234 lines
6.3 KiB
C++
234 lines
6.3 KiB
C++
/*
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* video_homography.cpp
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*
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* Created on: Oct 18, 2010
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* Author: erublee
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*/
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#include "opencv2/calib3d/calib3d.hpp"
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#include "opencv2/highgui/highgui.hpp"
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#include "opencv2/imgproc/imgproc.hpp"
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#include "opencv2/features2d/features2d.hpp"
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#include <iostream>
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#include <list>
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#include <vector>
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using namespace std;
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using namespace cv;
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void help(char **av)
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{
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cout << "\nThis program demonstrated the use of features2d with the Fast corner detector and brief descriptors\n"
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<< "to track planar objects by computing their homography from the key (training) image to the query (test) image\n\n" << endl;
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cout << "usage: " << av[0] << " <video device number>\n" << endl;
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cout << "The following keys do stuff:" << endl;
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cout << " t : grabs a reference frame to match against" << endl;
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cout << " l : makes the reference frame new every frame" << endl;
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cout << " q or escape: quit" << endl;
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}
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namespace
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{
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void drawMatchesRelative(const vector<KeyPoint>& train, const vector<KeyPoint>& query,
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std::vector<cv::DMatch>& matches, Mat& img, const vector<unsigned char>& mask = vector<
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unsigned char> ())
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{
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for (int i = 0; i < (int)matches.size(); i++)
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{
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if (mask.empty() || mask[i])
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{
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Point2f pt_new = query[matches[i].queryIdx].pt;
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Point2f pt_old = train[matches[i].trainIdx].pt;
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cv::line(img, pt_new, pt_old, Scalar(125, 255, 125), 1);
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cv::circle(img, pt_new, 2, Scalar(255, 0, 125), 1);
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}
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}
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}
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//Takes a descriptor and turns it into an xy point
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void keypoints2points(const vector<KeyPoint>& in, vector<Point2f>& out)
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{
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out.clear();
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out.reserve(in.size());
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for (size_t i = 0; i < in.size(); ++i)
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{
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out.push_back(in[i].pt);
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}
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}
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//Takes an xy point and appends that to a keypoint structure
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void points2keypoints(const vector<Point2f>& in, vector<KeyPoint>& out)
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{
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out.clear();
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out.reserve(in.size());
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for (size_t i = 0; i < in.size(); ++i)
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{
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out.push_back(KeyPoint(in[i], 1));
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}
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}
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//Uses computed homography H to warp original input points to new planar position
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void warpKeypoints(const Mat& H, const vector<KeyPoint>& in, vector<KeyPoint>& out)
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{
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vector<Point2f> pts;
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keypoints2points(in, pts);
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vector<Point2f> pts_w(pts.size());
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Mat m_pts_w(pts_w);
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perspectiveTransform(Mat(pts), m_pts_w, H);
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points2keypoints(pts_w, out);
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}
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//Converts matching indices to xy points
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void matches2points(const vector<KeyPoint>& train, const vector<KeyPoint>& query,
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const std::vector<cv::DMatch>& matches, std::vector<cv::Point2f>& pts_train,
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std::vector<Point2f>& pts_query)
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{
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pts_train.clear();
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pts_query.clear();
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pts_train.reserve(matches.size());
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pts_query.reserve(matches.size());
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size_t i = 0;
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for (; i < matches.size(); i++)
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{
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const DMatch & dmatch = matches[i];
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pts_query.push_back(query[dmatch.queryIdx].pt);
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pts_train.push_back(train[dmatch.trainIdx].pt);
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}
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}
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void resetH(Mat&H)
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{
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H = Mat::eye(3, 3, CV_32FC1);
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}
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}
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int main(int ac, char ** av)
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{
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if (ac != 2)
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{
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help(av);
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return 1;
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}
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BriefDescriptorExtractor brief(32);
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VideoCapture capture;
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capture.open(atoi(av[1]));
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if (!capture.isOpened())
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{
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help(av);
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cout << "capture device " << atoi(av[1]) << " failed to open!" << endl;
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return 1;
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}
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cout << "following keys do stuff:" << endl;
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cout << "t : grabs a reference frame to match against" << endl;
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cout << "l : makes the reference frame new every frame" << endl;
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cout << "q or escape: quit" << endl;
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Mat frame;
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vector<DMatch> matches;
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BFMatcher desc_matcher(NORM_HAMMING);
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vector<Point2f> train_pts, query_pts;
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vector<KeyPoint> train_kpts, query_kpts;
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vector<unsigned char> match_mask;
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Mat gray;
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bool ref_live = true;
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Mat train_desc, query_desc;
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const int DESIRED_FTRS = 500;
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GridAdaptedFeatureDetector detector(new FastFeatureDetector(10, true), DESIRED_FTRS, 4, 4);
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Mat H_prev = Mat::eye(3, 3, CV_32FC1);
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for (;;)
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{
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capture >> frame;
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if (frame.empty())
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break;
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cvtColor(frame, gray, CV_RGB2GRAY);
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detector.detect(gray, query_kpts); //Find interest points
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brief.compute(gray, query_kpts, query_desc); //Compute brief descriptors at each keypoint location
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if (!train_kpts.empty())
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{
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vector<KeyPoint> test_kpts;
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warpKeypoints(H_prev.inv(), query_kpts, test_kpts);
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Mat mask = windowedMatchingMask(test_kpts, train_kpts, 25, 25);
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desc_matcher.match(query_desc, train_desc, matches, mask);
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drawKeypoints(frame, test_kpts, frame, Scalar(255, 0, 0), DrawMatchesFlags::DRAW_OVER_OUTIMG);
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matches2points(train_kpts, query_kpts, matches, train_pts, query_pts);
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if (matches.size() > 5)
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{
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Mat H = findHomography(train_pts, query_pts, RANSAC, 4, match_mask);
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if (countNonZero(Mat(match_mask)) > 15)
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{
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H_prev = H;
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}
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else
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resetH(H_prev);
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drawMatchesRelative(train_kpts, query_kpts, matches, frame, match_mask);
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}
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else
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resetH(H_prev);
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}
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else
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{
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H_prev = Mat::eye(3, 3, CV_32FC1);
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Mat out;
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drawKeypoints(gray, query_kpts, out);
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frame = out;
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}
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imshow("frame", frame);
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if (ref_live)
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{
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train_kpts = query_kpts;
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query_desc.copyTo(train_desc);
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}
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char key = (char)waitKey(2);
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switch (key)
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{
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case 'l':
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ref_live = true;
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resetH(H_prev);
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break;
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case 't':
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ref_live = false;
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train_kpts = query_kpts;
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query_desc.copyTo(train_desc);
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resetH(H_prev);
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break;
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case 27:
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case 'q':
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return 0;
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break;
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}
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}
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return 0;
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}
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