenceEngine::DataPtr dataPtr = ngraphDataNode(ld.outputBlobsWrappers[i]);
                        dataPtr->setName(ld.name);
                    }
                }
                ieNode->net->addBlobs(ld.inputBlobsWrappers);
                ieNode->net->addBlobs(ld.outputBlobsWrappers);
                ld.skip = true;
            }
            layers[lastLayerId].skip = false;
            ieNode->net->init((Target)preferableTarget);
            return;
        }

1962 1963 1964
        bool supportsCPUFallback = preferableTarget == DNN_TARGET_CPU ||
                                   BackendRegistry::checkIETarget(DNN_TARGET_CPU);

1965 1966 1967 1968 1969 1970 1971 1972 1973 1974 1975 1976 1977 1978
        // Build Inference Engine networks from sets of layers that support this
        // backend. Split a whole model on several Inference Engine networks if
        // some of layers are not implemented.
        for (it = layers.begin(); it != layers.end(); ++it)
        {
            LayerData &ld = it->second;

            if (ld.id == 0 && ld.skip)
                continue;

            bool fused = ld.skip;
            Ptr<Layer> layer = ld.layerInstance;
            if (!fused && !layer->supportBackend(preferableBackend))
            {
1979
                bool customizable = ld.id != 0 && supportsCPUFallback;
1980

1981 1982
                // TODO: there is a bug in Myriad plugin with custom layers shape infer.
                if (preferableTarget == DNN_TARGET_MYRIAD)
1983
                {
1984 1985 1986
                    for (int i = 0; customizable && i < ld.inputBlobs.size(); ++i)
                    {
                        customizable = ld.inputBlobs[i]->size[0] == 1;
1987 1988
                    }
                }
1989 1990 1991 1992 1993 1994 1995 1996 1997 1998 1999 2000 2001 2002 2003 2004 2005 2006 2007 2008 2009 2010 2011 2012 2013 2014 2015 2016 2017 2018 2019

                // TODO: fix these workarounds
                if (preferableTarget == DNN_TARGET_MYRIAD ||
                    preferableTarget == DNN_TARGET_OPENCL ||
                    preferableTarget == DNN_TARGET_OPENCL_FP16)
                    customizable &= ld.type != "Concat";

                if (preferableTarget == DNN_TARGET_OPENCL ||
                    preferableTarget == DNN_TARGET_OPENCL_FP16)
                    customizable &= ld.type != "Power";

                if (preferableTarget == DNN_TARGET_OPENCL)
                    customizable &= ld.type != "Eltwise";

                if (!customizable)
                {
                    addNgraphOutputs(ld);
                    net = Ptr<InfEngineNgraphNet>();
                    layer->preferableTarget = DNN_TARGET_CPU;

                    for (int i = 0; i < ld.inputBlobsId.size(); ++i)
                    {
                        LayerData &inpLd = layers[ld.inputBlobsId[i].lid];
                        Ptr<BackendNode> inpNode = inpLd.backendNodes[preferableBackend];
                        if (!inpNode.empty()) {
                            Ptr<InfEngineNgraphNode> ieNode = inpNode.dynamicCast<InfEngineNgraphNode>();
                            ieNode->net->setUnconnectedNodes(ieNode);
                        }
                    }
                    continue;
                }
2020 2021 2022 2023 2024 2025 2026 2027 2028 2029 2030 2031 2032 2033 2034 2035 2036 2037 2038 2039 2040 2041 2042 2043 2044 2045 2046 2047 2048 2049 2050 2051 2052 2053 2054 2055 2056 2057 2058 2059 2060 2061 2062 2063 2064 2065 2066 2067 2068 2069 2070 2071 2072 2073 2074 2075 2076 2077 2078 2079 2080 2081 2082 2083 2084 2085 2086 2087 2088 2089 2090 2091 2092
            }
            ld.skip = true;  // Initially skip all Inference Engine supported layers.

            // Create a new network if one of inputs from different Inference Engine graph.
            std::vector<Ptr<BackendNode>> inputNodes;
            for (int i = 0; i < ld.inputBlobsId.size(); ++i)
            {
                // Layer_Test_ROIPooling.Accuracy has 2 inputs inpLD = 0, 0 -> has 4 inputNodes (input, rois, input, rois)
                if (inputNodes.size() == ld.inputBlobsId.size()) {
                    break;
                }
                LayerData &inpLd = layers[ld.inputBlobsId[i].lid];
                Ptr<BackendNode> inpNode = inpLd.backendNodes[preferableBackend];
                if (!inpNode.empty())
                {
                     Ptr<InfEngineNgraphNode> ieInpNode = inpNode.dynamicCast<InfEngineNgraphNode>();
                     CV_Assert(!ieInpNode.empty()); CV_Assert(!ieInpNode->net.empty());
                     if (ieInpNode->net == net && !fused) {
                        inputNodes.push_back(inpNode);
                        continue;
                     }
                }

                if (net.empty()) {
                    net = Ptr<InfEngineNgraphNet>(new InfEngineNgraphNet());
                }

                if (!fused) {
                    std::vector<std::string> inputNames;
                    std::vector<cv::Mat> inputs;

                    auto curr_pos = inpLd.consumers.begin();
                    auto compare = [&ld] (const LayerPin& lp) { return lp.lid == ld.id; };
                    auto cons = curr_pos;
                    while ((cons = std::find_if(curr_pos, inpLd.consumers.end(), compare)) !=
                            inpLd.consumers.end()) {
                        int cons_inp = cons->oid;
                        Ptr<NgraphBackendWrapper> inpWrapper = inpLd.outputBlobsWrappers[cons_inp].
                                                                     dynamicCast<NgraphBackendWrapper>();
                        auto iter = std::find(inputNames.begin(), inputNames.end(),
                                              inpWrapper->dataPtr->getName());
                        if (iter == inputNames.end()) {
                            inputNames.push_back(inpWrapper->dataPtr->getName());
                            inputs.push_back(inpLd.outputBlobs[cons_inp]);
                        }
                        curr_pos = cons + 1;
                    }

                    auto inps = net->setInputs(inputs, inputNames);
                    for (auto& inp : inps) {
                        inputNodes.emplace_back(Ptr<BackendNode>(new InfEngineNgraphNode(inp)));
                    }
                }
            }

            Ptr<BackendNode> node;
            if (!net.empty())
            {
                if (fused)
                {
                    bool inPlace = ld.inputBlobsId.size() == 1 && ld.outputBlobs.size() == 1 &&
                                   ld.inputBlobs[0]->data == ld.outputBlobs[0].data;
                    CV_Assert(inPlace);
                    node = layers[ld.inputBlobsId[0].lid].backendNodes[preferableBackend];
                    ld.inputBlobsWrappers = layers[ld.inputBlobsId[0].lid].inputBlobsWrappers;
                }
            }
            else {
                net = Ptr<InfEngineNgraphNet>(new InfEngineNgraphNet());
            }

            if (!fused)
            {
2093 2094
                CV_Assert(ld.inputBlobsId.size() == inputNodes.size());
                for (int i = 0; i < ld.inputBlobsId.size(); ++i)
2095
                {
2096 2097 2098 2099 2100 2101 2102 2103 2104 2105 2106 2107 2108 2109 2110 2111 2112 2113 2114 2115 2116 2117 2118
                    int lid = ld.inputBlobsId[i].lid;
                    int oid = ld.inputBlobsId[i].oid;
                    if (oid == 0 || lid == 0)
                        continue;

                    auto ieInpNode = inputNodes[i].dynamicCast<InfEngineNgraphNode>();
                    CV_Assert(oid < ieInpNode->node->get_output_size());
                    inputNodes[i] = Ptr<BackendNode>(new InfEngineNgraphNode(ieInpNode->node->get_output_as_single_output_node(oid, false)));
                }

                if (layer->supportBackend(preferableBackend))
                {
                    node = layer->initNgraph(ld.inputBlobsWrappers, inputNodes);
                    for (int i = 0; i < ld.outputBlobsWrappers.size(); ++i)
                    {
                        InferenceEngine::DataPtr dataPtr = ngraphDataNode(ld.outputBlobsWrappers[i]);
                        node.dynamicCast<InfEngineNgraphNode>()->setName(dataPtr->getName());
                    }
                }
                else
                {
                    node = Ptr<BackendNode>(new InfEngineNgraphNode(inputNodes,
                        ld.layerInstance, ld.inputBlobs, ld.outputBlobs, ld.internals));
2119 2120 2121 2122 2123 2124 2125 2126 2127 2128 2129 2130 2131 2132 2133
                }
            }
            else if (node.empty())
                continue;

            ld.backendNodes[preferableBackend] = node;

            Ptr<InfEngineNgraphNode> ieNode = node.dynamicCast<InfEngineNgraphNode>();
            CV_Assert(!ieNode.empty());
            ieNode->net = net;

            if (ld.consumers.empty()) {
                // TF EAST_text_detection
                ieNode->net->setUnconnectedNodes(ieNode);
            }
2134 2135 2136 2137 2138 2139 2140 2141
            for (const auto& pin : blobsToKeep_)
            {
                if (pin.lid == ld.id)
                {
                    ieNode->net->addOutput(ieNode->node->get_friendly_name());
                    break;
                }
            }
2142 2143 2144 2145 2146 2147 2148 2149 2150 2151 2152 2153 2154 2155 2156 2157 2158 2159 2160 2161 2162 2163 2164 2165 2166 2167 2168 2169 2170 2171 2172 2173
            ieNode->net->setNodePtr(&ieNode->node);

            net->addBlobs(ld.inputBlobsWrappers);
            net->addBlobs(ld.outputBlobsWrappers);
            addNgraphOutputs(ld);
        }

        // Initialize all networks.
        for (MapIdToLayerData::reverse_iterator it = layers.rbegin(); it != layers.rend(); ++it)
        {
            LayerData &ld = it->second;
            auto iter = ld.backendNodes.find(preferableBackend);
            if (iter == ld.backendNodes.end())
                continue;

            Ptr<BackendNode>& node = iter->second;
            if (node.empty())
                continue;

            Ptr<InfEngineNgraphNode> ieNode = node.dynamicCast<InfEngineNgraphNode>();
            if (ieNode.empty())
                continue;

            CV_Assert(!ieNode->net.empty());

            if (!ieNode->net->isInitialized())
            {
                ieNode->net->setUnconnectedNodes(ieNode);
                ieNode->net->createNet((Target)preferableTarget);
                ld.skip = false;
            }
        }
2174
    }
2175
#endif  // HAVE_DNN_NGRAPH
2176 2177 2178

    void allocateLayer(int lid, const LayersShapesMap& layersShapes)
    {
A
Alexander Alekhin 已提交
2179 2180
        CV_TRACE_FUNCTION();

2181 2182 2183 2184 2185 2186 2187 2188 2189 2190 2191 2192 2193 2194 2195 2196 2197 2198 2199 2200 2201 2202 2203 2204 2205 2206 2207 2208 2209 2210 2211 2212 2213 2214
        LayerData &ld = layers[lid];

        //already allocated
        if (ld.flag)
            return;

        size_t ninputs = ld.inputBlobsId.size();
#if 0
        printf("layer %s:", ld.name.c_str());
        for (size_t i = 0; i < ninputs; i++)
        {
            int inp_lid = ld.inputBlobsId[i].lid;
            LayerData &inp_ld = layers[inp_lid];
            int inp_outputs = (int)inp_ld.outputBlobs.size();
            std::cout << " " << inp_ld.name << "(" << inp_outputs;

            for( int j = 0; j < inp_outputs; j++ )
            {
                std::cout << (j == 0 ? ": " : ", ") << inp_ld.outputBlobs[j].size;
            }
            std::cout << ")";
        }
        printf("\n");
#endif

        //determine parent layers
        for (size_t i = 0; i < ninputs; i++)
            ld.inputLayersId.insert(ld.inputBlobsId[i].lid);

        //allocate parents
        for (set<int>::iterator i = ld.inputLayersId.begin(); i != ld.inputLayersId.end(); i++)
            allocateLayer(*i, layersShapes);

        //bind inputs
2215 2216 2217 2218 2219 2220 2221 2222 2223 2224
        if (ld.id == 0)  // DataLayer
        {
            ninputs = netInputLayer->inputsData.size();
            ld.inputBlobsWrappers.resize(ninputs);
            for (size_t i = 0; i < ninputs; i++)
            {
                ld.inputBlobsWrappers[i] = wrap(netInputLayer->inputsData[i]);
            }
        }
        else
2225
        {
2226 2227 2228 2229 2230 2231 2232 2233 2234 2235
            ld.inputBlobs.resize(ninputs);
            ld.inputBlobsWrappers.resize(ninputs);
            for (size_t i = 0; i < ninputs; i++)
            {
                LayerPin from = ld.inputBlobsId[i];
                CV_Assert(from.valid());
                CV_DbgAssert(layers.count(from.lid) && (int)layers[from.lid].outputBlobs.size() > from.oid);
                ld.inputBlobs[i] = &layers[from.lid].outputBlobs[from.oid];
                ld.inputBlobsWrappers[i] = layers[from.lid].outputBlobsWrappers[from.oid];
            }
2236 2237 2238 2239 2240 2241 2242
        }

        LayersShapesMap::const_iterator layerShapesIt = layersShapes.find(lid);

        CV_Assert(layerShapesIt != layersShapes.end());

        std::vector<LayerPin> pinsForInternalBlobs;
2243
        blobManager.allocateBlobsForLayer(ld, layerShapesIt->second, pinsForInternalBlobs,
2244
                                          preferableBackend == DNN_BACKEND_OPENCV &&
L
Li Peng 已提交
2245
                                          preferableTarget == DNN_TARGET_OPENCL_FP16);
2246 2247 2248 2249 2250
        ld.outputBlobsWrappers.resize(ld.outputBlobs.size());
        for (int i = 0; i < ld.outputBlobs.size(); ++i)
        {
            ld.outputBlobsWrappers[i] = wrap(ld.outputBlobs[i]);
        }
2251 2252 2253 2254 2255
        ld.internalBlobsWrappers.resize(ld.internals.size());
        for (int i = 0; i < ld.internals.size(); ++i)
        {
            ld.internalBlobsWrappers[i] = wrap(ld.internals[i]);
        }
2256 2257 2258

        Ptr<Layer> layerPtr = ld.getLayerInstance();
        {
2259 2260 2261 2262 2263 2264
            std::vector<Mat> inps(ld.inputBlobs.size());
            for (int i = 0; i < ld.inputBlobs.size(); ++i)
            {
                inps[i] = *ld.inputBlobs[i];
            }
            layerPtr->finalize(inps, ld.outputBlobs);
2265
            layerPtr->preferableTarget = preferableTarget;
2266 2267 2268 2269 2270 2271 2272 2273 2274 2275 2276 2277 2278 2279 2280 2281 2282 2283
#if 0
            std::cout << "\toutputs:";
            size_t noutputs = ld.outputBlobs.size();
            for (size_t j = 0; j < noutputs; j++)
            {
                std::cout << (j == 0 ? " " : ", ") << ld.outputBlobs[j].size;
            }
            std::cout << "\n";
#endif
        }

        // After allocation of layer, we decrease counters to it's input blobs.
        blobManager.releaseReferences(ld.inputBlobsId);
        blobManager.releaseReferences(pinsForInternalBlobs);

        ld.flag = 1;
    }

2284 2285 2286 2287 2288 2289
#if 0
#define printf_(args) printf args
#else
#define printf_(args)
#endif

2290 2291
    void fuseLayers(const std::vector<LayerPin>& blobsToKeep_)
    {
A
Alexander Alekhin 已提交
2292 2293
        CV_TRACE_FUNCTION();

2294 2295 2296 2297 2298
        if(!fusion || (preferableBackend != DNN_BACKEND_OPENCV &&
                        preferableBackend != DNN_BACKEND_INFERENCE_ENGINE_NN_BUILDER_2019 &&
                        preferableBackend != DNN_BACKEND_INFERENCE_ENGINE_NGRAPH))
           return;

