// This file is part of OpenCV project. // It is subject to the license terms in the LICENSE file found in the top-level directory // of this distribution and at http://opencv.org/license.html. // Used in accuracy and perf tests as a content of .cpp file // Note: don't use "precomp.hpp" here #include "opencv2/ts.hpp" #include "opencv2/ts/ts_perf.hpp" #include "opencv2/core/utility.hpp" #include "opencv2/core/ocl.hpp" #include "opencv2/dnn.hpp" #include "test_common.hpp" #include #include namespace cv { namespace dnn { CV__DNN_EXPERIMENTAL_NS_BEGIN void PrintTo(const cv::dnn::Backend& v, std::ostream* os) { switch (v) { case DNN_BACKEND_DEFAULT: *os << "DEFAULT"; return; case DNN_BACKEND_HALIDE: *os << "HALIDE"; return; case DNN_BACKEND_INFERENCE_ENGINE: *os << "DLIE"; return; case DNN_BACKEND_OPENCV: *os << "OCV"; return; } // don't use "default:" to emit compiler warnings *os << "DNN_BACKEND_UNKNOWN(" << (int)v << ")"; } void PrintTo(const cv::dnn::Target& v, std::ostream* os) { switch (v) { case DNN_TARGET_CPU: *os << "CPU"; return; case DNN_TARGET_OPENCL: *os << "OCL"; return; case DNN_TARGET_OPENCL_FP16: *os << "OCL_FP16"; return; case DNN_TARGET_MYRIAD: *os << "MYRIAD"; return; case DNN_TARGET_FPGA: *os << "FPGA"; return; } // don't use "default:" to emit compiler warnings *os << "DNN_TARGET_UNKNOWN(" << (int)v << ")"; } void PrintTo(const tuple v, std::ostream* os) { PrintTo(get<0>(v), os); *os << "/"; PrintTo(get<1>(v), os); } CV__DNN_EXPERIMENTAL_NS_END }} // namespace namespace opencv_test { void normAssert( cv::InputArray ref, cv::InputArray test, const char *comment /*= ""*/, double l1 /*= 0.00001*/, double lInf /*= 0.0001*/) { double normL1 = cvtest::norm(ref, test, cv::NORM_L1) / ref.getMat().total(); EXPECT_LE(normL1, l1) << comment; double normInf = cvtest::norm(ref, test, cv::NORM_INF); EXPECT_LE(normInf, lInf) << comment; } std::vector matToBoxes(const cv::Mat& m) { EXPECT_EQ(m.type(), CV_32FC1); EXPECT_EQ(m.dims, 2); EXPECT_EQ(m.cols, 4); std::vector boxes(m.rows); for (int i = 0; i < m.rows; ++i) { CV_Assert(m.row(i).isContinuous()); const float* data = m.ptr(i); double l = data[0], t = data[1], r = data[2], b = data[3]; boxes[i] = cv::Rect2d(l, t, r - l, b - t); } return boxes; } void normAssertDetections( const std::vector& refClassIds, const std::vector& refScores, const std::vector& refBoxes, const std::vector& testClassIds, const std::vector& testScores, const std::vector& testBoxes, const char *comment /*= ""*/, double confThreshold /*= 0.0*/, double scores_diff /*= 1e-5*/, double boxes_iou_diff /*= 1e-4*/) { std::vector matchedRefBoxes(refBoxes.size(), false); for (int i = 0; i < testBoxes.size(); ++i) { double testScore = testScores[i]; if (testScore < confThreshold) continue; int testClassId = testClassIds[i]; const cv::Rect2d& testBox = testBoxes[i]; bool matched = false; for (int j = 0; j < refBoxes.size() && !matched; ++j) { if (!matchedRefBoxes[j] && testClassId == refClassIds[j] && std::abs(testScore - refScores[j]) < scores_diff) { double interArea = (testBox & refBoxes[j]).area(); double iou = interArea / (testBox.area() + refBoxes[j].area() - interArea); if (std::abs(iou - 1.0) < boxes_iou_diff) { matched = true; matchedRefBoxes[j] = true; } } } if (!matched) std::cout << cv::format("Unmatched prediction: class %d score %f box ", testClassId, testScore) << testBox << std::endl; EXPECT_TRUE(matched) << comment; } // Check unmatched reference detections. for (int i = 0; i < refBoxes.size(); ++i) { if (!matchedRefBoxes[i] && refScores[i] > confThreshold) { std::cout << cv::format("Unmatched reference: class %d score %f box ", refClassIds[i], refScores[i]) << refBoxes[i] << std::endl; EXPECT_LE(refScores[i], confThreshold) << comment; } } } // For SSD-based object detection networks which produce output of shape 1x1xNx7 // where N is a number of detections and an every detection is represented by // a vector [batchId, classId, confidence, left, top, right, bottom]. void normAssertDetections( cv::Mat ref, cv::Mat out, const char *comment /*= ""*/, double confThreshold /*= 0.0*/, double scores_diff /*= 1e-5*/, double boxes_iou_diff /*= 1e-4*/) { CV_Assert(ref.total() % 7 == 0); CV_Assert(out.total() % 7 == 0); ref = ref.reshape(1, ref.total() / 7); out = out.reshape(1, out.total() / 7); cv::Mat refClassIds, testClassIds; ref.col(1).convertTo(refClassIds, CV_32SC1); out.col(1).convertTo(testClassIds, CV_32SC1); std::vector refScores(ref.col(2)), testScores(out.col(2)); std::vector refBoxes = matToBoxes(ref.colRange(3, 7)); std::vector testBoxes = matToBoxes(out.colRange(3, 7)); normAssertDetections(refClassIds, refScores, refBoxes, testClassIds, testScores, testBoxes, comment, confThreshold, scores_diff, boxes_iou_diff); } bool readFileInMemory(const std::string& filename, std::string& content) { std::ios::openmode mode = std::ios::in | std::ios::binary; std::ifstream ifs(filename.c_str(), mode); if (!ifs.is_open()) return false; content.clear(); ifs.seekg(0, std::ios::end); content.reserve(ifs.tellg()); ifs.seekg(0, std::ios::beg); content.assign((std::istreambuf_iterator(ifs)), std::istreambuf_iterator()); return true; } testing::internal::ParamGenerator< tuple > dnnBackendsAndTargets( bool withInferenceEngine /*= true*/, bool withHalide /*= false*/, bool withCpuOCV /*= true*/ ) { #ifdef HAVE_INF_ENGINE bool withVPU = validateVPUType(); #endif std::vector< tuple > targets; std::vector< Target > available; if (withHalide) { available = getAvailableTargets(DNN_BACKEND_HALIDE); for (std::vector< Target >::const_iterator i = available.begin(); i != available.end(); ++i) targets.push_back(make_tuple(DNN_BACKEND_HALIDE, *i)); } #ifdef HAVE_INF_ENGINE if (withInferenceEngine) { available = getAvailableTargets(DNN_BACKEND_INFERENCE_ENGINE); for (std::vector< Target >::const_iterator i = available.begin(); i != available.end(); ++i) { if (*i == DNN_TARGET_MYRIAD && !withVPU) continue; targets.push_back(make_tuple(DNN_BACKEND_INFERENCE_ENGINE, *i)); } } #else CV_UNUSED(withInferenceEngine); #endif { available = getAvailableTargets(DNN_BACKEND_OPENCV); for (std::vector< Target >::const_iterator i = available.begin(); i != available.end(); ++i) { if (!withCpuOCV && *i == DNN_TARGET_CPU) continue; targets.push_back(make_tuple(DNN_BACKEND_OPENCV, *i)); } } if (targets.empty()) // validate at least CPU mode targets.push_back(make_tuple(DNN_BACKEND_OPENCV, DNN_TARGET_CPU)); return testing::ValuesIn(targets); } #ifdef HAVE_INF_ENGINE static std::string getTestInferenceEngineVPUType() { static std::string param_vpu_type = utils::getConfigurationParameterString("OPENCV_TEST_DNN_IE_VPU_TYPE", ""); return param_vpu_type; } static bool validateVPUType_() { std::string test_vpu_type = getTestInferenceEngineVPUType(); if (test_vpu_type == "DISABLED" || test_vpu_type == "disabled") { return false; } std::vector available = getAvailableTargets(DNN_BACKEND_INFERENCE_ENGINE); bool have_vpu_target = false; for (std::vector::const_iterator i = available.begin(); i != available.end(); ++i) { if (*i == DNN_TARGET_MYRIAD) { have_vpu_target = true; break; } } if (test_vpu_type.empty()) { if (have_vpu_target) { CV_LOG_INFO(NULL, "OpenCV-DNN-Test: VPU type for testing is not specified via 'OPENCV_TEST_DNN_IE_VPU_TYPE' parameter.") } } else { if (!have_vpu_target) { CV_LOG_FATAL(NULL, "OpenCV-DNN-Test: 'OPENCV_TEST_DNN_IE_VPU_TYPE' parameter requires VPU of type = '" << test_vpu_type << "', but VPU is not detected. STOP."); exit(1); } std::string dnn_vpu_type = getInferenceEngineVPUType(); if (dnn_vpu_type != test_vpu_type) { CV_LOG_FATAL(NULL, "OpenCV-DNN-Test: 'testing' and 'detected' VPU types mismatch: '" << test_vpu_type << "' vs '" << dnn_vpu_type << "'. STOP."); exit(1); } } return true; } bool validateVPUType() { static bool result = validateVPUType_(); return result; } #endif // HAVE_INF_ENGINE } // namespace