# PaddleClas wheel package ## 1. Installation * installing from pypi ```bash pip3 install paddleclas==2.2.1 ``` * build own whl package and install ```bash python3 setup.py bdist_wheel pip3 install dist/* ``` ## 2. Quick Start * Using the `ResNet50` model provided by PaddleClas, the following image(`'docs/images/whl/demo.jpg'`) as an example.
* Python ```python from paddleclas import PaddleClas clas = PaddleClas(model_name='ResNet50') infer_imgs='docs/images/whl/demo.jpg' result=clas.predict(infer_imgs) print(next(result)) ``` **Note**: `PaddleClas.predict()` is a `generator`. Therefore you need to use `next()` or `for` call it iteratively. It will perform a prediction by `batch_size` and return the prediction result(s) when called. Examples of returned results are as follows: ``` >>> result [{'class_ids': [8, 7, 136, 80, 84], 'scores': [0.79368, 0.16329, 0.01853, 0.00959, 0.00239], 'label_names': ['hen', 'cock', 'European gallinule, Porphyrio porphyrio', 'black grouse', 'peacock']}] ``` * CLI ```bash paddleclas --model_name=ResNet50 --infer_imgs="docs/images/whl/demo.jpg" ``` ``` >>> result filename: docs/images/whl/demo.jpg, top-5, class_ids: [8, 7, 136, 80, 84], scores: [0.79368, 0.16329, 0.01853, 0.00959, 0.00239], label_names: ['hen', 'cock', 'European gallinule, Porphyrio porphyrio', 'black grouse', 'peacock'] Predict complete! ``` ## 3. Definition of Parameters The following parameters can be specified in Command Line or used as parameters of the constructor when instantiating the PaddleClas object in Python. * model_name(str): If using inference model based on ImageNet1k provided by Paddle, please specify the model's name by the parameter. * inference_model_dir(str): Local model files directory, which is valid when `model_name` is not specified. The directory should contain `inference.pdmodel` and `inference.pdiparams`. * infer_imgs(str): The path of image to be predicted, or the directory containing the image files, or the URL of the image from Internet. * use_gpu(bool): Whether to use GPU or not, default by `True`. * gpu_mem(int): GPU memory usages,default by `8000`。 * use_tensorrt(bool): Whether to open TensorRT or not. Using it can greatly promote predict preformance, default by `False`. * enable_mkldnn(bool): Whether enable MKLDNN or not, default `False`. * cpu_num_threads(int): Assign number of cpu threads, valid when `--use_gpu` is `False` and `--enable_mkldnn` is `True`, default by `10`. * batch_size(int): Batch size, default by `1`. * resize_short(int): Resize the minima between height and width into `resize_short`, default by `256`. * crop_size(int): Center crop image to `crop_size`, default by `224`. * topk(int): Print (return) the `topk` prediction results, default by `5`. * class_id_map_file(str): The mapping file between class ID and label, default by `ImageNet1K` dataset's mapping. * pre_label_image(bool): whether prelabel or not, default=False. * save_dir(str): The directory to save the prediction results that can be used as pre-label, default by `None`, that is, not to save. **Note**: If you want to use `Transformer series models`, such as `DeiT_***_384`, `ViT_***_384`, etc., please pay attention to the input size of model, and need to set `resize_short=384`, `resize=384`. The following is a demo. * CLI: ```bash from paddleclas import PaddleClas, get_default_confg paddleclas --model_name=ViT_base_patch16_384 --infer_imgs='docs/images/whl/demo.jpg' --resize_short=384 --crop_size=384 ``` * Python: ```python from paddleclas import PaddleClas clas = PaddleClas(model_name='ViT_base_patch16_384', resize_short=384, crop_size=384) ``` ## 4. Usage PaddleClas provides two ways to use: 1. Python interative programming; 2. Bash command line programming. ### 4.1 View help information * CLI ```bash paddleclas -h ``` ### 4.2 Prediction using inference model provide by PaddleClas You can use the inference model provided by PaddleClas to predict, and only need to specify `model_name`. In this case, PaddleClas will automatically download files of specified model and save them in the directory `~/.paddleclas/`. * Python ```python from paddleclas import PaddleClas clas = PaddleClas(model_name='ResNet50') infer_imgs = 'docs/images/whl/demo.jpg' result=clas.predict(infer_imgs) print(next(result)) ``` * CLI ```bash paddleclas --model_name='ResNet50' --infer_imgs='docs/images/whl/demo.jpg' ``` ### 4.3 Prediction using local model files You can use the local model files trained by yourself to predict, and only need to specify `inference_model_dir`. Note that the directory must contain `inference.pdmodel` and `inference.pdiparams`. * Python ```python from paddleclas import PaddleClas clas = PaddleClas(inference_model_dir='./inference/') infer_imgs = 'docs/images/whl/demo.jpg' result=clas.predict(infer_imgs) print(next(result)) ``` * CLI ```bash paddleclas --inference_model_dir='./inference/' --infer_imgs='docs/images/whl/demo.jpg' ``` ### 4.4 Prediction by batch You can predict by batch, only need to specify `batch_size` when `infer_imgs` is direcotry contain image files. * Python ```python from paddleclas import PaddleClas clas = PaddleClas(model_name='ResNet50', batch_size=2) infer_imgs = 'docs/images/' result=clas.predict(infer_imgs) for r in result: print(r) ``` * CLI ```bash paddleclas --model_name='ResNet50' --infer_imgs='docs/images/' --batch_size 2 ``` ### 4.5 Prediction of Internet image You can predict the Internet image, only need to specify URL of Internet image by `infer_imgs`. In this case, the image file will be downloaded and saved in the directory `~/.paddleclas/images/`. * Python ```python from paddleclas import PaddleClas clas = PaddleClas(model_name='ResNet50') infer_imgs = 'https://raw.githubusercontent.com/paddlepaddle/paddleclas/release/2.2/docs/images/whl/demo.jpg' result=clas.predict(infer_imgs) print(next(result)) ``` * CLI ```bash paddleclas --model_name='ResNet50' --infer_imgs='https://raw.githubusercontent.com/paddlepaddle/paddleclas/release/2.2/docs/images/whl/demo.jpg' ``` ### 4.6 Prediction of NumPy.array format image In Python code, you can predict the NumPy.array format image, only need to use the `infer_imgs` to transfer variable of image data. Note that the image data must be 3 channels. * python ```python import cv2 from paddleclas import PaddleClas clas = PaddleClas(model_name='ResNet50') infer_imgs = cv2.imread("docs/images/whl/demo.jpg") result=clas.predict(infer_imgs) print(next(result)) ``` ### 4.7 Save the prediction result(s) You can save the prediction result(s) as pre-label, only need to use `pre_label_out_dir` to specify the directory to save. * python ```python from paddleclas import PaddleClas clas = PaddleClas(model_name='ResNet50', save_dir='./output_pre_label/') infer_imgs = 'docs/images/whl/' # it can be infer_imgs folder path which contains all of images you want to predict. result=clas.predict(infer_imgs) print(next(result)) ``` * CLI ```bash paddleclas --model_name='ResNet50' --infer_imgs='docs/images/whl/' --save_dir='./output_pre_label/' ``` ### 4.8 Specify the mapping between class id and label name You can specify the mapping between class id and label name, only need to use `class_id_map_file` to specify the mapping file. PaddleClas uses ImageNet1K's mapping by default. The content format of mapping file shall be: ``` class_idclass_name<\n> ``` For example: ``` 0 tench, Tinca tinca 1 goldfish, Carassius auratus 2 great white shark, white shark, man-eater, man-eating shark, Carcharodon carcharias ...... ``` * Python ```python from paddleclas import PaddleClas clas = PaddleClas(model_name='ResNet50', class_id_map_file='./ppcls/utils/imagenet1k_label_list.txt') infer_imgs = 'docs/images/whl/demo.jpg' result=clas.predict(infer_imgs) print(next(result)) ``` * CLI ```bash paddleclas --model_name='ResNet50' --infer_imgs='docs/images/whl/demo.jpg' --class_id_map_file='./ppcls/utils/imagenet1k_label_list.txt' ```