2299 2300 2301 2302 2303 2304 2305 2306 2307
        // scan through all the layers. If there is convolution layer followed by the activation layer,
        // we try to embed this activation into the convolution and disable separate execution of the activation
        std::set<LayerPin> pinsToKeep(blobsToKeep_.begin(),
                                      blobsToKeep_.end());
        MapIdToLayerData::iterator it;
        for (it = layers.begin(); it != layers.end(); it++)
        {
            int lid = it->first;
            LayerData& ld = layers[lid];
2308
            if( ld.skip )
2309
            {
2310
                printf_(("skipped %s: %s\n", ld.layerInstance->name.c_str(), ld.layerInstance->type.c_str()));
2311 2312
                continue;
            }
2313
            printf_(("analyzing %s: %s\n", ld.layerInstance->name.c_str(), ld.layerInstance->type.c_str()));
2314

2315 2316 2317 2318
            // the optimization #1. try to fuse batch norm, scaling and/or activation layers
            // with the current layer if they follow it. Normally, the are fused with the convolution layer,
            // but some of them (like activation) may be fused with fully-connected, elemwise (+) and
            // some other layers.
2319 2320
            Ptr<Layer>& currLayer = ld.layerInstance;
            if( ld.consumers.size() == 1 && pinsToKeep.count(LayerPin(lid, 0)) == 0 )
2321 2322 2323
            {
                LayerData* nextData = &layers[ld.consumers[0].lid];
                LayerPin lpNext(ld.consumers[0].lid, 0);
2324
                while (nextData)
2325
                {
2326 2327
                    Ptr<Layer> nextLayer = nextData->layerInstance;
                    if (currLayer->tryFuse(nextLayer))
2328
                    {
2329 2330
                        printf_(("\tfused with %s\n", nextLayer->name.c_str()));
                        nextData->skip = true;
2331 2332
                        ld.outputBlobs = layers[lpNext.lid].outputBlobs;
                        ld.outputBlobsWrappers = layers[lpNext.lid].outputBlobsWrappers;
2333
                        if (nextData->consumers.size() == 1)
A
Aleksandr Rybnikov 已提交
2334
                        {
2335 2336 2337
                            int nextLayerId = nextData->consumers[0].lid;
                            nextData = &layers[nextLayerId];
                            lpNext = LayerPin(nextLayerId, 0);
A
Aleksandr Rybnikov 已提交
2338
                        }
2339
                        else
A
Aleksandr Rybnikov 已提交
2340
                        {
2341 2342
                            nextData = 0;
                            break;
A
Aleksandr Rybnikov 已提交
2343
                        }
2344
                    }
2345 2346
                    else
                        break;
2347 2348
                }

2349
                if (preferableBackend != DNN_BACKEND_OPENCV)
2350 2351
                    continue;  // Go to the next layer.

2352 2353 2354 2355 2356 2357 2358
                // TODO: OpenCL target support more fusion styles.
                if ( preferableBackend == DNN_BACKEND_OPENCV && IS_DNN_OPENCL_TARGET(preferableTarget) &&
                     (!cv::ocl::useOpenCL() || (ld.layerInstance->type != "Convolution" &&
                     ld.layerInstance->type != "MVN" && ld.layerInstance->type != "Pooling" &&
                     ld.layerInstance->type != "Concat")) )
                    continue;

2359
                while (nextData)
2360
                {
2361 2362 2363 2364 2365 2366 2367 2368
                    // For now, OpenCL target support fusion with activation of ReLU/ChannelsPReLU/Power/Tanh
                    if (IS_DNN_OPENCL_TARGET(preferableTarget) &&
                        nextData->type != "ReLU" &&
                        nextData->type != "ChannelsPReLU" &&
                        nextData->type != "ReLU6" &&
                        nextData->type != "TanH" &&
                        nextData->type != "Power")
                        break;
W
Wu Zhiwen 已提交
2369

2370 2371 2372
                    Ptr<ActivationLayer> nextActivLayer = nextData->layerInstance.dynamicCast<ActivationLayer>();
                    if (nextActivLayer.empty())
                        break;
W
Wu Zhiwen 已提交
2373

2374
                    if (currLayer->setActivation(nextActivLayer))
W
Wu Zhiwen 已提交
2375 2376
                    {
                        printf_(("\tfused with %s\n", nextActivLayer->name.c_str()));
2377
                        nextData->skip = true;
2378 2379
                        ld.outputBlobs = layers[lpNext.lid].outputBlobs;
                        ld.outputBlobsWrappers = layers[lpNext.lid].outputBlobsWrappers;
2380
                        if (nextData->consumers.size() == 1)
2381
                        {
2382 2383 2384 2385 2386
                            int nextLayerId = nextData->consumers[0].lid;
                            nextData = &layers[nextLayerId];
                            lpNext = LayerPin(nextLayerId, 0);
                        }
                        else
2387
                        {
2388 2389
                            nextData = 0;
                            break;
2390 2391
                        }
                    }
2392 2393
                    else
                        break;
2394 2395
                }

K
Kuang Fangjun 已提交
2396
                // fuse convolution layer followed by eltwise + relu
2397
                if ( IS_DNN_OPENCL_TARGET(preferableTarget) && ld.layerInstance->type == "Convolution" )
2398 2399 2400 2401 2402
                {
                    Ptr<EltwiseLayer> nextEltwiseLayer;
                    if( nextData )
                        nextEltwiseLayer = nextData->layerInstance.dynamicCast<EltwiseLayer>();

2403
                    if( !nextEltwiseLayer.empty() && pinsToKeep.count(lpNext) == 0 &&
A
Alexander Alekhin 已提交
2404
                        nextData && nextData->inputBlobsId.size() == 2 )
2405 2406 2407
                    {
                        LayerData *eltwiseData = nextData;

2408 2409 2410 2411
                        // Eltwise layer has two inputs. We need to determine which
                        // is a base convolution layer and which could be used as it's bias.
                        LayerData* biasLayerData = 0;
                        for (int i = 0; i < 2; ++i)
2412
                        {
2413 2414
                            LayerData *downLayerData = &layers[eltwiseData->inputBlobsId[i].lid];
                            CV_Assert(downLayerData);
2415
                            while (downLayerData->skip)
2416
                            {
2417
                                if (downLayerData->inputBlobsId.size() == 1)
2418
                                    downLayerData = &layers[downLayerData->inputBlobsId[0].lid];
2419 2420 2421 2422 2423
                                else
                                {
                                    downLayerData = 0;
                                    break;
                                }
2424
                            }
2425 2426 2427 2428 2429 2430 2431 2432 2433
                            if (downLayerData && ld.id == downLayerData->id)
                            {
                                biasLayerData = &layers[eltwiseData->inputBlobsId[1 - i].lid];
                                break;
                            }
                        }
                        CV_Assert(biasLayerData);
                        {
                            if( eltwiseData->consumers.size() == 1 )
2434 2435
                            {
                                // fuse eltwise + activation layer
2436
                                if (biasLayerData->id < ld.id)
2437 2438 2439 2440 2441 2442 2443 2444 2445 2446 2447 2448 2449
                                {
                                    nextData = &layers[eltwiseData->consumers[0].lid];
                                    lpNext = LayerPin(eltwiseData->consumers[0].lid, 0);
                                    Ptr<ActivationLayer> nextActivLayer;
                                    if( nextData )
                                        nextActivLayer = nextData->layerInstance.dynamicCast<ActivationLayer>();

                                    if( !nextActivLayer.empty() && pinsToKeep.count(lpNext) == 0 &&
                                            (!nextData->type.compare("ReLU") ||
                                             !nextData->type.compare("ChannelsPReLU") ||
                                             !nextData->type.compare("Power")) &&
                                            currLayer->setActivation(nextActivLayer) )
                                    {
2450 2451
                                        CV_Assert_N(biasLayerData->outputBlobsWrappers.size() == 1, ld.inputBlobsWrappers.size() == 1);
                                        ld.inputBlobsWrappers.push_back(biasLayerData->outputBlobsWrappers[0]);
2452 2453
                                        printf_(("\tfused with %s\n", nextEltwiseLayer->name.c_str()));
                                        printf_(("\tfused with %s\n", nextActivLayer->name.c_str()));
2454 2455
                                        eltwiseData->skip = true;
                                        nextData->skip = true;
2456 2457 2458 2459 2460 2461 2462 2463 2464 2465 2466 2467 2468 2469 2470
                                        // This optimization for cases like
                                        // some_layer   conv
                                        //   |             |
                                        //   +-- eltwise --+
                                        //          |
                                        //        activ
                                        // This way all the element-wise computations
                                        // (i.e. some_layer+conv or some_layer*conv)
                                        // would be done at [conv] layer. So we need to
                                        // replace [conv]'s output blob to [eltwise]'s one
                                        // considering that [activ] is an in-place layer.
                                        // Also we need to move all the consumers' references.
                                        // To prevent memory collisions (i.e. when input of
                                        // [conv] and output of [eltwise] is the same blob)
                                        // we allocate a new blob.
2471
                                        CV_Assert_N(ld.outputBlobs.size() == 1, ld.outputBlobsWrappers.size() == 1);
2472 2473 2474 2475 2476 2477 2478 2479 2480 2481 2482 2483 2484 2485 2486 2487 2488 2489 2490 2491 2492 2493
                                        ld.outputBlobs[0] = ld.outputBlobs[0].clone();
                                        ld.outputBlobsWrappers[0] = wrap(ld.outputBlobs[0]);

                                        eltwiseData->outputBlobs = ld.outputBlobs;
                                        nextData->outputBlobs = ld.outputBlobs;
                                        eltwiseData->outputBlobsWrappers = ld.outputBlobsWrappers;
                                        nextData->outputBlobsWrappers = ld.outputBlobsWrappers;

                                        // Move references of [activ] layer consumers to the newly allocated blob.
                                        for (int i = 0; i < nextData->consumers.size(); ++i)
                                        {
                                            LayerData& consumer = layers[nextData->consumers[i].lid];
                                            for (int j = 0; j < consumer.inputBlobsId.size(); ++j)
                                            {
                                                if (consumer.inputBlobsId[j].lid == lpNext.lid)
                                                {
                                                    consumer.inputBlobs[j] = &ld.outputBlobs[0];
                                                    consumer.inputBlobsWrappers[j] = ld.outputBlobsWrappers[0];
                                                    break;
                                                }
                                            }
                                        }
2494 2495 2496 2497
                                    }
                                }
                            }
                        }
W
Wu Zhiwen 已提交
2498
                    }
2499 2500
                }
            }
2501

2502 2503 2504
            if (preferableBackend != DNN_BACKEND_OPENCV)
                continue;  // Go to the next layer.

2505
            // the optimization #2. if there is concat layer that concatenates channels
2506
            // from the inputs together (i.e. axis == 1) then we make the inputs of
K
Kuang Fangjun 已提交
2507
            // the concat layer to write to the concatenation output buffer
2508 2509 2510
            // (and so we eliminate the concatenation layer, because the channels
            // are concatenated implicitly).
            Ptr<ConcatLayer> concatLayer = ld.layerInstance.dynamicCast<ConcatLayer>();
2511
            if( !concatLayer.empty() && concatLayer->axis == 1 && !concatLayer->padding &&
2512 2513 2514
                ld.outputBlobs.size() == 1 )
            {
                Mat& output = ld.outputBlobs[0];
2515
                UMat umat_output;
2516
#ifdef HAVE_OPENCL
2517 2518 2519 2520 2521 2522 2523 2524 2525 2526 2527 2528 2529 2530 2531 2532 2533 2534 2535 2536 2537 2538 2539 2540
                if (!ld.outputBlobsWrappers.empty() &&
                    (preferableBackend == DNN_BACKEND_OPENCV && IS_DNN_OPENCL_TARGET(preferableTarget)))
                {
                    size_t i, ninputs = ld.inputBlobsId.size();
                    bool conv_layer = true;
                    for( i = 0; i < ninputs; i++ )
                    {
                        LayerPin pin = ld.inputBlobsId[i];
                        LayerData* inp_i_data = &layers[pin.lid];
                        while(inp_i_data->skip &&
                              inp_i_data->inputBlobsId.size() == 1 &&
                              inp_i_data->consumers.size() == 1)
                        {
                            pin = inp_i_data->inputBlobsId[0];
                            inp_i_data = &layers[pin.lid];
                        }
                        conv_layer = conv_layer && (inp_i_data->getLayerInstance()->type == "Convolution");
                    }
                    if (!conv_layer)
                        continue;
                    std::vector<UMat> umat_outputBlobs;
                    umat_outputBlobs = OpenCLBackendWrapper::getUMatVector(ld.outputBlobsWrappers);
                    umat_output = umat_outputBlobs[0];
                }
2541
#endif
2542 2543 2544 2545 2546 2547 2548 2549 2550 2551 2552 2553 2554 2555 2556

                // TODO: in general, this optimization can always be done, but
                // many layers currently check that the input/output blobs are
                // continuous arrays. Unfortunately, this is not true when
                // the concatenation optimization is applied with batch_size > 1.
                // so, for now, we only apply this optimization in the most popular
                // case batch_size == 1.
                if( output.dims == 4 && output.size[0] == 1 )
                {
                    size_t i, ninputs = ld.inputBlobsId.size();
                    std::vector<LayerPin> realinputs(ninputs);
                    for( i = 0; i < ninputs; i++ )
                    {
                        LayerPin pin = ld.inputBlobsId[i];
                        LayerData* inp_i_data = &layers[pin.lid];
2557
                        while(inp_i_data->skip &&
D
Dmitry Kurtaev 已提交
2558 2559
                              inp_i_data->inputBlobsId.size() == 1 &&
                              inp_i_data->consumers.size() == 1)
2560 2561 2562 2563 2564 2565 2566 2567
                        {
                            pin = inp_i_data->inputBlobsId[0];
                            inp_i_data = &layers[pin.lid];
                        }
                        printf_(("\treal input for %s is %s\n",
                               layers[ld.inputBlobsId[i].lid].getLayerInstance()->name.c_str(),
                               inp_i_data->getLayerInstance()->name.c_str()));

2568
                        if(inp_i_data->skip || inp_i_data->consumers.size() != 1)
2569 2570 2571 2572 2573 2574
                            break;
                        realinputs[i] = pin;
                    }

                    if( i >= ninputs )
                    {
2575 2576 2577
                        // Allocate new memory to prevent collisions during memory
                        // reusing (see https://github.com/opencv/opencv/pull/10456).
                        output = output.clone();
2578
#ifdef HAVE_OPENCL
2579 2580 2581 2582 2583 2584 2585 2586
                        if (preferableBackend == DNN_BACKEND_OPENCV &&
                            IS_DNN_OPENCL_TARGET(preferableTarget))
                        {
                            std::vector<UMat> umats(1);
                            umat_output = umat_output.clone();
                            umats[0] = umat_output;
                            OpenCLBackendWrapper::update(ld.outputBlobsWrappers, umats);
                        }
2587
#endif
2588 2589 2590 2591 2592 2593 2594 2595 2596 2597 2598 2599 2600 2601
                        Range chrange[] = { Range::all(), Range::all(), Range::all(), Range::all() };
                        int ofs = 0;
                        for( i = 0; i < ninputs; i++ )
                        {
                            LayerPin pin = realinputs[i];
                            LayerData* inp_i_data = &layers[pin.lid];
                            int channels_i = ld.inputBlobs[i]->size[1];
                            chrange[1] = Range(ofs, ofs + channels_i);
                            printf_(("\toutput %s(%d) to channels (%d, %d)\n", inp_i_data->layerInstance->name.c_str(),
                                   pin.oid, ofs, ofs + channels_i));
                            ofs += channels_i;
                            Mat output_slice = output(chrange);
                            Mat& curr_output = inp_i_data->outputBlobs[pin.oid];
                            CV_Assert(output_slice.isContinuous() && output_slice.size == curr_output.size);
D
Dmitry Kurtaev 已提交
2602
                            Mat* oldPtr = &curr_output;
2603
                            curr_output = output_slice;
2604
#ifdef HAVE_OPENCL
2605 2606 2607 2608 2609 2610
                            if (preferableBackend == DNN_BACKEND_OPENCV && IS_DNN_OPENCL_TARGET(preferableTarget))
                            {
                                std::vector<UMat> umats(inp_i_data->outputBlobsWrappers.size());
                                umats[pin.oid] = umat_output(chrange);
                                OpenCLBackendWrapper::update(inp_i_data->outputBlobsWrappers, umats);
                            }
2611
#endif
D
Dmitry Kurtaev 已提交
2612 2613
                            // Layers that refer old input Mat will refer to the
                            // new data but the same Mat object.
2614
                            CV_Assert_N(curr_output.data == output_slice.data, oldPtr == &curr_output);
2615
                        }
2616
                        ld.skip = true;
2617 2618
                        printf_(("\toptimized out Concat layer %s\n", concatLayer->name.c_str()));
                    }
2619
                }
2620 2621 2622 2623 2624 2625
            }
        }
    }

    void allocateLayers(const std::vector<LayerPin>& blobsToKeep_)
    {
A
Alexander Alekhin 已提交
2626 2627
        CV_TRACE_FUNCTION();

