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#include "inference.h"
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#include <regex>
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#define benchmark
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#define min(a,b) (((a) < (b)) ? (a) : (b))
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YOLO_V8::YOLO_V8() {
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}
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YOLO_V8::~YOLO_V8() {
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delete session;
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}
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#ifdef USE_CUDA
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namespace Ort
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{
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template<>
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struct TypeToTensorType<half> { static constexpr ONNXTensorElementDataType type = ONNX_TENSOR_ELEMENT_DATA_TYPE_FLOAT16; };
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}
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#endif
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template<typename T>
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char* BlobFromImage(cv::Mat& iImg, T& iBlob) {
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int channels = iImg.channels();
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int imgHeight = iImg.rows;
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int imgWidth = iImg.cols;
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for (int c = 0; c < channels; c++)
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{
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for (int h = 0; h < imgHeight; h++)
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{
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for (int w = 0; w < imgWidth; w++)
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{
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iBlob[c * imgWidth * imgHeight + h * imgWidth + w] = typename std::remove_pointer<T>::type(
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(iImg.at<cv::Vec3b>(h, w)[c]) / 255.0f);
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}
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}
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}
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return RET_OK;
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}
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char* YOLO_V8::PreProcess(cv::Mat& iImg, std::vector<int> iImgSize, cv::Mat& oImg)
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{
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if (iImg.channels() == 3)
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{
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oImg = iImg.clone();
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cv::cvtColor(oImg, oImg, cv::COLOR_BGR2RGB);
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}
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else
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{
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cv::cvtColor(iImg, oImg, cv::COLOR_GRAY2RGB);
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}
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switch (modelType)
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{
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case YOLO_DETECT_V8:
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case YOLO_POSE:
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case YOLO_DETECT_V8_HALF:
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case YOLO_POSE_V8_HALF://LetterBox
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{
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if (iImg.cols >= iImg.rows)
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{
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resizeScales = iImg.cols / (float)iImgSize.at(0);
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cv::resize(oImg, oImg, cv::Size(iImgSize.at(0), int(iImg.rows / resizeScales)));
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}
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else
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{
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resizeScales = iImg.rows / (float)iImgSize.at(0);
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cv::resize(oImg, oImg, cv::Size(int(iImg.cols / resizeScales), iImgSize.at(1)));
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}
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cv::Mat tempImg = cv::Mat::zeros(iImgSize.at(0), iImgSize.at(1), CV_8UC3);
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oImg.copyTo(tempImg(cv::Rect(0, 0, oImg.cols, oImg.rows)));
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oImg = tempImg;
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break;
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}
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case YOLO_CLS://CenterCrop
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{
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int h = iImg.rows;
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int w = iImg.cols;
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int m = min(h, w);
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int top = (h - m) / 2;
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int left = (w - m) / 2;
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cv::resize(oImg(cv::Rect(left, top, m, m)), oImg, cv::Size(iImgSize.at(0), iImgSize.at(1)));
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break;
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}
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}
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return RET_OK;
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}
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char* YOLO_V8::CreateSession(DL_INIT_PARAM& iParams) {
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char* Ret = RET_OK;
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std::regex pattern("[\u4e00-\u9fa5]");
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bool result = std::regex_search(iParams.modelPath, pattern);
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if (result)
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{
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Ret = "[YOLO_V8]:Your model path is error.Change your model path without chinese characters.";
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std::cout << Ret << std::endl;
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return Ret;
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}
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try
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{
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rectConfidenceThreshold = iParams.rectConfidenceThreshold;
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iouThreshold = iParams.iouThreshold;
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imgSize = iParams.imgSize;
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modelType = iParams.modelType;
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env = Ort::Env(ORT_LOGGING_LEVEL_WARNING, "Yolo");
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Ort::SessionOptions sessionOption;
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if (iParams.cudaEnable)
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{
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cudaEnable = iParams.cudaEnable;
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OrtCUDAProviderOptions cudaOption;
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cudaOption.device_id = 0;
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sessionOption.AppendExecutionProvider_CUDA(cudaOption);
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}
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sessionOption.SetGraphOptimizationLevel(GraphOptimizationLevel::ORT_ENABLE_ALL);
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sessionOption.SetIntraOpNumThreads(iParams.intraOpNumThreads);
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sessionOption.SetLogSeverityLevel(iParams.logSeverityLevel);
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#ifdef _WIN32
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int ModelPathSize = MultiByteToWideChar(CP_UTF8, 0, iParams.modelPath.c_str(), static_cast<int>(iParams.modelPath.length()), nullptr, 0);
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wchar_t* wide_cstr = new wchar_t[ModelPathSize + 1];
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MultiByteToWideChar(CP_UTF8, 0, iParams.modelPath.c_str(), static_cast<int>(iParams.modelPath.length()), wide_cstr, ModelPathSize);
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wide_cstr[ModelPathSize] = L'\0';
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const wchar_t* modelPath = wide_cstr;
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#else
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const char* modelPath = iParams.modelPath.c_str();
