#include #include #include #include #include #include #include #include #include #include #include #include #include // CommandLineParser #include #ifdef HAVE_INF_ENGINE #include // ParamMap #ifdef HAVE_DIRECTX #ifdef HAVE_D3D11 #pragma comment(lib,"d3d11.lib") // get rid of generate macro max/min/etc from DX side #define D3D11_NO_HELPERS #define NOMINMAX #include #include #pragma comment(lib, "dxgi") #undef NOMINMAX #undef D3D11_NO_HELPERS #endif // HAVE_D3D11 #endif // HAVE_DIRECTX #endif // HAVE_INF_ENGINE const std::string about = "This is an OpenCV-based version of oneVPLSource decoder example"; const std::string keys = "{ h help | | Print this help message }" "{ input | | Path to the input demultiplexed video file }" "{ output | | Path to the output RAW video file. Use .avi extension }" "{ facem | face-detection-adas-0001.xml | Path to OpenVINO IE face detection model (.xml) }" "{ faced | AUTO | Target device for face detection model (e.g. AUTO, GPU, VPU, ...) }" "{ cfg_params | :;: | Semicolon separated list of oneVPL mfxVariants which is used for configuring source (see `MFXSetConfigFilterProperty` by https://spec.oneapi.io/versions/latest/elements/oneVPL/source/index.html) }" "{ streaming_queue_capacity | 1 | Streaming executor queue capacity. Calculated automatically if 0 }" "{ frames_pool_size | 0 | OneVPL source applies this parameter as preallocated frames pool size}" "{ vpp_frames_pool_size | 0 | OneVPL source applies this parameter as preallocated frames pool size for VPP preprocessing results}" "{ roi | -1,-1,-1,-1 | Region of interest (ROI) to use for inference. Identified automatically when not set }"; namespace { std::string get_weights_path(const std::string &model_path) { const auto EXT_LEN = 4u; const auto sz = model_path.size(); GAPI_Assert(sz > EXT_LEN); auto ext = model_path.substr(sz - EXT_LEN); std::transform(ext.begin(), ext.end(), ext.begin(), [](unsigned char c){ return static_cast(std::tolower(c)); }); GAPI_Assert(ext == ".xml"); return model_path.substr(0u, sz - EXT_LEN) + ".bin"; } // TODO: It duplicates infer_single_roi sample cv::util::optional parse_roi(const std::string &rc) { cv::Rect rv; char delim[3]; std::stringstream is(rc); is >> rv.x >> delim[0] >> rv.y >> delim[1] >> rv.width >> delim[2] >> rv.height; if (is.bad()) { return cv::util::optional(); // empty value } const auto is_delim = [](char c) { return c == ','; }; if (!std::all_of(std::begin(delim), std::end(delim), is_delim)) { return cv::util::optional(); // empty value } if (rv.x < 0 || rv.y < 0 || rv.width <= 0 || rv.height <= 0) { return cv::util::optional(); // empty value } return cv::util::make_optional(std::move(rv)); } #ifdef HAVE_INF_ENGINE #ifdef HAVE_DIRECTX #ifdef HAVE_D3D11 // Since ATL headers might not be available on specific MSVS Build Tools // we use simple `CComPtr` implementation like as `ComPtrGuard` // which is not supposed to be the full functional replacement of `CComPtr` // and it uses as RAII to make sure utilization is correct template void release(COMNonManageableType *ptr) { if (ptr) { ptr->Release(); } } template using ComPtrGuard = std::unique_ptr)>; template ComPtrGuard createCOMPtrGuard(COMNonManageableType *ptr = nullptr) { return ComPtrGuard {ptr, &release}; } using AccelParamsType = std::tuple, ComPtrGuard>; AccelParamsType create_device_with_ctx(IDXGIAdapter* adapter) { UINT flags = 0; D3D_FEATURE_LEVEL feature_levels[] = { D3D_FEATURE_LEVEL_11_1, D3D_FEATURE_LEVEL_11_0, }; D3D_FEATURE_LEVEL featureLevel; ID3D11Device* ret_device_ptr = nullptr; ID3D11DeviceContext* ret_ctx_ptr = nullptr; HRESULT err = D3D11CreateDevice(adapter, D3D_DRIVER_TYPE_UNKNOWN, nullptr, flags, feature_levels, ARRAYSIZE(feature_levels), D3D11_SDK_VERSION, &ret_device_ptr, &featureLevel, &ret_ctx_ptr); if (FAILED(err)) { throw std::runtime_error("Cannot