2628 2629 2630 2631 2632 2633 2634 2635
        MapIdToLayerData::iterator it;
        for (it = layers.begin(); it != layers.end(); it++)
            it->second.flag = 0;

        CV_Assert(!layers[0].outputBlobs.empty());
        ShapesVec inputShapes;
        for(int i = 0; i < layers[0].outputBlobs.size(); i++)
        {
2636 2637 2638
            Mat& inp = layers[0].outputBlobs[i];
            CV_Assert(inp.total());
            if (preferableBackend == DNN_BACKEND_OPENCV &&
L
Li Peng 已提交
2639 2640
                preferableTarget == DNN_TARGET_OPENCL_FP16)
            {
2641
                layers[0].outputBlobs[i].create(inp.dims, inp.size, CV_16S);
L
Li Peng 已提交
2642
            }
2643
            inputShapes.push_back(shape(inp));
2644 2645 2646 2647 2648
        }
        LayersShapesMap layersShapes;
        getLayersShapes(inputShapes, layersShapes);

        blobManager.reset();
2649
        backendWrappers.clear();
2650 2651 2652
        // Fake references to input blobs.
        for (int i = 0; i < layers[0].outputBlobs.size(); ++i)
            blobManager.addReference(LayerPin(0, i));
2653 2654 2655 2656 2657 2658 2659 2660 2661 2662 2663 2664 2665 2666 2667 2668 2669
        for (it = layers.begin(); it != layers.end(); ++it)
        {
            const LayerData& ld = it->second;
            blobManager.addReferences(ld.inputBlobsId);
        }

        for (int i = 0; i < blobsToKeep_.size(); i++)
        {
            blobManager.addReference(blobsToKeep_[i]);
        }

        for (it = layers.begin(); it != layers.end(); it++)
        {
            int lid = it->first;
            allocateLayer(lid, layersShapes);
        }

2670
        layersTimings.resize(lastLayerId + 1, 0);
2671 2672 2673 2674 2675
        fuseLayers(blobsToKeep_);
    }

    void forwardLayer(LayerData &ld)
    {
A
Alexander Alekhin 已提交
2676 2677
        CV_TRACE_FUNCTION();

2678 2679
        Ptr<Layer> layer = ld.layerInstance;

2680 2681 2682
        TickMeter tm;
        tm.start();

2683
        if( !ld.skip )
2684
        {
2685 2686
            std::map<int, Ptr<BackendNode> >::iterator it = ld.backendNodes.find(preferableBackend);
            if (preferableBackend == DNN_BACKEND_OPENCV || it == ld.backendNodes.end() || it->second.empty())
2687
            {
2688 2689 2690
                if (isAsync)
                    CV_Error(Error::StsNotImplemented, "Default implementation fallbacks in asynchronous mode");

2691 2692 2693 2694
                if (!layer->supportBackend(DNN_BACKEND_OPENCV))
                    CV_Error(Error::StsNotImplemented, format("Layer \"%s\" of type \"%s\" unsupported on OpenCV backend",
                                                       ld.name.c_str(), ld.type.c_str()));

2695
#ifdef HAVE_OPENCL
2696
                if (preferableBackend == DNN_BACKEND_OPENCV && IS_DNN_OPENCL_TARGET(preferableTarget))
2697
                {
2698
                    std::vector<UMat> umat_inputBlobs = OpenCLBackendWrapper::getUMatVector(ld.inputBlobsWrappers);
2699
                    std::vector<UMat> umat_outputBlobs = OpenCLBackendWrapper::getUMatVector(ld.outputBlobsWrappers);
2700 2701
                    std::vector<UMat> umat_internalBlobs = OpenCLBackendWrapper::getUMatVector(ld.internalBlobsWrappers);
                    layer->forward(umat_inputBlobs,
2702
                                   umat_outputBlobs,
2703 2704 2705 2706 2707 2708 2709 2710 2711 2712 2713 2714 2715 2716 2717 2718 2719 2720 2721 2722 2723 2724 2725 2726 2727 2728 2729 2730 2731 2732 2733 2734 2735 2736 2737 2738 2739 2740 2741 2742 2743 2744 2745 2746 2747 2748 2749 2750 2751 2752 2753 2754 2755 2756 2757 2758 2759 2760 2761 2762 2763 2764 2765 2766
                                   umat_internalBlobs);
                    if (DNN_CHECK_NAN_INF)
                    {
                        bool fail = false;
                        for (size_t i = 0; i < umat_outputBlobs.size(); ++i)
                        {
                            UMat& u = umat_outputBlobs[i];
                            Mat m;
                            if (u.depth() == CV_16S) // FP16
                                convertFp16(u, m);
                            else
                                m = u.getMat(ACCESS_READ);
                            if (!checkRange(m))
                            {
                                std::cerr << "WARNING: NaN detected in layer output: id=" << ld.id << " name=" << layer->name << std::endl;
                                std::cerr << "output id=" << i << " output shape=" << shape(m) << std::endl;
                                fail = true;
                            }
                            else if (!checkRange(m, true, NULL, -1e6, 1e6))
                            {
                                std::cerr << "WARNING: Inf detected in layer output: id=" << ld.id << " name=" << layer->name << std::endl;
                                std::cerr << "output id=" << i << " output shape=" << shape(m) << std::endl;
                                fail = true;
                            }
                        }
                        if (fail)
                        {
                            for (size_t i = 0; i < umat_inputBlobs.size(); ++i)
                            {
                                UMat& u = umat_inputBlobs[i];
                                Mat m;
                                if (u.depth() == CV_16S) // FP16
                                    convertFp16(u, m);
                                else
                                    m = u.getMat(ACCESS_READ);
                                std::cout << "INPUT " << i << " " << cv::typeToString(u.type()) << " " << shape(m) << std::endl;
                                if (DNN_CHECK_NAN_INF_DUMP) std::cout << m.reshape(1, 1) << std::endl;
                            }
                            for (size_t i = 0; i < umat_outputBlobs.size(); ++i)
                            {
                                UMat& u = umat_outputBlobs[i];
                                Mat m;
                                if (u.depth() == CV_16S) // FP16
                                    convertFp16(u, m);
                                else
                                    m = u.getMat(ACCESS_READ);
                                std::cout << "OUTPUT " << i << " " << cv::typeToString(u.type()) << " " << shape(m) << std::endl;
                                if (DNN_CHECK_NAN_INF_DUMP) std::cout << m.reshape(1, 1) << std::endl;
                            }
                            for (size_t i = 0; i < umat_internalBlobs.size(); ++i)
                            {
                                UMat& u = umat_internalBlobs[i];
                                Mat m;
                                if (u.depth() == CV_16S) // FP16
                                    convertFp16(u, m);
                                else
                                    m = u.getMat(ACCESS_READ);
                                std::cout << "INTERNAL " << i << " " << shape(m) << std::endl;
                                if (DNN_CHECK_NAN_INF_DUMP) std::cout << cv::typeToString(u.type()) << " " << m.reshape(1, 1) << std::endl;
                            }
                            if (DNN_CHECK_NAN_INF_RAISE_ERROR)
                                CV_Assert(!fail);
                        }
                    }
2767
                    OpenCLBackendWrapper::update(ld.outputBlobsWrappers, umat_outputBlobs);
2768
                }
L
Li Peng 已提交
2769
                else
2770
#endif
2771
                {
2772 2773 2774 2775 2776 2777
                    for (int i = 0, n = ld.inputBlobsWrappers.size(); i < n; ++i)
                    {
                        if (!ld.inputBlobsWrappers[i].empty())
                            ld.inputBlobsWrappers[i]->copyToHost();
                    }

2778 2779 2780 2781 2782 2783
                    std::vector<Mat> inps(ld.inputBlobs.size());
                    for (int i = 0; i < ld.inputBlobs.size(); ++i)
                    {
                        inps[i] = *ld.inputBlobs[i];
                    }
                    layer->forward(inps, ld.outputBlobs, ld.internals);
2784

2785 2786 2787 2788 2789 2790 2791 2792 2793 2794 2795 2796 2797 2798 2799 2800 2801 2802 2803 2804 2805 2806 2807 2808 2809 2810 2811 2812 2813 2814 2815 2816 2817 2818 2819 2820 2821 2822 2823 2824 2825 2826 2827 2828 2829 2830 2831 2832 2833 2834
                    if (DNN_CHECK_NAN_INF)
                    {
                        bool fail = false;
                        for (size_t i = 0; i < ld.outputBlobs.size(); ++i)
                        {
                            const Mat& m = ld.outputBlobs[i];
                            if (!checkRange(m))
                            {
                                std::cerr << "WARNING: NaN detected in layer output: id=" << ld.id << " name=" << layer->name << std::endl;
                                std::cerr << "output id=" << i << " output shape=" << shape(m) << std::endl;
                                fail = true;
                            }
                            else if (!checkRange(m, true, NULL, -1e6, 1e6))
                            {
                                std::cerr << "WARNING: Inf detected in layer output: id=" << ld.id << " name=" << layer->name << std::endl;
                                std::cerr << "output id=" << i << " output shape=" << shape(m) << std::endl;
                                fail = true;
                            }
                        }
                        if (fail)
                        {
                            for (size_t i = 0; i < ld.inputBlobs.size(); ++i)
                            {
                                const Mat* pM = ld.inputBlobs[i];
                                if (!pM)
                                {
                                    std::cout << "INPUT " << i << " is NULL" << std::endl;
                                    continue;
                                }
                                const Mat& m = *pM;
                                std::cout << "INPUT " << i << " " << cv::typeToString(m.type()) << " " << shape(m) << std::endl;
                                if (DNN_CHECK_NAN_INF_DUMP) std::cout << m.reshape(1, 1) << std::endl;
                            }
                            for (size_t i = 0; i < ld.outputBlobs.size(); ++i)
                            {
                                const Mat& m = ld.outputBlobs[i];
                                std::cout << "OUTPUT " << i << " " << cv::typeToString(m.type()) << " " << shape(m) << std::endl;
                                if (DNN_CHECK_NAN_INF_DUMP) std::cout << m.reshape(1, 1) << std::endl;
                            }
                            for (size_t i = 0; i < ld.internals.size(); ++i)
                            {
                                const Mat& m = ld.internals[i];
                                std::cout << "INTERNAL " << i << " " << cv::typeToString(m.type()) << " " << shape(m) << std::endl;
                                if (DNN_CHECK_NAN_INF_DUMP) std::cout << m.reshape(1, 1) << std::endl;
                            }
                            if (DNN_CHECK_NAN_INF_RAISE_ERROR)
                                CV_Assert(!fail);
                        }
                    }

2835 2836 2837 2838 2839
                    for (int i = 0, n = ld.outputBlobsWrappers.size(); i < n; ++i)
                    {
                        if (!ld.outputBlobsWrappers[i].empty())
                            ld.outputBlobsWrappers[i]->setHostDirty();
                    }
2840 2841
                }
            }
2842
            else
2843
            {
2844 2845 2846 2847 2848 2849
                Ptr<BackendNode> node = it->second;
                CV_Assert(!node.empty());
                if (preferableBackend == DNN_BACKEND_HALIDE)
                {
                    forwardHalide(ld.outputBlobsWrappers, node);
                }
2850
                else if (preferableBackend == DNN_BACKEND_INFERENCE_ENGINE_NN_BUILDER_2019)
2851
                {
2852
                    forwardInfEngine(ld.outputBlobsWrappers, node, isAsync);
2853
                }
2854 2855 2856 2857
                else if (preferableBackend == DNN_BACKEND_INFERENCE_ENGINE_NGRAPH)
                {
                    forwardNgraph(ld.outputBlobsWrappers, node, isAsync);
                }
2858 2859 2860 2861
                else
                {
                    CV_Error(Error::StsNotImplemented, "Unknown backend identifier");
                }
2862 2863
            }
        }
2864 2865
        else
            tm.reset();
2866

2867 2868 2869
        tm.stop();
        layersTimings[ld.id] = tm.getTimeTicks();

2870 2871 2872 2873 2874
        ld.flag = 1;
    }

    void forwardToLayer(LayerData &ld, bool clearFlags = true)
    {
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2875 2876
        CV_TRACE_FUNCTION();

2877 2878 2879 2880 2881 2882 2883 2884 2885 2886 2887 2888 2889
        if (clearFlags)
        {
            MapIdToLayerData::iterator it;
            for (it = layers.begin(); it != layers.end(); it++)
                it->second.flag = 0;
        }

        //already was forwarded
        if (ld.flag)
            return;

        //forward parents
        MapIdToLayerData::iterator it;
2890
        for (it = layers.begin(); it != layers.end() && (it->second.id < ld.id); ++it)
2891 2892 2893 2894 2895 2896 2897 2898 2899 2900 2901 2902 2903 2904 2905
        {
            LayerData &ld = it->second;
            if (ld.flag)
                continue;
            forwardLayer(ld);
        }

        //forward itself
        forwardLayer(ld);
    }

    void getLayerShapesRecursively(int id, LayersShapesMap& inOutShapes)
    {
        std::vector<LayerPin>& inputLayerIds = layers[id].inputBlobsId;

2906
        if (id == 0 && inOutShapes[id].in[0].empty())
2907
        {
2908
            if (!layers[0].outputBlobs.empty())
2909
            {
2910 2911 2912 2913 2914 2915 2916 2917
                ShapesVec shapes;
                for (int i = 0; i < layers[0].outputBlobs.size(); i++)
                {
                    Mat& inp = layers[0].outputBlobs[i];
                    CV_Assert(inp.total());
                    shapes.push_back(shape(inp));
                }
                inOutShapes[0].in = shapes;
2918
            }
2919 2920
            else
            {
2921 2922 2923 2924 2925 2926 2927 2928 2929 2930 2931 2932 2933 2934 2935 2936 2937 2938 2939
                const std::vector<MatShape>& inputShapes = netInputLayer->shapes;
                bool none = true;
                for (size_t i = 0; i < inputShapes.size(); i++)
                {
                    if (!inputShapes[i].empty())
                    {
                        none = false;
                        break;
                    }
                }
                if (none)
                {
                    inOutShapes[0].out.clear();
                    return;
                }
                else
                {
                    inOutShapes[0].in = inputShapes;
                }
2940 2941
            }
        }
2942

