// Brief Sample of using OpenCV dnn module in real time with device capture, video and image. // VIDEO DEMO: https://www.youtube.com/watch?v=NHtRlndE2cg #include #include #include #include #include #include #include #include using namespace std; using namespace cv; using namespace cv::dnn; static const char* about = "This sample uses You only look once (YOLO)-Detector (https://arxiv.org/abs/1612.08242) to detect objects on camera/video/image.\n" "Models can be downloaded here: https://pjreddie.com/darknet/yolo/\n" "Default network is 416x416.\n" "Class names can be downloaded here: https://github.com/pjreddie/darknet/tree/master/data\n"; static const char* params = "{ help | false | print usage }" "{ cfg | | model configuration }" "{ model | | model weights }" "{ camera_device | 0 | camera device number}" "{ source | | video or image for detection}" "{ style | box | box or line style draw }" "{ min_confidence | 0.24 | min confidence }" "{ class_names | | File with class names, [PATH-TO-DARKNET]/data/coco.names }"; int main(int argc, char** argv) { CommandLineParser parser(argc, argv, params); if (parser.get("help")) { cout << about << endl; parser.printMessage(); return 0; } String modelConfiguration = parser.get("cfg"); String modelBinary = parser.get("model"); //! [Initialize network] dnn::Net net = readNetFromDarknet(modelConfiguration, modelBinary); //! [Initialize network] if (net.empty()) { cerr << "Can't load network by using the following files: " << endl; cerr << "cfg-file: " << modelConfiguration << endl; cerr << "weights-file: " << modelBinary << endl; cerr << "Models can be downloaded here:" << endl; cerr << "https://pjreddie.com/darknet/yolo/" << endl; exit(-1); } VideoCapture cap; if (parser.get("source").empty()) { int cameraDevice = parser.get("camera_device"); cap = VideoCapture(cameraDevice); if(!cap.isOpened()) { cout << "Couldn't find camera: " << cameraDevice << endl; return -1; } } else { cap.open(parser.get("source")); if(!cap.isOpened()) { cout << "Couldn't open image or video: " << parser.get("video") << endl; return -1; } } vector classNamesVec; ifstream classNamesFile(parser.get("class_names").c_str()); if (classNamesFile.is_open()) { string className = ""; while (std::getline(classNamesFile, className)) classNamesVec.push_back(className); } String object_roi_style = parser.get("style"); for(;;) { Mat frame; cap >> frame; // get a new frame from camera/video or read image if (frame.empty()) { waitKey(); break; } if (frame.channels() == 4) cvtColor(frame, frame, COLOR_BGRA2BGR); //! [Prepare blob] Mat inputBlob = blobFromImage(frame, 1 / 255.F, Size(416, 416), Scalar(), true, false); //Convert Mat to batch of images //! [Prepare blob] //! [Set input blob] net.setInput(inputBlob, "data"); //set the network input //! [Set input blob] //! [Make forward pass] Mat detectionMat = net.forward("detection_out"); //compute output //! [Make forward pass] vector layersTimings; double tick_freq = getTickFrequency(); double time_ms = net.getPerfProfile(layersTimings) / tick_freq * 1000; putText(frame, format("FPS: %.2f ; time: %.2f ms", 1000.f / time_ms, time_ms), Point(20, 20), 0, 0.5, Scalar(0, 0, 255)); float confidenceThreshold = parser.get("min_confidence"); for (int i = 0; i < detectionMat.rows; i++) { const int probability_index = 5; const int probability_size = detectionMat.cols - probability_index; float *prob_array_ptr = &detectionMat.at(i, probability_index); size_t objectClass = max_element(prob_array_ptr, prob_array_ptr + probability_size) - prob_array_ptr; float confidence = detectionMat.at(i, (int)objectClass + probability_index); if (confidence > confidenceThreshold) { float x_center = detectionMat.at(i, 0) * frame.cols; float y_center = detectionMat.at(i, 1) * frame.rows; float width = detectionMat.at(i, 2) * frame.cols; float height = detectionMat.at(i, 3) * frame.rows; Point p1(cvRound(x_center - width / 2), cvRound(y_center - height / 2)); Point p2(cvRound(x_center + width / 2), cvRound(y_center + height / 2)); Rect object(p1, p2); Scalar object_roi_color(0, 255, 0); if (object_roi_style == "box") { rectangle(frame, object, object_roi_color); } else { Point p_center(cvRound(x_center), cvRound(y_center)); line(frame, object.tl(), p_center, object_roi_color, 1); } String className = objectClass < classNamesVec.size() ? classNamesVec[objectClass] : cv::format("unknown(%d)", objectClass); String label = format("%s: %.2f", className.c_str(), confidence); int baseLine = 0; Size labelSize = getTextSize(label, FONT_HERSHEY_SIMPLEX, 0.5, 1, &baseLine); rectangle(frame, Rect(p1, Size(labelSize.width, labelSize.height + baseLine)), object_roi_color, CV_FILLED); putText(frame, label, p1 + Point(0, labelSize.height), FONT_HERSHEY_SIMPLEX, 0.5, Scalar(0,0,0)); } } imshow("YOLO: Detections", frame); if (waitKey(1) >= 0) break; } return 0; } // main