create D3D11CreateDevice, error: " + std::to_string(HRESULT_CODE(err))); } return std::make_tuple(createCOMPtrGuard(ret_device_ptr), createCOMPtrGuard(ret_ctx_ptr)); } #endif // HAVE_D3D11 #endif // HAVE_DIRECTX #endif // HAVE_INF_ENGINE } // anonymous namespace namespace custom { G_API_NET(FaceDetector, , "face-detector"); using GDetections = cv::GArray; using GRect = cv::GOpaque; using GSize = cv::GOpaque; using GPrims = cv::GArray; G_API_OP(ParseSSD, , "sample.custom.parse-ssd") { static cv::GArrayDesc outMeta(const cv::GMatDesc &, const cv::GOpaqueDesc &, const cv::GOpaqueDesc &) { return cv::empty_array_desc(); } }; // TODO: It duplicates infer_single_roi sample G_API_OP(LocateROI, , "sample.custom.locate-roi") { static cv::GOpaqueDesc outMeta(const cv::GOpaqueDesc &) { return cv::empty_gopaque_desc(); } }; G_API_OP(BBoxes, , "sample.custom.b-boxes") { static cv::GArrayDesc outMeta(const cv::GArrayDesc &, const cv::GOpaqueDesc &) { return cv::empty_array_desc(); } }; GAPI_OCV_KERNEL(OCVLocateROI, LocateROI) { // This is the place where we can run extra analytics // on the input image frame and select the ROI (region // of interest) where we want to detect our objects (or // run any other inference). // // Currently it doesn't do anything intelligent, // but only crops the input image to square (this is // the most convenient aspect ratio for detectors to use) static void run(const cv::Size& in_size, cv::Rect &out_rect) { // Identify the central point & square size (- some padding) const auto center = cv::Point{in_size.width/2, in_size.height/2}; auto sqside = std::min(in_size.width, in_size.height); // Now build the central square ROI out_rect = cv::Rect{ center.x - sqside/2 , center.y - sqside/2 , sqside , sqside }; } }; GAPI_OCV_KERNEL(OCVBBoxes, BBoxes) { // This kernel converts the rectangles into G-API's // rendering primitives static void run(const std::vector &in_face_rcs, const cv::Rect &in_roi, std::vector &out_prims) { out_prims.clear(); const auto cvt = [](const cv::Rect &rc, const cv::Scalar &clr) { return cv::gapi::wip::draw::Rect(rc, clr, 2); }; out_prims.emplace_back(cvt(in_roi, CV_RGB(0,255,255))); // cyan for (auto &&rc : in_face_rcs) { out_prims.emplace_back(cvt(rc, CV_RGB(0,255,0))); // green } } }; GAPI_OCV_KERNEL(OCVParseSSD, ParseSSD) { static void run(const cv::Mat &in_ssd_result, const cv::Rect &in_roi, const cv::Size &in_parent_size, std::vector &out_objects) { const auto &in_ssd_dims = in_ssd_result.size; GAPI_Assert(in_ssd_dims.dims() == 4u); const int MAX_PROPOSALS = in_ssd_dims[2]; const int OBJECT_SIZE = in_ssd_dims[3]; GAPI_Assert(OBJECT_SIZE == 7); // fixed SSD object size const cv::Size up_roi = in_roi.size(); const cv::Rect surface({0,0}, in_parent_size); out_objects.clear(); const float *data = in_ssd_result.ptr(); for (int i = 0; i < MAX_PROPOSALS; i++) { const float image_id = data[i * OBJECT_SIZE + 0]; const float label = data[i * OBJECT_SIZE + 1]; const float confidence = data[i * OBJECT_SIZE + 2]; const float rc_left = data[i * OBJECT_SIZE + 3]; const float rc_top = data[i * OBJECT_SIZE + 4]; const float rc_right = data[i * OBJECT_SIZE + 5]; const float rc_bottom = data[i * OBJECT_SIZE + 6]; (void) label; // unused if (image_id < 0.f) { break; // marks end-of-detections } if (confidence < 0.5f) { continue; // skip objects with low confidence } // map relative coordinates to the original image scale // taking the ROI into account cv::Rect rc; rc.x = static_cast(rc_left * up_roi.width); rc.y = static_cast(rc_top * up_roi.height); rc.width = static_cast(rc_right * up_roi.width) - rc.x; rc.height = static_cast(rc_bottom * up_roi.height) - rc.y; rc.x += in_roi.x; rc.y += in_roi.y; out_objects.emplace_back(rc & surface); } } }; } // namespace custom namespace cfg { typename cv::gapi::wip::onevpl::CfgParam create_from_string(const