2943 2944 2945 2946 2947 2948 2949 2950 2951 2952 2953 2954 2955 2956 2957 2958 2959 2960 2961 2962
        if (inOutShapes[id].in.empty())
        {
            for(int i = 0; i < inputLayerIds.size(); i++)
            {
                int layerId = inputLayerIds[i].lid;
                LayersShapesMap::iterator it =
                        inOutShapes.find(layerId);
                if(it == inOutShapes.end() ||
                        it->second.out.empty())
                {
                    getLayerShapesRecursively(layerId, inOutShapes);
                }
                const MatShape& shape = inOutShapes[layerId].out[inputLayerIds[i].oid];
                inOutShapes[id].in.push_back(shape);
            }
        }
        const ShapesVec& is = inOutShapes[id].in;
        ShapesVec& os = inOutShapes[id].out;
        ShapesVec& ints = inOutShapes[id].internal;
        int requiredOutputs = layers[id].requiredOutputs.size();
2963 2964 2965 2966 2967 2968 2969 2970 2971 2972
        Ptr<Layer> l = layers[id].getLayerInstance();
        CV_Assert(l);
        bool layerSupportInPlace = false;
        try
        {
            layerSupportInPlace = l->getMemoryShapes(is, requiredOutputs, os, ints);
        }
        catch (const cv::Exception& e)
        {
            CV_LOG_ERROR(NULL, "OPENCV/DNN: [" << l->type << "]:(" << l->name << "): getMemoryShapes() throws exception." <<
2973 2974 2975
                    " inputs=" << is.size() <<
                    " outputs=" << os.size() << "/" << requiredOutputs <<
                    " blobs=" << l->blobs.size());
2976 2977 2978 2979 2980 2981 2982 2983
            for (size_t i = 0; i < is.size(); ++i)
            {
                CV_LOG_ERROR(NULL, "    input[" << i << "] = " << toString(is[i]));
            }
            for (size_t i = 0; i < os.size(); ++i)
            {
                CV_LOG_ERROR(NULL, "    output[" << i << "] = " << toString(os[i]));
            }
2984 2985 2986 2987
            for (size_t i = 0; i < l->blobs.size(); ++i)
            {
                CV_LOG_ERROR(NULL, "    blobs[" << i << "] = " << typeToString(l->blobs[i].type()) << " " << toString(shape(l->blobs[i])));
            }
2988 2989 2990 2991
            CV_LOG_ERROR(NULL, "Exception message: " << e.what());
            throw;
        }
        inOutShapes[id].supportInPlace = layerSupportInPlace;
2992 2993 2994 2995 2996 2997

        for (int i = 0; i < ints.size(); i++)
            CV_Assert(total(ints[i]) > 0);

        for (int i = 0; i < os.size(); i++)
            CV_Assert(total(os[i]) > 0);
2998 2999 3000 3001 3002 3003 3004 3005 3006 3007 3008 3009 3010 3011 3012 3013 3014 3015 3016 3017 3018 3019 3020 3021 3022 3023 3024 3025 3026 3027 3028 3029
    }

    void getLayersShapes(const ShapesVec& netInputShapes,
                         LayersShapesMap& inOutShapes)
    {
        inOutShapes.clear();

        inOutShapes[0].in = netInputShapes; //insert shape for first input layer
        for (MapIdToLayerData::iterator it = layers.begin();
             it != layers.end(); it++)
        {
            getLayerShapesRecursively(it->first, inOutShapes);
        }
    }

    void getLayerShapes(const ShapesVec& netInputShapes,
                        const int layerId,
                        LayerShapes& shapes)
    {
        LayersShapesMap inOutShapes;
        inOutShapes[0].in = netInputShapes; //insert shape for first input layer
        getLayerShapesRecursively(layerId, inOutShapes);
        shapes = inOutShapes[layerId];
    }

    LayerPin getLatestLayerPin(const std::vector<LayerPin>& pins)
    {
        return *std::max_element(pins.begin(), pins.end());
    }

    Mat getBlob(const LayerPin& pin)
    {
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Alexander Alekhin 已提交
3030 3031
        CV_TRACE_FUNCTION();

3032 3033 3034 3035 3036 3037
        if (!pin.valid())
            CV_Error(Error::StsObjectNotFound, "Requested blob not found");

        LayerData &ld = layers[pin.lid];
        if ((size_t)pin.oid >= ld.outputBlobs.size())
        {
3038
            CV_Error(Error::StsOutOfRange, format("Layer \"%s\" produce only %d outputs, "
L
luz.paz 已提交
3039
                                           "the #%d was requested", ld.name.c_str(),
3040
                                           ld.outputBlobs.size(), pin.oid));
3041
        }
3042
        if (preferableTarget != DNN_TARGET_CPU)
3043
        {
3044
            CV_Assert(!ld.outputBlobsWrappers.empty() && !ld.outputBlobsWrappers[pin.oid].empty());
3045
            // Transfer data to CPU if it's require.
3046
            ld.outputBlobsWrappers[pin.oid]->copyToHost();
3047
        }
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3048 3049 3050 3051 3052 3053 3054 3055

        if (ld.outputBlobs[pin.oid].depth() == CV_16S)
        {
            convertFp16(ld.outputBlobs[pin.oid], output_blob);
            return output_blob;
        }
        else
            return ld.outputBlobs[pin.oid];
3056 3057 3058 3059 3060 3061
    }

    Mat getBlob(String outputName)
    {
        return getBlob(getPinByAlias(outputName));
    }
3062 3063

#ifdef CV_CXX11
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3064
    AsyncArray getBlobAsync(const LayerPin& pin)
3065 3066 3067 3068 3069 3070 3071 3072 3073 3074 3075 3076 3077 3078 3079 3080 3081 3082 3083
    {
        CV_TRACE_FUNCTION();
#ifdef HAVE_INF_ENGINE
        if (!pin.valid())
            CV_Error(Error::StsObjectNotFound, "Requested blob not found");

        LayerData &ld = layers[pin.lid];
        if ((size_t)pin.oid >= ld.outputBlobs.size())
        {
            CV_Error(Error::StsOutOfRange, format("Layer \"%s\" produce only %d outputs, "
                                           "the #%d was requested", ld.name.c_str(),
                                           ld.outputBlobs.size(), pin.oid));
        }
        if (preferableTarget != DNN_TARGET_CPU)
        {
            CV_Assert(!ld.outputBlobsWrappers.empty() && !ld.outputBlobsWrappers[pin.oid].empty());
            // Transfer data to CPU if it's require.
            ld.outputBlobsWrappers[pin.oid]->copyToHost();
        }
3084
        CV_Assert(preferableBackend == DNN_BACKEND_INFERENCE_ENGINE_NN_BUILDER_2019 || preferableBackend == DNN_BACKEND_INFERENCE_ENGINE_NGRAPH);
3085

3086
        if (preferableBackend == DNN_BACKEND_INFERENCE_ENGINE_NN_BUILDER_2019) {
3087
#ifdef HAVE_DNN_IE_NN_BUILDER_2019
3088 3089
            Ptr<InfEngineBackendWrapper> wrapper = ld.outputBlobsWrappers[pin.oid].dynamicCast<InfEngineBackendWrapper>();
            return std::move(wrapper->futureMat);
3090 3091 3092
#else
            CV_Error(Error::StsNotImplemented, "This OpenCV version is built without Inference Engine NN Builder API support");
#endif
3093 3094 3095 3096 3097 3098
        }
        else if (preferableBackend == DNN_BACKEND_INFERENCE_ENGINE_NGRAPH)
        {
#ifdef HAVE_DNN_NGRAPH
            Ptr<NgraphBackendWrapper> wrapper = ld.outputBlobsWrappers[pin.oid].dynamicCast<NgraphBackendWrapper>();
            return std::move(wrapper->futureMat);
3099
#else
3100
            CV_Error(Error::StsNotImplemented, "This OpenCV version is built without support of Inference Engine + nGraph");
3101
#endif
3102 3103 3104
        }
#endif  // HAVE_INF_ENGINE
        CV_Error(Error::StsNotImplemented, "DNN_BACKEND_INFERENCE_ENGINE_NN_BUILDER_2019 backend is required");
3105 3106
    }

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    AsyncArray getBlobAsync(String outputName)
3108 3109 3110 3111
    {
        return getBlobAsync(getPinByAlias(outputName));
    }
#endif  // CV_CXX11
3112 3113 3114 3115 3116

#ifdef HAVE_INF_ENGINE
    static
    Net createNetworkFromModelOptimizer(InferenceEngine::CNNNetwork& ieNet);
#endif
3117 3118 3119 3120 3121 3122 3123 3124 3125 3126 3127 3128 3129 3130 3131 3132 3133 3134 3135 3136 3137 3138 3139 3140 3141

    string dump();

    void dumpNetworkToFile()
    {
#ifndef OPENCV_DNN_DISABLE_NETWORK_AUTO_DUMP
        String dumpFileName = cv::format("ocv_dnn_net_%05d_%02d.dot", networkId, networkDumpCounter++);
        try
        {
            string dumpStr = dump();
            std::ofstream out(dumpFileName.c_str(), std::ios::out | std::ios::binary);
            out << dumpStr;
        }
        catch (const std::exception& e)
        {
            std::ofstream out((dumpFileName + ".error").c_str(), std::ios::out);
            out << "Exception: " << e.what() << std::endl;
        }
        catch (...)
        {
            std::ofstream out((dumpFileName + ".error").c_str(), std::ios::out);
            out << "Can't dump: unknown exception" << std::endl;
        }
#endif
    }
3142 3143 3144 3145 3146 3147
};

Net::Net() : impl(new Net::Impl)
{
}

3148 3149 3150
#ifdef HAVE_INF_ENGINE
/*static*/
Net Net::Impl::createNetworkFromModelOptimizer(InferenceEngine::CNNNetwork& ieNet)
3151
{
3152
    CV_TRACE_FUNCTION();
3153 3154

    std::vector<String> inputsNames;
3155
    std::vector<MatShape> inp_shapes;
3156 3157 3158
    for (auto& it : ieNet.getInputsInfo())
    {
        inputsNames.push_back(it.first);
3159 3160
        std::vector<size_t> dims = it.second->getTensorDesc().getDims();
        inp_shapes.push_back(std::vector<int>(dims.begin(), dims.end()));
3161 3162
    }

3163
    Net cvNet;
3164 3165
    cvNet.setInputsNames(inputsNames);

3166 3167 3168
    // set empty input to determine input shapes
    for (int inp_id = 0; inp_id < inputsNames.size(); ++inp_id)
    {
3169
        cvNet.setInputShape(inputsNames[inp_id], inp_shapes[inp_id]);
3170 3171
    }

3172 3173 3174 3175 3176 3177 3178 3179 3180 3181 3182 3183
    Ptr<BackendNode> backendNode;
#ifdef HAVE_DNN_NGRAPH
    if (DNN_BACKEND_INFERENCE_ENGINE_NGRAPH == getInferenceEngineBackendTypeParam())
    {
        auto fake_node = std::make_shared<ngraph::op::Parameter>(ngraph::element::f32, ngraph::Shape{});
        Ptr<InfEngineNgraphNode> backendNodeNGraph(new InfEngineNgraphNode(fake_node));
        backendNodeNGraph->net = Ptr<InfEngineNgraphNet>(new InfEngineNgraphNet(ieNet));
        backendNode = backendNodeNGraph;
    }
    else
#endif
    {
3184
#ifdef HAVE_DNN_IE_NN_BUILDER_2019
3185 3186 3187
        Ptr<InfEngineBackendNode> backendNodeNN(new InfEngineBackendNode(InferenceEngine::Builder::Layer("")));
        backendNodeNN->net = Ptr<InfEngineBackendNet>(new InfEngineBackendNet(ieNet));
        backendNode = backendNodeNN;
3188 3189 3190
#else
        CV_Error(Error::StsNotImplemented, "This OpenCV version is built without Inference Engine NN Builder API support");
#endif
3191
    }
3192 3193 3194 3195 3196 3197
    for (auto& it : ieNet.getOutputsInfo())
    {
        LayerParams lp;
        int lid = cvNet.addLayer(it.first, "", lp);

        LayerData& ld = cvNet.impl->layers[lid];
3198 3199 3200 3201 3202 3203 3204 3205 3206 3207 3208 3209 3210 3211 3212 3213 3214 3215

#ifdef HAVE_DNN_NGRAPH
        if (DNN_BACKEND_INFERENCE_ENGINE_NGRAPH == getInferenceEngineBackendTypeParam())
        {
            Ptr<Layer> cvLayer(new NgraphBackendLayer(ieNet));

            InferenceEngine::CNNLayerPtr ieLayer = ieNet.getLayerByName(it.first.c_str());
            CV_Assert(ieLayer);

            cvLayer->name = it.first;
            cvLayer->type = ieLayer->type;
            ld.layerInstance = cvLayer;

            ld.backendNodes[DNN_BACKEND_INFERENCE_ENGINE_NGRAPH] = backendNode;
        }
        else
#endif
        {
3216
#ifdef HAVE_DNN_IE_NN_BUILDER_2019
3217 3218 3219 3220 3221 3222 3223 3224 3225 3226
            Ptr<Layer> cvLayer(new InfEngineBackendLayer(ieNet));

            InferenceEngine::CNNLayerPtr ieLayer = ieNet.getLayerByName(it.first.c_str());
            CV_Assert(ieLayer);

            cvLayer->name = it.first;
            cvLayer->type = ieLayer->type;
            ld.layerInstance = cvLayer;

            ld.backendNodes[DNN_BACKEND_INFERENCE_ENGINE_NN_BUILDER_2019] = backendNode;
3227 3228 3229
#else
            CV_Error(Error::StsNotImplemented, "This OpenCV version is built without Inference Engine NN Builder API support");
#endif
3230
        }
3231

3232 3233
        for (int i = 0; i < inputsNames.size(); ++i)
            cvNet.connect(0, i, lid, i);
3234
    }
3235
    cvNet.setPreferableBackend(getInferenceEngineBackendTypeParam());
3236 3237 3238

    cvNet.impl->skipInfEngineInit = true;
    return cvNet;
3239 3240 3241 3242 3243 3244 3245 3246 3247 3248 3249 3250 3251 3252 3253 3254 3255
}
#endif  // HAVE_INF_ENGINE

Net Net::readFromModelOptimizer(const String& xml, const String& bin)
{
    CV_TRACE_FUNCTION();
#ifndef HAVE_INF_ENGINE
    CV_UNUSED(xml); CV_UNUSED(bin);
    CV_Error(Error::StsError, "Build OpenCV with Inference Engine to enable loading models from Model Optimizer.");
#else
#if INF_ENGINE_VER_MAJOR_LE(INF_ENGINE_RELEASE_2019R3)
    InferenceEngine::CNNNetReader reader;
    reader.ReadNetwork(xml);
    reader.ReadWeights(bin);

    InferenceEngine::CNNNetwork ieNet = reader.getNetwork();
#else
3256
    InferenceEngine::Core& ie = getCore("");
3257 3258 3259 3260
    InferenceEngine::CNNNetwork ieNet = ie.ReadNetwork(xml, bin);
#endif

    return Impl::createNetworkFromModelOptimizer(ieNet);
3261
#endif  // HAVE_INF_ENGINE
3262 3263
}

3264 3265 3266 3267 3268 3269 3270 3271 3272 3273 3274 3275 3276 3277 3278 3279 3280 3281 3282 3283 3284 3285 3286 3287 3288 3289 3290 3291 3292 3293 3294 3295 3296 3297 3298 3299 3300 3301 3302 3303 3304
Net Net::readFromModelOptimizer(const std::vector<uchar>& bufferModelConfig, const std::vector<uchar>& bufferWeights)
{
    CV_TRACE_FUNCTION();
    CV_Assert(!bufferModelConfig.empty());
    CV_Assert(!bufferWeights.empty());
    return readFromModelOptimizer(bufferModelConfig.data(), bufferModelConfig.size(),
                                           bufferWeights.data(), bufferWeights.size());
}

Net Net::readFromModelOptimizer(
        const uchar* bufferModelConfigPtr, size_t bufferModelConfigSize,
        const uchar* bufferWeightsPtr, size_t bufferWeightsSize
)
{
    CV_TRACE_FUNCTION();
#ifndef HAVE_INF_ENGINE
    CV_UNUSED(bufferModelConfigPtr); CV_UNUSED(bufferWeightsPtr);
    CV_UNUSED(bufferModelConfigSize); CV_UNUSED(bufferModelConfigSize);
    CV_Error(Error::StsError, "Build OpenCV with Inference Engine to enable loading models from Model Optimizer.");
#else

#if INF_ENGINE_VER_MAJOR_LE(INF_ENGINE_RELEASE_2019R3)
    InferenceEngine::CNNNetReader reader;

    try
    {
        reader.ReadNetwork(bufferModelConfigPtr, bufferModelConfigSize);