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#endif // _WIN32
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session = new Ort::Session(env, modelPath, sessionOption);
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Ort::AllocatorWithDefaultOptions allocator;
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size_t inputNodesNum = session->GetInputCount();
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for (size_t i = 0; i < inputNodesNum; i++)
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{
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Ort::AllocatedStringPtr input_node_name = session->GetInputNameAllocated(i, allocator);
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char* temp_buf = new char[50];
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strcpy(temp_buf, input_node_name.get());
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inputNodeNames.push_back(temp_buf);
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}
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size_t OutputNodesNum = session->GetOutputCount();
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for (size_t i = 0; i < OutputNodesNum; i++)
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{
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Ort::AllocatedStringPtr output_node_name = session->GetOutputNameAllocated(i, allocator);
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char* temp_buf = new char[10];
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strcpy(temp_buf, output_node_name.get());
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outputNodeNames.push_back(temp_buf);
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}
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options = Ort::RunOptions{ nullptr };
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WarmUpSession();
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return RET_OK;
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}
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catch (const std::exception& e)
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{
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const char* str1 = "[YOLO_V8]:";
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const char* str2 = e.what();
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std::string result = std::string(str1) + std::string(str2);
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char* merged = new char[result.length() + 1];
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std::strcpy(merged, result.c_str());
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std::cout << merged << std::endl;
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delete[] merged;
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return "[YOLO_V8]:Create session failed.";
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}
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}
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char* YOLO_V8::RunSession(cv::Mat& iImg, std::vector<DL_RESULT>& oResult) {
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#ifdef benchmark
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clock_t starttime_1 = clock();
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#endif // benchmark
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char* Ret = RET_OK;
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cv::Mat processedImg;
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PreProcess(iImg, imgSize, processedImg);
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if (modelType < 4)
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{
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float* blob = new float[processedImg.total() * 3];
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BlobFromImage(processedImg, blob);
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std::vector<int64_t> inputNodeDims = { 1, 3, imgSize.at(0), imgSize.at(1) };
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TensorProcess(starttime_1, iImg, blob, inputNodeDims, oResult);
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}
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else
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{
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#ifdef USE_CUDA
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half* blob = new half[processedImg.total() * 3];
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BlobFromImage(processedImg, blob);
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std::vector<int64_t> inputNodeDims = { 1,3,imgSize.at(0),imgSize.at(1) };
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TensorProcess(starttime_1, iImg, blob, inputNodeDims, oResult);
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#endif
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}
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return Ret;
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}
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template<typename N>
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char* YOLO_V8::TensorProcess(clock_t& starttime_1, cv::Mat& iImg, N& blob, std::vector<int64_t>& inputNodeDims,
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std::vector<DL_RESULT>& oResult) {
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Ort::Value inputTensor = Ort::Value::CreateTensor<typename std::remove_pointer<N>::type>(
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Ort::MemoryInfo::CreateCpu(OrtDeviceAllocator, OrtMemTypeCPU), blob, 3 * imgSize.at(0) * imgSize.at(1),
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inputNodeDims.data(), inputNodeDims.size());
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#ifdef benchmark
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clock_t starttime_2 = clock();
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#endif // benchmark
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auto outputTensor = session->Run(options, inputNodeNames.data(), &inputTensor, 1, outputNodeNames.data(),
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outputNodeNames.size());
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#ifdef benchmark
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clock_t starttime_3 = clock();
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#endif // benchmark
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Ort::TypeInfo typeInfo = outputTensor.front().GetTypeInfo();
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auto tensor_info = typeInfo.GetTensorTypeAndShapeInfo();
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std::vector<int64_t> outputNodeDims = tensor_info.GetShape();
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auto output = outputTensor.front().GetTensorMutableData<typename std::remove_pointer<N>::type>();
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delete[] blob;
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switch (modelType)
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{
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case YOLO_DETECT_V8:
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case YOLO_DETECT_V8_HALF:
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{
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int strideNum = outputNodeDims[1];//8400
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int signalResultNum = outputNodeDims[2];//84
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std::vector<int> class_ids;
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std::vector<float> confidences;
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std::vector<cv::Rect> boxes;
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cv::Mat rawData;
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if (modelType == YOLO_DETECT_V8)
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{
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// FP32
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rawData = cv::Mat(strideNum, signalResultNum, CV_32F, output);
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}
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else
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{
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// FP16
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rawData = cv::Mat(strideNum, signalResultNum, CV_16F, output);
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rawData.convertTo(rawData, CV_32F);
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}
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//Note:
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//ultralytics add transpose operator to the output of yolov8 model.which make yolov8/v5/v7 has same shape
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//https://github.com/ultralytics/assets/releases/download/v0.0.0/yolov8n.pt
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//rowData = rowData.t();
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float* data = (float*)rawData.data;
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for (int i = 0; i < strideNum; ++i)
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{