std::string &line); } int main(int argc, char *argv[]) { cv::CommandLineParser cmd(argc, argv, keys); cmd.about(about); if (cmd.has("help")) { cmd.printMessage(); return 0; } // get file name const auto file_path = cmd.get("input"); const auto output = cmd.get("output"); const auto opt_roi = parse_roi(cmd.get("roi")); const auto face_model_path = cmd.get("facem"); const auto streaming_queue_capacity = cmd.get("streaming_queue_capacity"); const auto source_decode_queue_capacity = cmd.get("frames_pool_size"); const auto source_vpp_queue_capacity = cmd.get("vpp_frames_pool_size"); const auto device_id = cmd.get("faced"); // check output file extension if (!output.empty()) { auto ext = output.find_last_of("."); if (ext == std::string::npos || (output.substr(ext + 1) != "avi")) { std::cerr << "Output file should have *.avi extension for output video" << std::endl; return -1; } } // get oneVPL cfg params from cmd std::stringstream params_list(cmd.get("cfg_params")); std::vector source_cfgs; try { std::string line; while (std::getline(params_list, line, ';')) { source_cfgs.push_back(cfg::create_from_string(line)); } } catch (const std::exception& ex) { std::cerr << "Invalid cfg parameter: " << ex.what() << std::endl; return -1; } if (source_decode_queue_capacity != 0) { source_cfgs.push_back(cv::gapi::wip::onevpl::CfgParam::create_frames_pool_size(source_decode_queue_capacity)); } if (source_vpp_queue_capacity != 0) { source_cfgs.push_back(cv::gapi::wip::onevpl::CfgParam::create_vpp_frames_pool_size(source_vpp_queue_capacity)); } auto face_net = cv::gapi::ie::Params { face_model_path, // path to topology IR get_weights_path(face_model_path), // path to weights device_id }; // Create device_ptr & context_ptr using graphic API // InferenceEngine requires such device & context to create its own // remote shared context through InferenceEngine::ParamMap in // GAPI InferenceEngine backend to provide interoperability with onevpl::GSource // So GAPI InferenceEngine backend and onevpl::GSource MUST share the same // device and context cv::util::optional accel_device; cv::util::optional accel_ctx; #ifdef HAVE_INF_ENGINE #ifdef HAVE_DIRECTX #ifdef HAVE_D3D11 auto dx11_dev = createCOMPtrGuard(); auto dx11_ctx = createCOMPtrGuard(); if (device_id.find("GPU") != std::string::npos) { auto adapter_factory = createCOMPtrGuard(); { IDXGIFactory* out_factory = nullptr; HRESULT err = CreateDXGIFactory(__uuidof(IDXGIFactory), reinterpret_cast(&out_factory)); if (FAILED(err)) { std::cerr << "Cannot create CreateDXGIFactory, error: " << HRESULT_CODE(err) << std::endl; return -1; } adapter_factory = createCOMPtrGuard(out_factory); } auto intel_adapter = createCOMPtrGuard(); UINT adapter_index = 0; const unsigned int refIntelVendorID = 0x8086; IDXGIAdapter* out_adapter = nullptr; while (adapter_factory->EnumAdapters(adapter_index, &out_adapter) != DXGI_ERROR_NOT_FOUND) { DXGI_ADAPTER_DESC desc{}; out_adapter->GetDesc(&desc); if (desc.VendorId == refIntelVendorID) { intel_adapter = createCOMPtrGuard(out_adapter); break; } ++adapter_index; } if (!intel_adapter) { std::cerr << "No Intel GPU adapter on aboard. Exit" << std::endl; return -1; } std::tie(dx11_dev, dx11_ctx) = create_device_with_ctx(intel_adapter.get()); accel_device = cv::util::make_optional( cv::gapi::wip::onevpl::create_dx11_device( reinterpret_cast(dx11_dev.get()), device_id)); accel_ctx = cv::util::make_optional( cv::gapi::wip::onevpl::create_dx11_context( reinterpret_cast(dx11_ctx.get()))); // put accel type description for VPL source source_cfgs.push_back(cfg::create_from_string( "mfxImplDescription.AccelerationMode" ":" "MFX_ACCEL_MODE_VIA_D3D11")); } #endif // HAVE_D3D11 #endif // HAVE_DIRECTX // set ctx_config for GPU device only - no need in case of CPU device type if (accel_device.has_value() && accel_device.value().get_name().find("GPU") != std::string::npos) { InferenceEngine::ParamMap ctx_config({{"CONTEXT_TYPE", "VA_SHARED"}, {"VA_DEVICE", accel_device.value().get_ptr()} }); face_net.cfgContextParams(ctx_config); // NB: consider NV12 surface because it's one of native GPU image format face_net.pluginConfig({{"GPU_NV12_TWO_INPUTS", "YES" }}); } #endif // HAVE_INF_ENGINE // turn on preproc if (accel_device.has_value() && accel_ctx.has_value()) { face_net.cfgPreprocessingParams(accel_device.value(), accel_ctx.value()); std::cout << "enforce VPP preprocessing on " << device_id << std::endl; } auto kernels = cv::gapi::kernels < custom::OCVLocateROI , custom::OCVParseSSD , custom::OCVBBoxes>(); auto networks = cv::gapi::networks(face_net); auto face_detection_args = cv::compile_args(networks, kernels); if (streaming_queue_capacity != 0) { face_detection_args += cv::compile_args(cv::gapi::streaming::queue_capacity{ streaming_queue_capacity }); } // Create source cv::gapi::wip::IStreamSource::Ptr cap; try { if (accel_device.has_value() && accel_ctx.has_value()) { cap = cv::gapi::wip::make_onevpl_src(file_path, source_cfgs, accel_device.value(), accel_ctx.value()); } else { cap = cv::gapi::wip::make_onevpl_src(file_path, source_cfgs); } std::cout << "oneVPL source description: " << cap->descr_of() << std::endl; } catch (const std::exception& ex) { std::cerr << "Cannot create source: " << ex.what() << std::endl; return -1; } cv::GMetaArg descr = cap->descr_of(); auto frame_descr = cv::util::get(descr); cv::GOpaque in_roi; auto inputs = cv::gin(cap); // Now build the graph cv::GFrame in; auto size = cv::gapi::streaming::size(in); auto graph_inputs = cv::GIn(in); if (!opt_roi.has_value()) { // Automatically detect ROI to infer. Make it output parameter std::cout << "ROI is not set or invalid. Locating it automatically" << std::endl; in_roi = custom::LocateROI::on(size); } else { // Use the value provided by user std::cout << "Will run inference for static region " << opt_roi.value() << " only" << std::endl; graph_inputs += cv::GIn(in_roi); inputs += cv::gin(opt_roi.value()); } auto blob = cv::gapi::infer(in_roi, in); cv::GArray rcs = custom::ParseSSD::on(blob, in_roi, size); auto out_frame = cv::gapi::wip::draw::renderFrame(in, custom::BBoxes::on(rcs, in_roi)); auto out = cv::gapi::streaming::BGR(out_frame); cv::GStreamingCompiled pipeline = cv::GComputation(std::move(graph_inputs), cv::GOut(out)) // and move here .compileStreaming(std::move(face_detection_args)); // The execution part pipeline.setSource(std::move(inputs)); pipeline.start(); size_t frames = 0u; cv::TickMeter tm; cv::VideoWriter writer; if (!output.empty() && !writer.isOpened()) { const auto sz = cv::Size{frame_descr.size.width, frame_descr.size.height}; writer.open(output, cv::VideoWriter::fourcc('M','J','P','G'), 25.0, sz); GAPI_Assert(writer.isOpened()); } cv::Mat outMat; tm.start(); while (pipeline.pull(cv::gout(outMat))) { cv::imshow("Out", outMat); cv::waitKey(1); if (!output.empty()) { writer << outMat; } ++frames; } tm.stop(); std::cout << "Processed " << frames << " frames" << " (" << frames / tm.getTimeSec() << " FPS)" << std::endl; return 0; } namespace cfg { typename cv::gapi::wip::onevpl::CfgParam create_from_string(const std::string &line) { using namespace cv::gapi::wip; if (line.empty()) { throw std::runtime_error("Cannot parse CfgParam from emply line"); } std::string::size_type name_endline_pos = line.find(':'); if (name_endline_pos == std::string::npos) { throw std::runtime_error("Cannot parse CfgParam from: " + line + "\nExpected separator \":\""); } std::string name = line.substr(0, name_endline_pos); std::string value = line.substr(name_endline_pos + 1); return cv::gapi::wip::onevpl::CfgParam::create(name, value, /* vpp params strongly optional */ name.find("vpp.") == std::string::npos); } }