        InferenceEngine::TensorDesc tensorDesc(InferenceEngine::Precision::U8, { bufferWeightsSize }, InferenceEngine::Layout::C);
        InferenceEngine::TBlob<uint8_t>::Ptr weightsBlobPtr(new InferenceEngine::TBlob<uint8_t>(tensorDesc));
        weightsBlobPtr->allocate();
        std::memcpy(weightsBlobPtr->buffer(), (uchar*)bufferWeightsPtr, bufferWeightsSize);
        reader.SetWeights(weightsBlobPtr);
    }
    catch (const std::exception& e)
    {
        CV_Error(Error::StsError, std::string("DNN: IE failed to load model: ") + e.what());
    }

    InferenceEngine::CNNNetwork ieNet = reader.getNetwork();
#else
3305
    InferenceEngine::Core& ie = getCore("");
3306 3307 3308 3309 3310 3311 3312 3313 3314 3315 3316 3317 3318 3319 3320 3321 3322 3323 3324 3325 3326 3327

    std::string model; model.assign((char*)bufferModelConfigPtr, bufferModelConfigSize);

    InferenceEngine::CNNNetwork ieNet;
    try
    {
        InferenceEngine::TensorDesc tensorDesc(InferenceEngine::Precision::U8, { bufferWeightsSize }, InferenceEngine::Layout::C);
        InferenceEngine::Blob::CPtr weights_blob = InferenceEngine::make_shared_blob<uint8_t>(tensorDesc, (uint8_t*)bufferWeightsPtr, bufferWeightsSize);

        ieNet = ie.ReadNetwork(model, weights_blob);
    }
    catch (const std::exception& e)
    {
        CV_Error(Error::StsError, std::string("DNN: IE failed to load model: ") + e.what());
    }
#endif

    return Impl::createNetworkFromModelOptimizer(ieNet);
#endif  // HAVE_INF_ENGINE
}


3328 3329 3330 3331 3332 3333
Net::~Net()
{
}

int Net::addLayer(const String &name, const String &type, LayerParams &params)
{
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Alexander Alekhin 已提交
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    CV_TRACE_FUNCTION();

3336 3337 3338 3339 3340 3341 3342 3343 3344 3345 3346 3347 3348 3349 3350
    if (impl->getLayerId(name) >= 0)
    {
        CV_Error(Error::StsBadArg, "Layer \"" + name + "\" already into net");
        return -1;
    }

    int id = ++impl->lastLayerId;
    impl->layerNameToId.insert(std::make_pair(name, id));
    impl->layers.insert(std::make_pair(id, LayerData(id, name, type, params)));

    return id;
}

int Net::addLayerToPrev(const String &name, const String &type, LayerParams &params)
{
A
Alexander Alekhin 已提交
3351 3352
    CV_TRACE_FUNCTION();

3353 3354 3355 3356 3357 3358 3359 3360
    int prvLid = impl->lastLayerId;
    int newLid = this->addLayer(name, type, params);
    this->connect(prvLid, 0, newLid, 0);
    return newLid;
}

void Net::connect(int outLayerId, int outNum, int inpLayerId, int inpNum)
{
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Alexander Alekhin 已提交
3361 3362
    CV_TRACE_FUNCTION();

3363 3364 3365 3366 3367
    impl->connect(outLayerId, outNum, inpLayerId, inpNum);
}

void Net::connect(String _outPin, String _inPin)
{
A
Alexander Alekhin 已提交
3368 3369
    CV_TRACE_FUNCTION();

3370 3371 3372 3373 3374 3375 3376 3377 3378 3379
    LayerPin outPin = impl->getPinByAlias(_outPin);
    LayerPin inpPin = impl->getPinByAlias(_inPin);

    CV_Assert(outPin.valid() && inpPin.valid());

    impl->connect(outPin.lid, outPin.oid, inpPin.lid, inpPin.oid);
}

Mat Net::forward(const String& outputName)
{
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Alexander Alekhin 已提交
3380 3381
    CV_TRACE_FUNCTION();

3382 3383 3384 3385 3386
    String layerName = outputName;

    if (layerName.empty())
        layerName = getLayerNames().back();

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Dmitry Kurtaev 已提交
3387 3388
    std::vector<LayerPin> pins(1, impl->getPinByAlias(layerName));
    impl->setUpNet(pins);
3389 3390 3391 3392 3393
    impl->forwardToLayer(impl->getLayerData(layerName));

    return impl->getBlob(layerName);
}

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Alexander Alekhin 已提交
3394
AsyncArray Net::forwardAsync(const String& outputName)
3395 3396 3397 3398 3399 3400 3401 3402 3403 3404 3405
{
    CV_TRACE_FUNCTION();
#ifdef CV_CXX11
    String layerName = outputName;

    if (layerName.empty())
        layerName = getLayerNames().back();

    std::vector<LayerPin> pins(1, impl->getPinByAlias(layerName));
    impl->setUpNet(pins);

3406 3407
    if (!(impl->preferableBackend == DNN_BACKEND_INFERENCE_ENGINE_NN_BUILDER_2019 || impl->preferableBackend == DNN_BACKEND_INFERENCE_ENGINE_NGRAPH))
        CV_Error(Error::StsNotImplemented, "DNN: Asynchronous forward is supported for Inference Engine backends only");
3408

3409 3410 3411 3412 3413 3414
    impl->isAsync = true;
    impl->forwardToLayer(impl->getLayerData(layerName));
    impl->isAsync = false;

    return impl->getBlobAsync(layerName);
#else
3415
    CV_Error(Error::StsNotImplemented, "DNN: Asynchronous forward requires build with enabled C++11");
3416 3417 3418
#endif  // CV_CXX11
}

3419
void Net::forward(OutputArrayOfArrays outputBlobs, const String& outputName)
3420
{
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Alexander Alekhin 已提交
3421 3422
    CV_TRACE_FUNCTION();

3423 3424 3425 3426 3427
    String layerName = outputName;

    if (layerName.empty())
        layerName = getLayerNames().back();

D
Dmitry Kurtaev 已提交
3428 3429
    std::vector<LayerPin> pins(1, impl->getPinByAlias(layerName));
    impl->setUpNet(pins);
3430 3431 3432 3433
    impl->forwardToLayer(impl->getLayerData(layerName));

    LayerPin pin = impl->getPinByAlias(layerName);
    LayerData &ld = impl->layers[pin.lid];
L
Li Peng 已提交
3434

3435
    if (outputBlobs.isUMat())
L
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3436
    {
3437
        impl->getBlob(layerName).copyTo(outputBlobs);
3438 3439 3440 3441 3442 3443 3444
    }
    else if (outputBlobs.isMat())
    {
        outputBlobs.assign(impl->getBlob(layerName));
    }
    else if (outputBlobs.isMatVector())
    {
3445
        if (impl->preferableTarget != DNN_TARGET_CPU)
3446
        {
3447 3448 3449 3450 3451
            for (int i = 0; i < ld.outputBlobsWrappers.size(); ++i)
            {
                CV_Assert(!ld.outputBlobsWrappers[i].empty());
                ld.outputBlobsWrappers[i]->copyToHost();
            }
3452
        }
L
Li Peng 已提交
3453 3454 3455 3456 3457 3458 3459 3460 3461 3462
        if (ld.outputBlobs[0].depth() == CV_32F)
        {
            std::vector<Mat> & outputvec = *(std::vector<Mat> *)outputBlobs.getObj();
            outputvec = ld.outputBlobs;
        } else {
            std::vector<Mat> & outputvec = *(std::vector<Mat> *)outputBlobs.getObj();
            outputvec.resize(ld.outputBlobs.size());
            for (int i = 0; i < outputvec.size(); i++)
                convertFp16(ld.outputBlobs[i], outputvec[i]);
        }
3463 3464 3465
    }
    else if (outputBlobs.isUMatVector())
    {
3466 3467
        std::vector<UMat> & outputvec = *(std::vector<UMat> *)outputBlobs.getObj();

3468
#ifdef HAVE_OPENCL
3469
        if (impl->preferableBackend == DNN_BACKEND_OPENCV &&
L
Li Peng 已提交
3470
            IS_DNN_OPENCL_TARGET(impl->preferableTarget))
3471
        {
L
Li Peng 已提交
3472 3473 3474 3475 3476 3477 3478 3479 3480
            if (impl->preferableTarget == DNN_TARGET_OPENCL)
                outputvec = OpenCLBackendWrapper::getUMatVector(ld.outputBlobsWrappers);
            else if (impl->preferableTarget == DNN_TARGET_OPENCL_FP16)
            {
                std::vector<UMat> out_vec = OpenCLBackendWrapper::getUMatVector(ld.outputBlobsWrappers);
                outputvec.resize(out_vec.size());
                for (int i = 0; i < out_vec.size(); i++)
                    convertFp16(out_vec[i], outputvec[i]);
            }
3481 3482
        }
        else
3483
#endif
3484
        {
3485 3486
            outputvec.resize(ld.outputBlobs.size());
            for (int i = 0; i < outputvec.size(); ++i)
3487
                ld.outputBlobs[i].copyTo(outputvec[i]);
3488
        }
L
Li Peng 已提交
3489
    }
3490 3491
}

3492
void Net::forward(OutputArrayOfArrays outputBlobs,
3493 3494
                  const std::vector<String>& outBlobNames)
{
A
Alexander Alekhin 已提交
3495 3496
    CV_TRACE_FUNCTION();

3497 3498 3499
    std::vector<LayerPin> pins;
    for (int i = 0; i < outBlobNames.size(); i++)
    {
3500
        pins.push_back(impl->getPinByAlias(outBlobNames[i]));
3501 3502 3503 3504 3505 3506 3507 3508
    }

    impl->setUpNet(pins);

    LayerPin out = impl->getLatestLayerPin(pins);

    impl->forwardToLayer(impl->getLayerData(out.lid));

3509
    std::vector<Mat> matvec;
3510 3511
    for (int i = 0; i < pins.size(); i++)
    {
3512
        matvec.push_back(impl->getBlob(pins[i]));
3513
    }
3514 3515 3516

    std::vector<Mat> & outputvec = *(std::vector<Mat> *)outputBlobs.getObj();
    outputvec = matvec;
3517 3518 3519 3520 3521
}

void Net::forward(std::vector<std::vector<Mat> >& outputBlobs,
                     const std::vector<String>& outBlobNames)
{
A
Alexander Alekhin 已提交
3522 3523
    CV_TRACE_FUNCTION();

3524 3525 3526
    std::vector<LayerPin> pins;
    for (int i = 0; i < outBlobNames.size(); i++)
    {
3527
        pins.push_back(impl->getPinByAlias(outBlobNames[i]));
3528 3529 3530 3531 3532 3533 3534 3535 3536 3537 3538 3539
    }

    impl->setUpNet(pins);

    LayerPin out = impl->getLatestLayerPin(pins);

    impl->forwardToLayer(impl->getLayerData(out.lid));

    outputBlobs.resize(outBlobNames.size());
    for (int i = 0; i < outBlobNames.size(); i++)
    {
        std::vector<LayerPin> lp = impl->getLayerOutPins(outBlobNames[i]);
3540 3541
        outputBlobs[i].resize(lp.size());
        for (int j = 0; j < lp.size(); j++)
3542
        {
3543
            outputBlobs[i][j] = impl->getBlob(lp[j]);
3544 3545 3546 3547 3548 3549
        }
    }
}

void Net::setPreferableBackend(int backendId)
{
A
Alexander Alekhin 已提交
3550 3551 3552
    CV_TRACE_FUNCTION();
    CV_TRACE_ARG(backendId);

3553 3554 3555 3556 3557
#ifdef HAVE_INF_ENGINE
    if (backendId == DNN_BACKEND_INFERENCE_ENGINE)
        backendId = getInferenceEngineBackendTypeParam();
#endif

3558 3559 3560 3561 3562 3563
    if( impl->preferableBackend != backendId )
    {
        impl->preferableBackend = backendId;
        impl->netWasAllocated = false;
        impl->clear();
    }
3564 3565 3566 3567
}

void Net::setPreferableTarget(int targetId)
{
A
Alexander Alekhin 已提交
3568 3569 3570
    CV_TRACE_FUNCTION();
    CV_TRACE_ARG(targetId);

3571 3572 3573
    if( impl->preferableTarget != targetId )
    {
        impl->preferableTarget = targetId;
L
Li Peng 已提交
3574 3575 3576
        if (IS_DNN_OPENCL_TARGET(targetId))
        {
#ifndef HAVE_OPENCL
3577 3578 3579 3580 3581 3582 3583
#ifdef HAVE_INF_ENGINE
            if (impl->preferableBackend == DNN_BACKEND_OPENCV)
#else
            if (impl->preferableBackend == DNN_BACKEND_DEFAULT ||
                impl->preferableBackend == DNN_BACKEND_OPENCV)
#endif  // HAVE_INF_ENGINE
                impl->preferableTarget = DNN_TARGET_CPU;
L
Li Peng 已提交
3584 3585 3586 3587 3588 3589
#else
            bool fp16 = ocl::Device::getDefault().isExtensionSupported("cl_khr_fp16");
            if (!fp16 && targetId == DNN_TARGET_OPENCL_FP16)
                impl->preferableTarget = DNN_TARGET_OPENCL;
#endif
        }
3590 3591 3592
        impl->netWasAllocated = false;
        impl->clear();
    }
3593 3594 3595 3596
}

void Net::setInputsNames(const std::vector<String> &inputBlobNames)
{
A
Alexander Alekhin 已提交
3597 3598
    CV_TRACE_FUNCTION();

3599 3600 3601
    impl->netInputLayer->setNames(inputBlobNames);
}

3602 3603 3604 3605 3606 3607 3608
void Net::setInputShape(const String &inputName, const MatShape& shape)
{
    CV_TRACE_FUNCTION();

    impl->netInputLayer->setInputShape(inputName, shape);
}

3609
void Net::setInput(InputArray blob, const String& name, double scalefactor, const Scalar& mean)
3610
{
A
Alexander Alekhin 已提交
3611 3612 3613
    CV_TRACE_FUNCTION();
    CV_TRACE_ARG_VALUE(name, "name", name.c_str());

3614 3615 3616 3617 3618 3619 3620
    LayerPin pin;
    pin.lid = 0;
    pin.oid = impl->resolvePinOutputName(impl->getLayerData(pin.lid), name);

    if (!pin.valid())
        CV_Error(Error::StsObjectNotFound, "Requested blob \"" + name + "\" not found");

3621 3622 3623 3624 3625 3626 3627 3628 3629 3630 3631 3632 3633 3634 3635 3636 3637 3638 3639 3640 3641 3642 3643 3644 3645 3646 3647
    Mat blob_ = blob.getMat();  // can't use InputArray directly due MatExpr stuff
    MatShape blobShape = shape(blob_);

    if (pin.lid == 0)
    {
        CV_Assert(!impl->netInputLayer.empty());
        const DataLayer& netInputLayer = *impl->netInputLayer.get();
        if (!netInputLayer.shapes.empty())
        {
            CV_CheckLT(pin.oid, (int)netInputLayer.shapes.size(), "");
            const MatShape& inputShapeLimitation = netInputLayer.shapes[pin.oid];
            if (!inputShapeLimitation.empty())
            {
                CV_CheckEQ(inputShapeLimitation.size(), blobShape.size(), "");
#if 0  // TODO: DNNTestNetwork.MobileNet_SSD_Caffe_Different_Width_Height/0
                const size_t dims = inputShapeLimitation.size();
                for (size_t dim = 0; dim < dims; dim++)
                {
                    if (dims >= 3 && dim == 0 && inputShapeLimitation[0] == 1)
                        continue;  // don't limit batch
                    CV_CheckEQ(inputShapeLimitation[dim], blobShape[dim], "");
                }
#endif
            }
        }
    }

3648
    LayerData &ld = impl->layers[pin.lid];
3649 3650 3651 3652
    const int numInputs = std::max(pin.oid+1, (int)ld.requiredOutputs.size());
    ld.outputBlobs.resize(numInputs);
    ld.outputBlobsWrappers.resize(numInputs);
    impl->netInputLayer->inputsData.resize(numInputs);
3653 3654
    impl->netInputLayer->scaleFactors.resize(numInputs);
    impl->netInputLayer->means.resize(numInputs);
3655 3656

