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#include <opencv2/core/utility.hpp>
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#include <opencv2/imgproc.hpp>
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#include <opencv2/objdetect.hpp>
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#include <opencv2/highgui.hpp>
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#include <opencv2/softcascade.hpp>
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#include <iostream>
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#include <vector>
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#include <string>
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#include <fstream>
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void filter_rects(const std::vector<cv::Rect>& candidates, std::vector<cv::Rect>& objects);
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int main(int argc, char** argv)
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{
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const std::string keys =
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"{help h usage ? | | print this message and exit }"
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"{cascade c | | path to cascade xml, if empty HOG detector will be executed }"
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"{frame f | | wildchart pattern to frame source}"
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"{min_scale |0.4 | minimum scale to detect }"
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"{max_scale |5.0 | maxamum scale to detect }"
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"{total_scales |55 | prefered number of scales between min and max }"
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"{write_file wf |0 | write to .txt. Disabled by default.}"
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"{write_image wi |0 | write to image. Disabled by default.}"
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"{show_image si |1 | show image. Enabled by default.}"
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"{threshold thr |-1 | detection threshold. Detections with score less then threshold will be ignored.}"
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;
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cv::CommandLineParser parser(argc, argv, keys);
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parser.about("Soft cascade training application.");
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if (parser.has("help"))
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{
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parser.printMessage();
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return 0;
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}
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if (!parser.check())
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{
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parser.printErrors();
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return 1;
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}
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int wf = parser.get<int>("write_file");
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if (wf) std::cout << "resulte will be stored to .txt file with the same name as image." << std::endl;
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int wi = parser.get<int>("write_image");
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if (wi) std::cout << "resulte will be stored to image with the same name as input plus dt." << std::endl;
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int si = parser.get<int>("show_image");
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float minScale = parser.get<float>("min_scale");
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float maxScale = parser.get<float>("max_scale");
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int scales = parser.get<int>("total_scales");
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int thr = parser.get<int>("threshold");
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cv::HOGDescriptor hog;
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cv::softcascade::Detector cascade;
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bool useHOG = false;
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std::string cascadePath = parser.get<std::string>("cascade");
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if (cascadePath.empty())
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{
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useHOG = true;
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hog.setSVMDetector(cv::HOGDescriptor::getDefaultPeopleDetector());
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std::cout << "going to use HOG detector." << std::endl;
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}
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else
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{
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cv::FileStorage fs(cascadePath, cv::FileStorage::READ);
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if( !fs.isOpened())
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{
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std::cout << "Soft Cascade file " << cascadePath << " can't be opened." << std::endl << std::flush;
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return 1;
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}
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cascade = cv::softcascade::Detector(minScale, maxScale, scales, cv::softcascade::Detector::DOLLAR);
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if (!cascade.load(fs.getFirstTopLevelNode()))
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{
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std::cout << "Soft Cascade can't be parsed." << std::endl << std::flush;
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return 1;
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}
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}
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std::string src = parser.get<std::string>("frame");
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std::vector<cv::String> frames;
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cv::glob(parser.get<std::string>("frame"), frames);
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std::cout << "collected " << src << " " << frames.size() << " frames." << std::endl;
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for (int i = 0; i < (int)frames.size(); ++i)
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{
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std::string frame_sourse = frames[i];
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cv::Mat frame = cv::imread(frame_sourse);
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if(frame.empty())
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{
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std::cout << "Frame source " << frame_sourse << " can't be opened." << std::endl << std::flush;
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continue;
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}
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std::ofstream myfile;
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if (wf)
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myfile.open((frame_sourse.replace(frame_sourse.end() - 3, frame_sourse.end(), "txt")).c_str(), std::ios::out);
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////
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if (useHOG)
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{
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std::vector<cv::Rect> found, found_filtered;
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// run the detector with default parameters. to get a higher hit-rate
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// (and more false alarms, respectively), decrease the hitThreshold and
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// groupThreshold (set groupThreshold to 0 to turn off the grouping completely).
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hog.detectMultiScale(frame, found, 0, cv::Size(8,8), cv::Size(32,32), 1.05, 2);
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filter_rects(found, found_filtered);
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std::cout << "collected: " << (int)found_filtered.size() << " detections." << std::endl;
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for (size_t ff = 0; ff < found_filtered.size(); ++ff)
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{
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cv::Rect r = found_filtered[ff];
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cv::rectangle(frame, r.tl(), r.br(), cv::Scalar(0,255,0), 3);
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if (wf) myfile << r.x << "," << r.y << "," << r.width << "," << r.height << "," << 0.f << "\n";
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}
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}
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else
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{
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std::vector<cv::softcascade::Detection> objects;
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cascade.detect(frame, cv::noArray(), objects);
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std::cout << "collected: " << (int)objects.size() << " detections." << std::endl;
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for (int obj = 0; obj < (int)objects.size(); ++obj)
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{
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cv::softcascade::Detection d = objects[obj];
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if(d.confidence > thr)
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{
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float b = d.confidence * 1.5f;
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std::stringstream conf(std::stringstream::in | std::stringstream::out);
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conf << d.confidence;
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cv::rectangle(frame, cv::Rect((int)d.x, (int)d.y, (int)d.w, (int)d.h), cv::Scalar(b, 0, 255 - b, 255), 2);
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cv::putText(frame, conf.str() , cv::Point((int)d.x + 10, (int)d.y - 5),1, 1.1, cv::Scalar(25, 133, 255, 0), 1, cv::LINE_AA);
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if (wf)
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myfile << d.x << "," << d.y << "," << d.w << "," << d.h << "," << d.confidence << "\n";
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}
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}
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}
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if (wi) cv::imwrite(frame_sourse + ".dt.png", frame);
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if (wf) myfile.close();
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if (si)
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{
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cv::imshow("pedestrian detector", frame);
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cv::waitKey(10);
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}
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}
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if (si) cv::waitKey(0);
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return 0;
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}
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void filter_rects(const std::vector<cv::Rect>& candidates, std::vector<cv::Rect>& objects)
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{
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size_t i, j;
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for (i = 0; i < candidates.size(); ++i)
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{
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cv::Rect r = candidates[i];
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for (j = 0; j < candidates.size(); ++j)
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if (j != i && (r & candidates[j]) == r)
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break;
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if (j == candidates.size())
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objects.push_back(r);
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}
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}
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