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float* classesScores = data + 4;
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cv::Mat scores(1, this->classes.size(), CV_32FC1, classesScores);
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cv::Point class_id;
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double maxClassScore;
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cv::minMaxLoc(scores, 0, &maxClassScore, 0, &class_id);
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if (maxClassScore > rectConfidenceThreshold)
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{
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confidences.push_back(maxClassScore);
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class_ids.push_back(class_id.x);
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float x = data[0];
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float y = data[1];
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float w = data[2];
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float h = data[3];
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int left = int((x - 0.5 * w) * resizeScales);
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int top = int((y - 0.5 * h) * resizeScales);
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int width = int(w * resizeScales);
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int height = int(h * resizeScales);
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boxes.push_back(cv::Rect(left, top, width, height));
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}
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data += signalResultNum;
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}
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std::vector<int> nmsResult;
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cv::dnn::NMSBoxes(boxes, confidences, rectConfidenceThreshold, iouThreshold, nmsResult);
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for (int i = 0; i < nmsResult.size(); ++i)
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{
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int idx = nmsResult[i];
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DL_RESULT result;
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result.classId = class_ids[idx];
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result.confidence = confidences[idx];
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result.box = boxes[idx];
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oResult.push_back(result);
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}
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#ifdef benchmark
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clock_t starttime_4 = clock();
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double pre_process_time = (double)(starttime_2 - starttime_1) / CLOCKS_PER_SEC * 1000;
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double process_time = (double)(starttime_3 - starttime_2) / CLOCKS_PER_SEC * 1000;
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double post_process_time = (double)(starttime_4 - starttime_3) / CLOCKS_PER_SEC * 1000;
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if (cudaEnable)
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{
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std::cout << "[YOLO_V8(CUDA)]: " << pre_process_time << "ms pre-process, " << process_time << "ms inference, " << post_process_time << "ms post-process." << std::endl;
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}
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else
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{
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std::cout << "[YOLO_V8(CPU)]: " << pre_process_time << "ms pre-process, " << process_time << "ms inference, " << post_process_time << "ms post-process." << std::endl;
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}
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#endif // benchmark
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break;
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}
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case YOLO_CLS:
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{
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DL_RESULT result;
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for (int i = 0; i < this->classes.size(); i++)
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{
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result.classId = i;
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result.confidence = output[i];
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oResult.push_back(result);
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}
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break;
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}
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default:
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std::cout << "[YOLO_V8]: " << "Not support model type." << std::endl;
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}
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return RET_OK;
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}
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char* YOLO_V8::WarmUpSession() {
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clock_t starttime_1 = clock();
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cv::Mat iImg = cv::Mat(cv::Size(imgSize.at(0), imgSize.at(1)), CV_8UC3);
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cv::Mat processedImg;
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PreProcess(iImg, imgSize, processedImg);
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if (modelType < 4)
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{
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float* blob = new float[iImg.total() * 3];
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BlobFromImage(processedImg, blob);
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std::vector<int64_t> YOLO_input_node_dims = { 1, 3, imgSize.at(0), imgSize.at(1) };
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Ort::Value input_tensor = Ort::Value::CreateTensor<float>(
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Ort::MemoryInfo::CreateCpu(OrtDeviceAllocator, OrtMemTypeCPU), blob, 3 * imgSize.at(0) * imgSize.at(1),
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YOLO_input_node_dims.data(), YOLO_input_node_dims.size());
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auto output_tensors = session->Run(options, inputNodeNames.data(), &input_tensor, 1, outputNodeNames.data(),
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outputNodeNames.size());
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delete[] blob;
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clock_t starttime_4 = clock();
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double post_process_time = (double)(starttime_4 - starttime_1) / CLOCKS_PER_SEC * 1000;
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if (cudaEnable)
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{
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std::cout << "[YOLO_V8(CUDA)]: " << "Cuda warm-up cost " << post_process_time << " ms. " << std::endl;
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}
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}
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else
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{
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#ifdef USE_CUDA
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half* blob = new half[iImg.total() * 3];
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BlobFromImage(processedImg, blob);
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std::vector<int64_t> YOLO_input_node_dims = { 1,3,imgSize.at(0),imgSize.at(1) };
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Ort::Value input_tensor = Ort::Value::CreateTensor<half>(Ort::MemoryInfo::CreateCpu(OrtDeviceAllocator, OrtMemTypeCPU), blob, 3 * imgSize.at(0) * imgSize.at(1), YOLO_input_node_dims.data(), YOLO_input_node_dims.size());
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auto output_tensors = session->Run(options, inputNodeNames.data(), &input_tensor, 1, outputNodeNames.data(), outputNodeNames.size());
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delete[] blob;
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clock_t starttime_4 = clock();
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double post_process_time = (double)(starttime_4 - starttime_1) / CLOCKS_PER_SEC * 1000;
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if (cudaEnable)
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{
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std::cout << "[YOLO_V8(CUDA)]: " << "Cuda warm-up cost " << post_process_time << " ms. " << std::endl;
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}
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#endif
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}
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return RET_OK;
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}
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