    MatShape prevShape = shape(impl->netInputLayer->inputsData[pin.oid]);
3657 3658 3659 3660 3661
    bool oldShape = prevShape == blobShape;

    blob_.copyTo(impl->netInputLayer->inputsData[pin.oid]);
    if (!oldShape)
        ld.outputBlobs[pin.oid] = impl->netInputLayer->inputsData[pin.oid];
3662

3663 3664 3665 3666
    if (!ld.outputBlobsWrappers[pin.oid].empty())
    {
        ld.outputBlobsWrappers[pin.oid]->setHostDirty();
    }
3667 3668
    impl->netInputLayer->scaleFactors[pin.oid] = scalefactor;
    impl->netInputLayer->means[pin.oid] = mean;
3669 3670 3671 3672 3673 3674
    impl->netWasAllocated = impl->netWasAllocated && oldShape;
}

Mat Net::getParam(LayerId layer, int numParam)
{
    LayerData &ld = impl->getLayerData(layer);
D
Dmitry Kurtaev 已提交
3675
    std::vector<Mat> &layerBlobs = ld.getLayerInstance()->blobs;
3676 3677 3678 3679 3680 3681 3682 3683
    CV_Assert(numParam < (int)layerBlobs.size());
    return layerBlobs[numParam];
}

void Net::setParam(LayerId layer, int numParam, const Mat &blob)
{
    LayerData &ld = impl->getLayerData(layer);

D
Dmitry Kurtaev 已提交
3684
    std::vector<Mat> &layerBlobs = ld.getLayerInstance()->blobs;
3685 3686 3687 3688 3689 3690 3691 3692 3693 3694
    CV_Assert(numParam < (int)layerBlobs.size());
    //we don't make strong checks, use this function carefully
    layerBlobs[numParam] = blob;
}

int Net::getLayerId(const String &layer)
{
    return impl->getLayerId(layer);
}

3695 3696 3697 3698
static
string dumpLayerParameterSize(const string& name, const LayerParams& lp)
{
    std::ostringstream out(name, std::ios::ate);
3699
    DictValue param = lp.get(name);
3700 3701 3702 3703 3704 3705 3706 3707
    switch (param.size())
    {
        case 1: out << " : "; break;
        case 2: out << " (HxW): "; break;
        case 3: out << " (DxHxW): "; break;
        default:
            CV_LOG_INFO(NULL, format("DNN/dumpLayerParameterSize(): Unsupported '%s' size = %d", name.c_str(), param.size()));
            out << ": ";
3708
    }
3709 3710 3711 3712 3713
    for (size_t i = 0; i < param.size(); i++)
    {
        if (i > 0)
            out << " x ";
        out << param.get<int>(i);
3714 3715 3716 3717
    }
    return out.str();
}

3718 3719 3720
String Net::dump()
{
    CV_Assert(!empty());
3721

3722
    bool hasInput = !impl->netInputLayer->inputsData.empty();
3723

3724 3725 3726 3727 3728
    if (hasInput)
    {
        if (!impl->netWasAllocated)
            impl->setUpNet();
    }
3729

3730 3731 3732 3733 3734 3735 3736
    return impl->dump();
}

string Net::Impl::dump()
{
    bool hasInput = !netInputLayer->inputsData.empty();

3737
    std::ostringstream out;
3738
    const std::map<int, LayerData>& map = layers;
3739

3740
    Backend prefBackend = (Backend)preferableBackend;
3741 3742 3743 3744 3745
    std::vector<std::vector<int> > skippedLayers;
    std::vector<int> skipId;
    std::vector<int> allLayers(map.size(), -1);
    int idPrev = -1;
    Ptr<BackendNode> prevNode;
3746
    for (std::map<int, LayerData>::const_reverse_iterator rit = map.rbegin(); rit != map.rend(); ++rit)
3747
    {
3748
        std::map<int, Ptr<BackendNode> >::const_iterator itBackend = rit->second.backendNodes.find(prefBackend);
3749 3750 3751 3752 3753 3754 3755 3756 3757 3758 3759 3760 3761 3762 3763 3764 3765 3766 3767 3768 3769 3770 3771 3772 3773 3774 3775 3776 3777 3778 3779 3780 3781 3782 3783 3784 3785 3786
        if (prefBackend == DNN_BACKEND_OPENCV || itBackend == rit->second.backendNodes.end() ||
            itBackend->second.empty())
        {
                if (rit->second.skip)
                    skipId.push_back(rit->first);
                else if (!skipId.empty())
                {
                    if (prefBackend == DNN_BACKEND_OPENCV || prevNode.empty())
                        skipId.push_back(rit->first);
                    else if (idPrev != -1)
                        skipId.push_back(idPrev);

                    std::sort(skipId.begin(), skipId.end());
                    for (int i = 0; i < skipId.size(); i++) {
                        allLayers[skipId[i]] = skippedLayers.size();
                    }
                    skippedLayers.push_back(skipId);
                    skipId.clear();
                }
        }
        else
        {
            if (itBackend->second == prevNode)
                skipId.push_back(idPrev);
            else if (!skipId.empty())
            {
                skipId.push_back(idPrev);
                std::sort(skipId.begin(), skipId.end());
                for (int i = 0; i < skipId.size(); i++) {
                    allLayers[skipId[i]] = skippedLayers.size();
                }
                skippedLayers.push_back(skipId);
                skipId.clear();
            }
            idPrev = rit->first;
            prevNode = itBackend->second;
        }
    }
3787 3788 3789 3790
    string colors[] = {"#ffffb3", "#fccde5", "#8dd3c7", "#bebada", "#80b1d3", "#fdb462"};
    string backend;
    switch (prefBackend)
    {
3791 3792
        case DNN_BACKEND_DEFAULT: backend = "DEFAULT/"; break;
        case DNN_BACKEND_HALIDE: backend = "HALIDE/"; break;
3793 3794 3795
        case DNN_BACKEND_INFERENCE_ENGINE: // fallthru
        case DNN_BACKEND_INFERENCE_ENGINE_NN_BUILDER_2019: backend = "DLIE/"; break;
        case DNN_BACKEND_INFERENCE_ENGINE_NGRAPH: backend = "NGRAPH/"; break;
3796
        case DNN_BACKEND_OPENCV: backend = "OCV/"; break;
3797
        // don't use default:
3798
    }
3799
    out << "digraph G {\n";
3800
    // Add nodes
3801
    for (std::map<int, LayerData>::const_iterator it = map.begin(); it != map.end(); ++it)
3802
    {
3803 3804 3805 3806 3807 3808
        const LayerData& ld = it->second;
        string name = ld.params.name;
        std::vector<int> clusterIds(1, it->first);
        if (allLayers[it->first] == -1 && !name.empty())
        {
            out << "\t\"" << name << "\" [label=\"";
3809 3810
        }
        else if (name.empty() || it->first != skippedLayers[allLayers[it->first]][0])
3811
        {
3812
            continue;
3813 3814 3815
        }
        else // first node in cluster : it->first == skippedLayers[allLayers[it->first]][0]
        {
3816
            int cluster = allLayers[it->first];
3817 3818
            out << "\t\"" << "cluster_" << cluster << "\" [label=\"{";
            clusterIds = skippedLayers[allLayers[it->first]]; // vertices in current cluster
3819
        }
3820
        for (int i = 0; i < clusterIds.size(); i++)
3821
        {
3822 3823
            CV_DbgAssert(map.find(clusterIds[i]) != map.end());
            const LayerParams& lp = map.find(clusterIds[i])->second.params;
3824 3825 3826 3827
            if (!lp.name.empty()) {
                if (i > 0) {
                    out << " | ";
                }
3828 3829 3830 3831
                out << lp.name << "\\n" << lp.type << "\\n";  // align center
                if (lp.has("kernel_size"))
                {
                    string kernel = dumpLayerParameterSize("kernel_size", lp);
3832
                    out << kernel;
3833
                    out << "\\l";  // align left
3834 3835 3836
                } else if (lp.has("kernel_h") && lp.has("kernel_w")) {
                    DictValue h = lp.get("kernel_h");
                    DictValue w = lp.get("kernel_w");
3837 3838
                    out << "kernel (HxW): " << h << " x " << w;
                    out << "\\l";  // align left
3839 3840
                }
                if (lp.has("stride")) {
3841
                    string stride = dumpLayerParameterSize("stride", lp);
3842
                    out << stride;
3843
                    out << "\\l";  // align left
3844 3845 3846
                } else if (lp.has("stride_h") && lp.has("stride_w")) {
                    DictValue h = lp.get("stride_h");
                    DictValue w = lp.get("stride_w");
3847 3848
                    out << "stride (HxW): " << h << " x " << w;
                    out << "\\l";  // align left
3849 3850
                }
                if (lp.has("dilation")) {
3851
                    string dilation = dumpLayerParameterSize("dilation", lp);
3852
                    out << dilation;
3853
                    out << "\\l";  // align left
3854 3855 3856
                } else if (lp.has("dilation_h") && lp.has("dilation_w")) {
                    DictValue h = lp.get("dilation_h");
                    DictValue w = lp.get("dilation_w");
3857 3858
                    out << "dilation (HxW): " << h << " x " << w;
                    out << "\\l";  // align left
3859 3860 3861 3862
                }
                if (lp.has("pad")) {
                    DictValue pad = lp.get("pad");
                    out << "pad ";
3863 3864 3865 3866 3867 3868 3869 3870 3871 3872 3873 3874 3875 3876 3877
                    switch (pad.size())
                    {
                        case 1: out << ": " << pad; break;
                        case 2:
                            out << "(HxW): (" << pad.get<int>(0) << " x " << pad.get<int>(1) << ")";
                            break;
                        case 4:
                            out << "(HxW): (" << pad.get<int>(0) << ", " << pad.get<int>(2)
                                << ") x (" << pad.get<int>(1) << ", " << pad.get<int>(3) << ")";
                            break;
                        case 6:
                            out << "(DxHxW): (" << pad.get<int>(0) << ", " << pad.get<int>(3)
                                << ") x (" << pad.get<int>(1) << ", " << pad.get<int>(4)
                                << ") x (" << pad.get<int>(2) << ", " << pad.get<int>(5) << ")";
                            break;
3878 3879
                        default: CV_Error(Error::StsNotImplemented,  format("Unsupported pad size = %d", pad.size()));
                    }
3880 3881 3882 3883 3884 3885 3886 3887 3888 3889 3890 3891 3892 3893 3894 3895 3896 3897 3898 3899 3900 3901 3902 3903 3904 3905 3906 3907 3908 3909 3910 3911 3912 3913 3914 3915 3916 3917 3918 3919 3920 3921 3922 3923 3924 3925 3926 3927 3928 3929 3930 3931 3932 3933 3934 3935 3936 3937
                    out << "\\l";  // align left
                } else if (lp.has("pad_l") && lp.has("pad_t") && lp.has("pad_r") && lp.has("pad_b")) {
                    DictValue l = lp.get("pad_l");
                    DictValue t = lp.get("pad_t");
                    DictValue r = lp.get("pad_r");
                    DictValue b = lp.get("pad_b");
                    out << "pad (HxW): (" << t << ", " << b << ") x (" << l << ", " << r << ")";
                    out << "\\l";  // align left
                }
                else if (lp.has("pooled_w") || lp.has("pooled_h")) {
                    DictValue h = lp.get("pooled_h");
                    DictValue w = lp.get("pooled_w");
                    out << "pad pooled (HxW): " << h << " x " << w;
                    out << "\\l";  // align left
                }
                if (lp.has("pool")) {
                    out << "pool: " << lp.get("pool");
                    out << "\\l";  // align left
                }
                if (lp.has("global_pooling")) {
                    out << "global_pooling: " << lp.get("global_pooling");
                    out << "\\l";  // align left
                }
                if (lp.has("group")) {
                    out << "group: " << lp.get("group");
                    out << "\\l";  // align left
                }
            }
        }
        if (!ld.outputBlobs.empty())
        {
            out << "output: " << ld.outputBlobs[0].size;
            out << "\\l";  // align left
        }

        Ptr<BackendNode> layerBackend;
        std::map<int, Ptr<BackendNode> >::const_iterator ibn = ld.backendNodes.find(prefBackend);
        if (ibn != ld.backendNodes.end())
            layerBackend = ibn->second;
        out << (!layerBackend.empty() ? backend : "OCV/");
        int colorId = 0;
        const Target target = ld.layerInstance.empty()
                         ? DNN_TARGET_CPU
                                 : (Target)(ld.layerInstance->preferableTarget);  // TODO fix preferableTarget type
        switch (target)
        {
            case DNN_TARGET_CPU: out << "CPU"; colorId = layerBackend.empty() ? 0 : 5; break;
            case DNN_TARGET_OPENCL: out << "OCL"; colorId = 1; break;
            case DNN_TARGET_OPENCL_FP16: out << "OCL_FP16"; colorId = 2; break;
            case DNN_TARGET_MYRIAD: out << "MYRIAD"; colorId = 3; break;
            case DNN_TARGET_FPGA: out << "FPGA"; colorId = 4; break;
            // don't use default:
        }
        out << "\\n";  // align center
        out << ((clusterIds.size() == 1)? "\" " : " }\" ");
        out << "fillcolor=\"" << colors[colorId] << "\" ";
        out << "style=filled ";
        out << "shape=" << ((clusterIds.size() == 1)? "box" : "record") << "]\n";
3938 3939 3940
    }
    out << '\n';
    // Add edges
3941
    int inputsSize = hasInput ? netInputLayer->outNames.size() : 0;
3942
    for (std::map<int, LayerData>::const_iterator it = map.begin(); it != map.end(); ++it)
3943
    {
3944
        const LayerData& ld = it->second;
3945 3946
        if (allLayers[it->first] == -1)  // node
        {
3947
            for (int i = 0; i < ld.consumers.size(); i++)
3948
            {
3949
                int outId = ld.consumers[i].lid;
3950
                if (it == map.begin() && inputsSize > 1)
3951
                    out << "\t\"" << ld.name << "_" << i << "\"" << " -> ";
3952
                else
3953
                    out << "\t\"" << ld.name << "\"" << " -> ";
3954
                if (allLayers[outId] == -1)  // node
3955 3956 3957 3958
                {
                    CV_DbgAssert(map.find(outId) != map.end());
                    out << "\"" << map.find(outId)->second.name << "\"\n";
                }
3959
                else  // cluster
3960 3961 3962
                {
                    out << "\"" << "cluster_" << allLayers[outId] << "\"\n";
                }
3963 3964 3965 3966
            }
        }
        else if (it->first == skippedLayers[allLayers[it->first]].back())  // edges from last layer in cluster
        {
3967
            for (int i = 0; i < ld.consumers.size(); i++)
3968
            {
3969 3970 3971 3972 3973 3974
                int outId = ld.consumers[i].lid;
                if (allLayers[outId] == -1) // node
                {
                    CV_DbgAssert(map.find(outId) != map.end());
                    out << "\t\"" << "cluster_" << allLayers[it->first] << "\"" << " -> ";
                    out << "\"" << map.find(outId)->second.name << "\"\n";
3975 3976
                }
                else if (allLayers[outId] != allLayers[it->first]) { // another cluster
3977 3978
                    out << "\t\"" << "cluster_" << allLayers[it->first] << "\"" << " -> ";
                    out << "\"" << "cluster_" << allLayers[outId] << "\"\n";
3979 3980 3981 3982
                }
            }
        }
    }
3983
    out << "}\n";
3984 3985 3986 3987 3988 3989 3990 3991 3992
    return out.str();
}

void Net::dumpToFile(const String& path) {
    std::ofstream file(path.c_str());
    file << dump();
    file.close();
}

