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    README.md

    Action Recognition with Deep Learning

    Build Status

    This branch hosts the code for the technical report "Towards Good Practices for Very Deep Two-stream ConvNets", and more.

    Updates

    • Dec, 2016
      • Major updates of the codebase. New features include memory optimization and dilated convolution.
    • Aug 23, 2016
    • Aug 1, 2016
      • New working example: "Actionness Estimation Using Hybrid FCNs" on CVPR 2016.
    • Jul 16, 2016
      • New working example: "Real-time Action Recognition with Enhanced Motion Vector CNNs" on CVPR 2016.
    • Apr 27, 2016
      • cuDNN v5 support, featuring the super fast WINOGrad Convolution and cuDNN implementation of BatchNormalization.
    • Dec 23, 2015
      • Refactored cudnn wrapper to control overall memory consumption. Will automatically find the best algorithm combination under memory constraint.
    • Dec 17, 2015
      • cuDNN v4 support: faster convolution and batch normalization (around 20% performance gain).
    • Nov 22, 2015
      • Now python layer can expose a prefetch() method, which will be run in parallel with network processing.

    Full Change Log

    Features

    • VideoDataLayer for inputing video data.
    • Training on optical flow data.
    • Data augmentation with fixed corner cropping and multi-scale cropping.
    • Parallel training with multiple GPUs.
    • Newest cuDNN integration.
    • Slim memory footprints in both training and testing,

    Usage

    See more in Wiki.

    Generally it's the same as the original caffe. Please see the original README. Please see following instruction for accessing features above. More detailed documentation is on the way.

    • Video/optic flow data
      • First use the optical flow extraction tool to convert videos to RGB images and opitcal flow images.
      • A new data layer called VideoDataLayer has been added to support multi-frame input. See the UCF101 sample for how to use it.
      • Note: The VideoDataLayer can only input the optical-flow images generated by the tool listed above.
    • Fixed corner cropping augmentation
      • Set fix_crop to true in tranform_param of network's protocol buffer definition.
    • "Multi-scale" cropping augmentation
      • Set multi_scale to true in transform_param
      • In transform_param, specify scale_ratios as a list of floats smaller than one, default is [1, .875, .75, .65]
      • In transform_param, specify max_distort to an integer, which will limit the aspect ratio distortion, default to 1
    • cuDNN v5
    • The cuDNN v5 wrapper has optimized engines for convolution and batch normalization.
    • The solver protobuf config has a parameter richness which specifies the total GPU memory in MBs available to the cudnn convolution engine as workspaces. Default richness is 300 (300MB). Using this parameter you can control the GPU memory consumption of training, the system will find the best setup under the memory limit for you.
    • Training with multiple GPUs
      • Requires OpenMPI > 1.7.4 (Why?). Remember to compile your OpenMPI with option --with-cuda
      • Specify list of GPU IDs to be used for training, in the solver protocol buffer definition, like device_id: [0,1,2,3]
      • Compile using cmake and use mpirun to launch caffe executable, like
    mkdir build && cd build
    cmake .. -DUSE_MPI=ON
    make && make install
    mpirun -np 4 ./install/bin/caffe train --solver=<Your Solver File> [--weights=<Pretrained caffemodel>]

    Note: actual batch_size will be num_device times batch_size specified in network's prototxt.

    • Runtime memory optimization
      • Memory optimization drastically reduces memory usage (half for training and almost all for testing) by safely sharing underlying storage of a series of blobs.
      • For usage and the mechanism behind the scene, see the Wiki Page

    Working Examples

    Extension

    Currently all existing data layers sub-classed from BasePrefetchingDataLayer support parallel training. If you have newly added layer which is also sub-classed from BasePrefetchingDataLayer, simply implement the virtual method

    inline virtual void advance_cursor();

    Its function should be forwarding the "data cursor" in your data layer for one step. Then your new layer will be able to provide support for parallel training.

    Questions

    Contact

    Citation

    You are encouraged to also cite one of the following papers if you find this repo helpful

    @inproceedings{TSN2016ECCV,
      author    = {Limin Wang and
                   Yuanjun Xiong and
                   Zhe Wang and
                   Yu Qiao and
                   Dahua Lin and
                   Xiaoou Tang and
                   Luc {Val Gool}},
      title     = {Temporal Segment Networks: Towards Good Practices for Deep Action Recognition},
      booktitle   = {ECCV},
      year      = {2016},
    }
    
    @article{MultiGPUCaffe2015,
      author    = {Limin Wang and
                   Yuanjun Xiong and
                   Zhe Wang and
                   Yu Qiao},
      title     = {Towards Good Practices for Very Deep Two-Stream ConvNets},
      journal   = {CoRR},
      volume    = {abs/1507.02159},
      year      = {2015},
      url       = {http://arxiv.org/abs/1507.02159},
    }

    Following is the original README of Caffe.

    Caffe

    Caffe is a deep learning framework made with expression, speed, and modularity in mind. It is developed by the Berkeley Vision and Learning Center (BVLC) and community contributors.

    Check out the project site for all the details like

    and step-by-step examples.

    Join the chat at https://gitter.im/BVLC/caffe

    Please join the caffe-users group or gitter chat to ask questions and talk about methods and models. Framework development discussions and thorough bug reports are collected on Issues.

    Happy brewing!

    License and Citation

    Caffe is released under the BSD 2-Clause license. The BVLC reference models are released for unrestricted use.

    Please cite Caffe in your publications if it helps your research:

    @article{jia2014caffe,
      Author = {Jia, Yangqing and Shelhamer, Evan and Donahue, Jeff and Karayev, Sergey and Long, Jonathan and Girshick, Ross and Guadarrama, Sergio and Darrell, Trevor},
      Journal = {arXiv preprint arXiv:1408.5093},
      Title = {Caffe: Convolutional Architecture for Fast Feature Embedding},
      Year = {2014}
    }

    项目简介

    🚀 Github 镜像仓库 🚀

    源项目地址

    https://github.com/yjxiong/caffe

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    开发语言

    • C++ 79.9 %
    • Python 9.2 %
    • Cuda 5.9 %
    • CMake 2.9 %
    • MATLAB 1.1 %