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			78 lines
		
	
	
		
			3.3 KiB
		
	
	
	
		
			Markdown
		
	
	
	
	
	
| English | [简体中文](README_CN.md)
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| # ResNet C++ Deployment Example
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| 
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| This directory provides examples that `infer.cc` fast finishes the deployment of ResNet models on CPU/GPU and GPU accelerated by TensorRT. 
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| 
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| Before deployment, two steps require confirmation.
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| 
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| - 1. Software and hardware should meet the requirements. Please refer to [FastDeploy Environment Requirements](../../../../../docs/en/build_and_install/download_prebuilt_libraries.md).  
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| - 2. Download the precompiled deployment library and samples code according to your development environment. Refer to [FastDeploy Precompiled Library](../../../../../docs/en/build_and_install/download_prebuilt_libraries.md).
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| 
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| Taking ResNet50 inference on Linux as an example, the compilation test can be completed by executing the following command in this directory. FastDeploy version 0.7.0 or above (x.x.x>=0.7.0)  is required to support this model.
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| 
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| ```bash
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| mkdir build
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| cd build
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| # Download the FastDeploy precompiled library. Users can choose your appropriate version in the `FastDeploy Precompiled Library` mentioned above 
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| wget https://bj.bcebos.com/fastdeploy/release/cpp/fastdeploy-linux-x64-x.x.x.tgz
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| tar xvf fastdeploy-linux-x64-x.x.x.tgz
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| cmake .. -DFASTDEPLOY_INSTALL_DIR=${PWD}/fastdeploy-linux-x64-x.x.x
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| make -j
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| 
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| # Download the ResNet50 model file and test images 
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| wget https://bj.bcebos.com/paddlehub/fastdeploy/resnet50.onnx
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| wget https://gitee.com/paddlepaddle/PaddleClas/raw/release/2.4/deploy/images/ImageNet/ILSVRC2012_val_00000010.jpeg
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| 
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| 
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| # CPU inference
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| ./infer_demo resnet50.onnx ILSVRC2012_val_00000010.jpeg 0
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| # GPU inference
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| ./infer_demo resnet50.onnx ILSVRC2012_val_00000010.jpeg 1
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| # TensorRT Inference on GPU
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| ./infer_demo resnet50.onnx ILSVRC2012_val_00000010.jpeg 2
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| ```
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| 
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| The above command works for Linux or MacOS. Refer to: 
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| - [How to use FastDeploy C++ SDK in Windows](../../../../../docs/en/faq/use_sdk_on_windows.md)  for SDK use-pattern in Windows
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| 
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| ## ResNet C++ Interface 
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| 
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| ### ResNet Class 
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| 
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| ```c++
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| 
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| fastdeploy::vision::classification::ResNet(
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|         const std::string& model_file,
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|         const std::string& params_file = "",
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|         const RuntimeOption& custom_option = RuntimeOption(),
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|         const ModelFormat& model_format = ModelFormat::ONNX)
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| ```
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| 
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| 
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| **Parameter**
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| 
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| > * **model_file**(str): Model file path 
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| > * **params_file**(str): Parameter file path 
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| > * **runtime_option**(RuntimeOption): Backend inference configuration. None by default. (use the default configuration)
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| > * **model_format**(ModelFormat): Model format. ONNX format by default
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| 
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| #### Predict Function
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| 
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| > ```c++
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| > ResNet::Predict(cv::Mat* im, ClassifyResult* result, int topk = 1)
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| > ```
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| >
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| > Model prediction interface. Input images and output results directly.
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| >
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| > **Parameter**
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| >
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| > > * **im**: Input images in HWC or BGR format
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| > > * **result**: The classification result, including label_id, and the corresponding confidence. Refer to [Visual Model Prediction Results](../../../../../docs/api/vision_results/)  for the description of ClassifyResult
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| > > * **topk**(int): Return the topk classification results with the highest prediction probability. Default 1
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| 
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| 
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| - [Model Description](../../)
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| - [Python Deployment](../python)
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| - [Vision Model prediction results](../../../../../docs/api/vision_results/)
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| - [How to switch the model inference backend engine](../../../../../docs/en/faq/how_to_change_backend.md)
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