3993 3994 3995
Ptr<Layer> Net::getLayer(LayerId layerId)
{
    LayerData &ld = impl->getLayerData(layerId);
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abratchik 已提交
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    return ld.getLayerInstance();
3997 3998 3999 4000 4001 4002 4003
}

std::vector<Ptr<Layer> > Net::getLayerInputs(LayerId layerId)
{
    LayerData &ld = impl->getLayerData(layerId);

    std::vector<Ptr<Layer> > inputLayers;
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Dimitri Gerin 已提交
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    inputLayers.reserve(ld.inputBlobsId.size());
    for (int i = 0; i < ld.inputBlobsId.size(); ++i) {
        inputLayers.push_back(getLayer(ld.inputBlobsId[i].lid));
4007 4008 4009 4010 4011 4012 4013 4014 4015 4016 4017 4018 4019 4020 4021 4022 4023 4024 4025 4026 4027 4028 4029 4030 4031 4032 4033 4034 4035 4036 4037 4038 4039 4040 4041 4042 4043 4044 4045 4046 4047
    }
    return inputLayers;
}

std::vector<String> Net::getLayerNames() const
{
    std::vector<String> res;
    res.reserve(impl->layers.size());

    Impl::MapIdToLayerData::iterator it;
    for (it = impl->layers.begin(); it != impl->layers.end(); it++)
    {
        if (it->second.id) //skip Data layer
            res.push_back(it->second.name);
    }

    return res;
}

bool Net::empty() const
{
    return impl->layers.size() <= 1; //first layer is default Data layer
}

std::vector<int> Net::getUnconnectedOutLayers() const
{
    std::vector<int> layersIds;

    Impl::MapIdToLayerData::iterator it;
    for (it = impl->layers.begin(); it != impl->layers.end(); it++)
    {
        int lid = it->first;
        LayerData &ld = it->second;

        if (ld.requiredOutputs.size() == 0)
            layersIds.push_back(lid);
    }

    return layersIds;
}

4048 4049 4050 4051 4052 4053 4054 4055 4056 4057 4058 4059
std::vector<String> Net::getUnconnectedOutLayersNames() const
{
    std::vector<int> ids = getUnconnectedOutLayers();
    const size_t n = ids.size();
    std::vector<String> names(n);
    for (size_t i = 0; i < n; ++i)
    {
        names[i] = impl->layers[ids[i]].name;
    }
    return names;
}

4060
void Net::getLayersShapes(const ShapesVec& netInputShapes,
4061 4062 4063
                          std::vector<int>& layersIds,
                          std::vector<ShapesVec>& inLayersShapes,
                          std::vector<ShapesVec>& outLayersShapes) const
4064
{
4065 4066 4067
    layersIds.clear();
    inLayersShapes.clear();
    outLayersShapes.clear();
4068 4069 4070 4071 4072 4073 4074

    Impl::LayersShapesMap inOutShapes;
    impl->getLayersShapes(netInputShapes, inOutShapes);

    for(Impl::LayersShapesMap::const_iterator it = inOutShapes.begin();
        it != inOutShapes.end(); it++)
    {
4075 4076 4077
        layersIds.push_back(it->first);
        inLayersShapes.push_back(it->second.in);
        outLayersShapes.push_back(it->second.out);
4078 4079 4080 4081
    }
}

void Net::getLayersShapes(const MatShape& netInputShape,
4082 4083 4084
                          std::vector<int>& layerIds,
                          std::vector<ShapesVec>& inLayersShapes,
                          std::vector<ShapesVec>& outLayersShapes) const
4085 4086 4087 4088 4089 4090 4091
{
    getLayersShapes(ShapesVec(1, netInputShape),
                    layerIds, inLayersShapes, outLayersShapes);
}

void Net::getLayerShapes(const MatShape& netInputShape,
                         const int layerId,
4092 4093
                         ShapesVec& inLayerShapes,
                         ShapesVec& outLayerShapes) const
4094 4095 4096 4097 4098 4099 4100 4101
{
    getLayerShapes(ShapesVec(1, netInputShape),
                   layerId, inLayerShapes, outLayerShapes);

}

void Net::getLayerShapes(const ShapesVec& netInputShapes,
                    const int layerId,
4102 4103
                    ShapesVec& inLayerShapes,
                    ShapesVec& outLayerShapes) const
4104 4105 4106
{
    LayerShapes shapes;
    impl->getLayerShapes(netInputShapes, layerId, shapes);
4107 4108
    inLayerShapes = shapes.in;
    outLayerShapes = shapes.out;
4109 4110 4111 4112
}

int64 Net::getFLOPS(const std::vector<MatShape>& netInputShapes) const
{
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Alexander Alekhin 已提交
4113 4114
    CV_TRACE_FUNCTION();

4115 4116 4117
    int64 flops = 0;
    std::vector<int> ids;
    std::vector<std::vector<MatShape> > inShapes, outShapes;
4118
    getLayersShapes(netInputShapes, ids, inShapes, outShapes);
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    CV_Assert(inShapes.size() == outShapes.size());
    CV_Assert(inShapes.size() == ids.size());

    for(int i = 0; i < ids.size(); i++)
    {
        flops += impl->layers[ids[i]].getLayerInstance()->getFLOPS(inShapes[i],
                                                                   outShapes[i]);
    }

    return flops;
}

int64 Net::getFLOPS(const MatShape& netInputShape) const
{
    return getFLOPS(std::vector<MatShape>(1, netInputShape));
}

int64 Net::getFLOPS(const int layerId,
              const std::vector<MatShape>& netInputShapes) const
{
    Impl::MapIdToLayerData::iterator layer = impl->layers.find(layerId);
    CV_Assert(layer != impl->layers.end());

    LayerShapes shapes;
    impl->getLayerShapes(netInputShapes, layerId, shapes);

    return layer->second.getLayerInstance()->getFLOPS(shapes.in, shapes.out);
}

int64 Net::getFLOPS(const int layerId,
              const MatShape& netInputShape) const
{
    return getFLOPS(layerId, std::vector<MatShape>(1, netInputShape));
}

void Net::getLayerTypes(std::vector<String>& layersTypes) const
{
    layersTypes.clear();

    std::map<String, int> layers;
    for (Impl::MapIdToLayerData::iterator it = impl->layers.begin();
         it != impl->layers.end(); it++)
    {
        if (layers.find(it->second.type) == layers.end())
            layers[it->second.type] = 0;
        layers[it->second.type]++;
    }

    for (std::map<String, int>::iterator it = layers.begin();
         it != layers.end(); it++)
    {
        layersTypes.push_back(it->first);
    }
}

int Net::getLayersCount(const String& layerType) const
{
    int count = 0;
    for (Impl::MapIdToLayerData::iterator it = impl->layers.begin();
         it != impl->layers.end(); it++)
    {
        if (it->second.type == layerType)
            count++;
    }
    return count;
}

void Net::getMemoryConsumption(const int layerId,
                               const std::vector<MatShape>& netInputShapes,
                               size_t& weights, size_t& blobs) const
{
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Alexander Alekhin 已提交
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    CV_TRACE_FUNCTION();

4192 4193 4194 4195 4196 4197 4198 4199 4200 4201 4202
    Impl::MapIdToLayerData::iterator layer = impl->layers.find(layerId);
    CV_Assert(layer != impl->layers.end());

    weights = blobs = 0;

    for(int i = 0; i < layer->second.params.blobs.size(); i++)
    {
        const Mat& weightsBlob = layer->second.params.blobs[i];
        weights += weightsBlob.total()*weightsBlob.elemSize();
    }

4203 4204
    ShapesVec inLayerShapes, outLayerShapes;
    getLayerShapes(netInputShapes, layerId, inLayerShapes, outLayerShapes);
4205 4206 4207 4208 4209 4210 4211 4212 4213
    for(int i = 0; i < outLayerShapes.size(); i++)
    {
        blobs += total(outLayerShapes[i]) * sizeof(float);
    }
}

void Net::getMemoryConsumption(const std::vector<MatShape>& netInputShapes,
                               size_t& weights, size_t& blobs) const
{
A
Alexander Alekhin 已提交
4214 4215
    CV_TRACE_FUNCTION();

4216 4217 4218 4219 4220 4221 4222 4223 4224 4225 4226 4227 4228 4229 4230 4231 4232 4233 4234 4235 4236 4237 4238 4239 4240 4241 4242 4243 4244 4245 4246
    std::vector<int> layerIds;
    std::vector<size_t> w, b;
    getMemoryConsumption(netInputShapes, layerIds, w, b);

    weights = blobs = 0;
    for(int i = 0; i < layerIds.size(); i++)
    {
        weights += w[i];
        blobs += b[i];
    }
}

void Net::getMemoryConsumption(const int layerId,
                               const MatShape& netInputShape,
                               size_t& weights, size_t& blobs) const
{
    getMemoryConsumption(layerId, std::vector<MatShape>(1, netInputShape),
                         weights, blobs);
}

void Net::getMemoryConsumption(const MatShape& netInputShape,
                               size_t& weights, size_t& blobs) const
{
    getMemoryConsumption(std::vector<MatShape>(1, netInputShape),
                         weights, blobs);
}

void Net::getMemoryConsumption(const std::vector<MatShape>& netInputShapes,
                                  std::vector<int>& layerIds, std::vector<size_t>& weights,
                                  std::vector<size_t>& blobs) const
{
A
Alexander Alekhin 已提交
4247 4248
    CV_TRACE_FUNCTION();

4249 4250 4251 4252
    layerIds.clear();
    weights.clear();
    blobs.clear();

4253
    std::vector<std::vector<MatShape> > inLayerShapes, outLayerShapes;
4254

4255
    getLayersShapes(netInputShapes, layerIds, inLayerShapes, outLayerShapes);
4256 4257 4258 4259 4260 4261 4262 4263 4264 4265 4266 4267 4268 4269 4270 4271 4272 4273 4274 4275 4276 4277 4278 4279 4280 4281 4282 4283 4284 4285

    for(int i = 0; i < layerIds.size(); i++)
    {
        int w = 0, b = 0;
        Impl::MapIdToLayerData::iterator layer = impl->layers.find(layerIds[i]);
        CV_Assert(layer != impl->layers.end());

        for(int j = 0; j < layer->second.params.blobs.size(); j++)
        {
            const Mat& weightsBlob = layer->second.params.blobs[j];
            w += weightsBlob.total()*weightsBlob.elemSize();
        }

        for(int j = 0; j < outLayerShapes[i].size(); j++)
        {
            b += total(outLayerShapes[i][j]) * sizeof(float);
        }

        weights.push_back(w);
        blobs.push_back(b);
    }
}

void Net::getMemoryConsumption(const MatShape& netInputShape, std::vector<int>& layerIds,
                               std::vector<size_t>& weights, std::vector<size_t>& blobs) const
{
    getMemoryConsumption(std::vector<MatShape>(1, netInputShape), layerIds,
                         weights, blobs);
}

4286 4287 4288 4289 4290 4291 4292 4293 4294 4295
void Net::enableFusion(bool fusion)
{
    if( impl->fusion != fusion )
    {
        impl->fusion = fusion;
        impl->netWasAllocated = false;
        impl->clear();
    }
}

4296 4297
void Net::setHalideScheduler(const String& scheduler)
{
A
Alexander Alekhin 已提交
4298 4299 4300
    CV_TRACE_FUNCTION();
    CV_TRACE_ARG_VALUE(scheduler, "scheduler", scheduler.c_str());

4301 4302 4303
    impl->halideConfigFile = scheduler;
}

4304 4305 4306
int64 Net::getPerfProfile(std::vector<double>& timings)
{
    timings = std::vector<double>(impl->layersTimings.begin() + 1, impl->layersTimings.end());
4307
    int64 total = (int64)std::accumulate(timings.begin(), timings.end(), 0.0);
4308 4309 4310
    return total;
}

4311 4312
//////////////////////////////////////////////////////////////////////////

4313
Layer::Layer() { preferableTarget = DNN_TARGET_CPU; }
4314 4315 4316 4317

Layer::Layer(const LayerParams &params)
    : blobs(params.blobs), name(params.name), type(params.type)
{
4318
    preferableTarget = DNN_TARGET_CPU;
4319 4320 4321 4322 4323 4324 4325 4326 4327 4328 4329 4330 4331 4332
}

void Layer::setParamsFrom(const LayerParams &params)
{
    blobs = params.blobs;
    name = params.name;
    type = params.type;
}

int Layer::inputNameToIndex(String)
{
    return -1;
}

4333
int Layer::outputNameToIndex(const String&)
4334
{
4335
    return 0;
4336 4337 4338 4339
}

bool Layer::supportBackend(int backendId)
{
4340
    return backendId == DNN_BACKEND_OPENCV;
4341 4342 4343 4344 4345 4346 4347 4348 4349
}

Ptr<BackendNode> Layer::initHalide(const std::vector<Ptr<BackendWrapper> > &)
{
    CV_Error(Error::StsNotImplemented, "Halide pipeline of " + type +
                                       " layers is not defined.");
    return Ptr<BackendNode>();
}

4350
Ptr<BackendNode> Layer::initInfEngine(const std::vector<Ptr<BackendWrapper> > &)
4351 4352 4353 4354 4355 4356 4357
{
    CV_Error(Error::StsNotImplemented, "Inference Engine pipeline of " + type +
                                       " layers is not defined.");
    return Ptr<BackendNode>();
}

Ptr<BackendNode> Layer::initNgraph(const std::vector<Ptr<BackendWrapper> > & inputs, const std::vector<Ptr<BackendNode> >& nodes)
4358 4359 4360 4361 4362 4363
{
    CV_Error(Error::StsNotImplemented, "Inference Engine pipeline of " + type +
                                       " layers is not defined.");
    return Ptr<BackendNode>();
}

4364 4365 4366 4367
void Layer::applyHalideScheduler(Ptr<BackendNode>& node, const std::vector<Mat*> &inputs,
                                 const std::vector<Mat> &outputs, int targetId) const
{
#ifdef  HAVE_HALIDE
A
Alexander Alekhin 已提交
4368 4369
    CV_TRACE_FUNCTION();

4370 4371 4372 4373 4374 4375 4376 4377 4378 4379 4380 4381 4382 4383 4384 4385 4386 4387 4388 4389 4390 4391 4392 4393 4394 4395 4396 4397 4398 4399 4400 4401 4402 4403 4404 4405 4406 4407 4408 4409
    Halide::Var x("x"), y("y"), c("c"), n("n"), co("co"), ci("ci"),
                xo("xo"), xi("xi"), yo("yo"), yi("yi"), tile("tile");
    Halide::Func& top = node.dynamicCast<HalideBackendNode>()->funcs.back();

    int outW, outH, outC, outN;
    getCanonicalSize(outputs[0].size, &outW, &outH, &outC, &outN);

    if (targetId == DNN_TARGET_CPU)
    {
        if (outW == 1 && outH == 1)
        {
            if (outC + outN == 1)
                return;

            if (outC > 8)
              top.split(c, co, ci, 8)
                 .fuse(x, y, tile).fuse(co, tile, tile).fuse(n, tile, tile)
                 .parallel(tile)
                 .vectorize(ci, 8);
            else
              top.fuse(x, y, tile).fuse(c, tile, tile).fuse(n, tile, tile)
                 .parallel(tile);
        }
        else
        {
            if (outH > 2)
            {
                top.reorder(x, c, y)
                   .split(y, yo, yi, 2)
                   .fuse(yo, n, tile)
                   .parallel(tile)
                   .unroll(yi)
                   .vectorize(x, outW >= 16 ? 16 : outW);
            }
        }
    }
    else if (targetId == DNN_TARGET_OPENCL)
    {
        if (outW == 1 && outH == 1)
        {
D
Dmitry Kurtaev 已提交
4410
            int c_split = outC > 8 ? (outC > 16 ? 8 : 4) : outC;
4411 4412 4413 4414 4415 4416 4417 4418 4419
            top.split(c, co, ci, c_split)
               .fuse(x, y, tile).fuse(co, tile, tile).fuse(n, tile, tile)
               .gpu_blocks(tile)
               .gpu_threads(ci);
        }
        else
        {
            int x_split = outW > 8 ? (outW >= 32 ? 16 : 8) : outW;
            int y_split = outH > 8 ? (outH >= 32 ? 16 : 8) : outH;
D
Dmitry Kurtaev 已提交
4420 4421
            // Supported vectorization widths: 2, 3, 4, 8, 16
            int c_split = outC > 8 ? (outC > 16 ? 8 : 4) : std::min(4, outC);
4422 4423 4424 4425 4426 4427 4428 4429 4430 4431 4432 4433 4434 4435 4436 4437 4438 4439
            top.split(x, xo, xi, x_split).split(y, yo, yi, y_split)
               .split(c, co, ci, c_split)
               .gpu_blocks(xo, yo, co)
               .gpu_threads(xi, yi)
               .reorder(xi, yi, ci, xo, yo, co)
               .vectorize(ci);
        }
    }
    else
        CV_Error(Error::StsNotImplemented, "Unknown target identifier");
#endif  // HAVE_HALIDE
}

Ptr<BackendNode> Layer::tryAttach(const Ptr<BackendNode>& node)
{
    return Ptr<BackendNode>();
}

4440
bool Layer::setActivation(const Ptr<ActivationLayer>&) { return false; }
4441 4442 4443 4444 4445 4446 4447
bool Layer::tryFuse(Ptr<Layer>&) { return false; }
void Layer::getScaleShift(Mat& scale, Mat& shift) const
{
    scale = Mat();
    shift = Mat();
}

4448 4449 4450 4451
void Layer::unsetAttached()
{
    setActivation(Ptr<ActivationLayer>());
}
4452

4453 4454 4455 4456 4457 4458 4459 4460 4461 4462
template <typename T>
static void vecToPVec(const std::vector<T> &v, std::vector<T*> &pv)
{
    pv.resize(v.size());
    for (size_t i = 0; i < v.size(); i++)
        pv[i] = const_cast<T*>(&v[i]);
}

void Layer::finalize(const std::vector<Mat> &inputs, std::vector<Mat> &outputs)
{
A
Alexander Alekhin 已提交
4463
    CV_TRACE_FUNCTION();
4464
    this->finalize((InputArrayOfArrays)inputs, (OutputArrayOfArrays)outputs);
4465 4466 4467 4468
}

void Layer::finalize(const std::vector<Mat*> &input, std::vector<Mat> &output)
{
H
Hamdi Sahloul 已提交
4469
    CV_UNUSED(input);CV_UNUSED(output);
4470 4471
}

4472 4473 4474 4475 4476 4477 4478 4479 4480 4481 4482 4483
void Layer::finalize(InputArrayOfArrays inputs_arr, OutputArrayOfArrays outputs_arr)
{
    CV_TRACE_FUNCTION();
    std::vector<Mat> inputs, outputs;
    inputs_arr.getMatVector(inputs);
    outputs_arr.getMatVector(outputs);

    std::vector<Mat*> inputsp;
    vecToPVec(inputs, inputsp);
    this->finalize(inputsp, outputs);
}

4484 4485
std::vector<Mat> Layer::finalize(const std::vector<Mat> &inputs)
{
A
Alexander Alekhin 已提交
4486 4487
    CV_TRACE_FUNCTION();

4488 4489 4490 4491 4492
    std::vector<Mat> outputs;
    this->finalize(inputs, outputs);
    return outputs;
}

4493 4494 4495 4496 4497 4498
void Layer::forward(std::vector<Mat*> &input, std::vector<Mat> &output, std::vector<Mat> &internals)
{
    // We kept this method for compatibility. DNN calls it now only to support users' implementations.
}

void Layer::forward(InputArrayOfArrays inputs_arr, OutputArrayOfArrays outputs_arr, OutputArrayOfArrays internals_arr)
4499 4500 4501 4502
{
    CV_TRACE_FUNCTION();
    CV_TRACE_ARG_VALUE(name, "name", name.c_str());

4503
    Layer::forward_fallback(inputs_arr, outputs_arr, internals_arr);
4504 4505
}

L
Li Peng 已提交
4506
void Layer::forward_fallback(InputArrayOfArrays inputs_arr, OutputArrayOfArrays outputs_arr, OutputArrayOfArrays internals_arr)
4507
{
A
Alexander Alekhin 已提交
4508
    CV_TRACE_FUNCTION();
L
Li Peng 已提交
4509
    CV_TRACE_ARG_VALUE(name, "name", name.c_str());
A
Alexander Alekhin 已提交
4510

L
Li Peng 已提交
4511 4512 4513 4514 4515 4516 4517 4518 4519 4520 4521 4522 4523 4524 4525 4526 4527 4528 4529 4530 4531 4532 4533 4534 4535 4536 4537 4538 4539 4540 4541 4542 4543 4544 4545 4546
    if (preferableTarget == DNN_TARGET_OPENCL_FP16 && inputs_arr.depth() == CV_16S)
    {
        std::vector<UMat> inputs;
        std::vector<UMat> outputs;
        std::vector<UMat> internals;

        std::vector<UMat> orig_inputs;
        std::vector<UMat> orig_outputs;
        std::vector<UMat> orig_internals;

        inputs_arr.getUMatVector(orig_inputs);
        outputs_arr.getUMatVector(orig_outputs);
        internals_arr.getUMatVector(orig_internals);

        inputs.resize(orig_inputs.size());
        for (size_t i = 0; i < orig_inputs.size(); i++)
            convertFp16(orig_inputs[i], inputs[i]);

        outputs.resize(orig_outputs.size());
        for (size_t i = 0; i < orig_outputs.size(); i++)
            outputs[i].create(shape(orig_outputs[i]), CV_32F);

        internals.resize(orig_internals.size());
        for (size_t i = 0; i < orig_internals.size(); i++)
            internals[i].create(shape(orig_internals[i]), CV_32F);

        forward(inputs, outputs, internals);

        for (size_t i = 0; i < outputs.size(); i++)
            convertFp16(outputs[i], orig_outputs[i]);

        // sync results back
        outputs_arr.assign(orig_outputs);
        internals_arr.assign(orig_internals);
        return;
    }
L
Li Peng 已提交
4547 4548 4549 4550 4551 4552 4553 4554 4555 4556 4557 4558 4559
    std::vector<Mat> inpvec;
    std::vector<Mat> outputs;
    std::vector<Mat> internals;

    inputs_arr.getMatVector(inpvec);
    outputs_arr.getMatVector(outputs);
    internals_arr.getMatVector(internals);

    std::vector<Mat*> inputs(inpvec.size());
    for (int i = 0; i < inpvec.size(); i++)
        inputs[i] = &inpvec[i];

    this->forward(inputs, outputs, internals);
4560 4561 4562 4563

    // sync results back
    outputs_arr.assign(outputs);
    internals_arr.assign(internals);
4564 4565 4566 4567
}

void Layer::run(const std::vector<Mat> &inputs, std::vector<Mat> &outputs, std::vector<Mat> &internals)
{
A
Alexander Alekhin 已提交
4568 4569
    CV_TRACE_FUNCTION();

4570 4571
    this->finalize(inputs, outputs);
    this->forward(inputs, outputs, internals);
4572 4573 4574 4575 4576 4577 4578 4579 4580 4581 4582 4583 4584 4585 4586 4587
}

Layer::~Layer() {}

bool Layer::getMemoryShapes(const std::vector<MatShape> &inputs,
                            const int requiredOutputs,
                            std::vector<MatShape> &outputs,
                            std::vector<MatShape> &internals) const
{
    CV_Assert(inputs.size());
    outputs.assign(std::max(requiredOutputs, (int)inputs.size()), inputs[0]);
    return false;
}

//////////////////////////////////////////////////////////////////////////

4588
static Mutex& getLayerFactoryMutex()
4589
{
4590 4591 4592 4593 4594 4595 4596 4597 4598 4599
    static Mutex* volatile instance = NULL;
    if (instance == NULL)
    {
        cv::AutoLock lock(getInitializationMutex());
        if (instance == NULL)
            instance = new Mutex();
    }
    return *instance;
}

4600
typedef std::map<String, std::vector<LayerFactory::Constructor> > LayerFactory_Impl;
4601 4602 4603 4604 4605 4606

static LayerFactory_Impl& getLayerFactoryImpl_()
{
    static LayerFactory_Impl impl;
    return impl;
}
4607

4608
static LayerFactory_Impl& getLayerFactoryImpl()
4609
{
4610 4611 4612 4613 4614 4615 4616 4617 4618 4619 4620
    static LayerFactory_Impl* volatile instance = NULL;
    if (instance == NULL)
    {
        cv::AutoLock lock(getLayerFactoryMutex());
        if (instance == NULL)
        {
            instance = &getLayerFactoryImpl_();
            initializeLayerFactory();
        }
    }
    return *instance;
4621 4622
}

4623
void LayerFactory::registerLayer(const String &type, Constructor constructor)
4624
{
A
Alexander Alekhin 已提交
4625 4626 4627
    CV_TRACE_FUNCTION();
    CV_TRACE_ARG_VALUE(type, "type", type.c_str());

4628
    cv::AutoLock lock(getLayerFactoryMutex());
A
Alexander Alekhin 已提交
4629
    String type_ = type.toLowerCase();
4630
    LayerFactory_Impl::iterator it = getLayerFactoryImpl().find(type_);
4631

4632
    if (it != getLayerFactoryImpl().end())
4633
    {
4634 4635 4636
        if (it->second.back() == constructor)
            CV_Error(cv::Error::StsBadArg, "Layer \"" + type_ + "\" already was registered");
        it->second.push_back(constructor);
4637
    }
4638
    getLayerFactoryImpl().insert(std::make_pair(type_, std::vector<Constructor>(1, constructor)));
4639 4640
}

A
Alexander Alekhin 已提交
4641
void LayerFactory::unregisterLayer(const String &type)
4642
{
A
Alexander Alekhin 已提交
4643 4644 4645
    CV_TRACE_FUNCTION();
    CV_TRACE_ARG_VALUE(type, "type", type.c_str());

4646
    cv::AutoLock lock(getLayerFactoryMutex());
A
Alexander Alekhin 已提交
4647
    String type_ = type.toLowerCase();
4648 4649 4650 4651 4652 4653 4654 4655 4656

    LayerFactory_Impl::iterator it = getLayerFactoryImpl().find(type_);
    if (it != getLayerFactoryImpl().end())
    {
        if (it->second.size() > 1)
            it->second.pop_back();
        else
            getLayerFactoryImpl().erase(it);
    }
4657 4658
}

A
Alexander Alekhin 已提交
4659
Ptr<Layer> LayerFactory::createLayerInstance(const String &type, LayerParams& params)
4660
{
A
Alexander Alekhin 已提交
4661 4662 4663
    CV_TRACE_FUNCTION();
    CV_TRACE_ARG_VALUE(type, "type", type.c_str());

4664
    cv::AutoLock lock(getLayerFactoryMutex());
A
Alexander Alekhin 已提交
4665 4666
    String type_ = type.toLowerCase();
    LayerFactory_Impl::const_iterator it = getLayerFactoryImpl().find(type_);
4667

4668
    if (it != getLayerFactoryImpl().end())
4669
    {
4670 4671
        CV_Assert(!it->second.empty());
        return it->second.back()(params);
4672 4673 4674 4675 4676 4677 4678 4679 4680 4681 4682 4683 4684 4685 4686 4687 4688 4689 4690 4691 4692 4693 4694 4695 4696 4697 4698 4699
    }
    else
    {
        return Ptr<Layer>(); //NULL
    }
}

BackendNode::BackendNode(int backendId) : backendId(backendId) {}

BackendNode::~BackendNode() {};

BackendWrapper::BackendWrapper(int backendId, int targetId)
    : backendId(backendId), targetId(targetId) {}

BackendWrapper::BackendWrapper(int targetId, const cv::Mat& m)
{
    CV_Error(Error::StsNotImplemented,
             "Constructor of backend wrapper must be implemented");
}

BackendWrapper::BackendWrapper(const Ptr<BackendWrapper>& base, const MatShape& shape)
{
    CV_Error(Error::StsNotImplemented,
             "Constructor of backend wrapper must be implemented");
}

BackendWrapper::~BackendWrapper() {}

4700
Net readNet(const String& _model, const String& _config, const String& _framework)
4701
{
4702 4703 4704
    String framework = _framework.toLowerCase();
    String model = _model;
    String config = _config;
4705 4706 4707 4708 4709 4710 4711 4712 4713 4714 4715 4716 4717 4718 4719 4720 4721 4722 4723 4724 4725 4726 4727 4728 4729 4730 4731 4732
    const std::string modelExt = model.substr(model.rfind('.') + 1);
    const std::string configExt = config.substr(config.rfind('.') + 1);
    if (framework == "caffe" || modelExt == "caffemodel" || configExt == "caffemodel" ||
                                modelExt == "prototxt" || configExt == "prototxt")
    {
        if (modelExt == "prototxt" || configExt == "caffemodel")
            std::swap(model, config);
        return readNetFromCaffe(config, model);
    }
    if (framework == "tensorflow" || modelExt == "pb" || configExt == "pb" ||
                                     modelExt == "pbtxt" || configExt == "pbtxt")
    {
        if (modelExt == "pbtxt" || configExt == "pb")
            std::swap(model, config);
        return readNetFromTensorflow(model, config);
    }
    if (framework == "torch" || modelExt == "t7" || modelExt == "net" ||
                                configExt == "t7" || configExt == "net")
    {
        return readNetFromTorch(model.empty() ? config : model);
    }
    if (framework == "darknet" || modelExt == "weights" || configExt == "weights" ||
                                  modelExt == "cfg" || configExt == "cfg")
    {
        if (modelExt == "cfg" || configExt == "weights")
            std::swap(model, config);
        return readNetFromDarknet(config, model);
    }
4733 4734 4735 4736 4737 4738 4739
    if (framework == "dldt" || modelExt == "bin" || configExt == "bin" ||
                               modelExt == "xml" || configExt == "xml")
    {
        if (modelExt == "xml" || configExt == "bin")
            std::swap(model, config);
        return readNetFromModelOptimizer(config, model);
    }
4740 4741 4742 4743
    if (framework == "onnx" || modelExt == "onnx")
    {
        return readNetFromONNX(model);
    }
4744
    CV_Error(Error::StsError, "Cannot determine an origin framework of files: " +
4745
                                      model + (config.empty() ? "" : ", " + config));
4746 4747
}

4748 4749
Net readNet(const String& _framework, const std::vector<uchar>& bufferModel,
            const std::vector<uchar>& bufferConfig)
4750 4751 4752 4753 4754 4755 4756 4757 4758 4759 4760
{
    String framework = _framework.toLowerCase();
    if (framework == "caffe")
        return readNetFromCaffe(bufferConfig, bufferModel);
    else if (framework == "tensorflow")
        return readNetFromTensorflow(bufferModel, bufferConfig);
    else if (framework == "darknet")
        return readNetFromDarknet(bufferConfig, bufferModel);
    else if (framework == "torch")
        CV_Error(Error::StsNotImplemented, "Reading Torch models from buffers");
    else if (framework == "dldt")
4761
        return readNetFromModelOptimizer(bufferConfig, bufferModel);
4762 4763 4764
    CV_Error(Error::StsError, "Cannot determine an origin framework with a name " + framework);
}

4765 4766 4767 4768 4769
Net readNetFromModelOptimizer(const String &xml, const String &bin)
{
    return Net::readFromModelOptimizer(xml, bin);
}

4770 4771 4772 4773 4774 4775 4776 4777 4778 4779 4780 4781 4782 4783 4784 4785
Net readNetFromModelOptimizer(const std::vector<uchar>& bufferCfg, const std::vector<uchar>& bufferModel)
{
    return Net::readFromModelOptimizer(bufferCfg, bufferModel);
}

Net readNetFromModelOptimizer(
        const uchar* bufferModelConfigPtr, size_t bufferModelConfigSize,
        const uchar* bufferWeightsPtr, size_t bufferWeightsSize
)
{
    return Net::readFromModelOptimizer(
        bufferModelConfigPtr, bufferModelConfigSize,
        bufferWeightsPtr, bufferWeightsSize
    );
}

4786 4787
CV__DNN_EXPERIMENTAL_NS_END
}} // namespace