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Open Source Computer Vision Library
https://opencv.org/
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334 lines
11 KiB
334 lines
11 KiB
#include <iostream> |
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#include <stdio.h> |
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#include "opencv2/core/core.hpp" |
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#include "opencv2/highgui/highgui.hpp" |
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#include "opencv2/ocl/ocl.hpp" |
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#include "opencv2/nonfree/ocl.hpp" |
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#include "opencv2/calib3d/calib3d.hpp" |
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#include "opencv2/nonfree/nonfree.hpp" |
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using namespace cv; |
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using namespace cv::ocl; |
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const int LOOP_NUM = 10; |
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const int GOOD_PTS_MAX = 50; |
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const float GOOD_PORTION = 0.15f; |
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namespace |
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{ |
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int64 work_begin = 0; |
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int64 work_end = 0; |
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void workBegin() |
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{ |
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work_begin = getTickCount(); |
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} |
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void workEnd() |
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{ |
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work_end = getTickCount() - work_begin; |
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} |
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double getTime() |
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{ |
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return work_end /((double)cvGetTickFrequency() * 1000.); |
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} |
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template<class KPDetector> |
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struct SURFDetector |
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{ |
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KPDetector surf; |
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SURFDetector(double hessian = 800.0) |
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:surf(hessian) |
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{ |
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} |
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template<class T> |
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void operator()(const T& in, const T& mask, vector<cv::KeyPoint>& pts, T& descriptors, bool useProvided = false) |
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{ |
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surf(in, mask, pts, descriptors, useProvided); |
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} |
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}; |
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template<class KPMatcher> |
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struct SURFMatcher |
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{ |
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KPMatcher matcher; |
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template<class T> |
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void match(const T& in1, const T& in2, vector<cv::DMatch>& matches) |
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{ |
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matcher.match(in1, in2, matches); |
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} |
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}; |
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Mat drawGoodMatches( |
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const Mat& cpu_img1, |
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const Mat& cpu_img2, |
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const vector<KeyPoint>& keypoints1, |
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const vector<KeyPoint>& keypoints2, |
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vector<DMatch>& matches, |
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vector<Point2f>& scene_corners_ |
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) |
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{ |
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//-- Sort matches and preserve top 10% matches |
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std::sort(matches.begin(), matches.end()); |
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std::vector< DMatch > good_matches; |
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double minDist = matches.front().distance, |
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maxDist = matches.back().distance; |
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const int ptsPairs = std::min(GOOD_PTS_MAX, (int)(matches.size() * GOOD_PORTION)); |
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for( int i = 0; i < ptsPairs; i++ ) |
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{ |
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good_matches.push_back( matches[i] ); |
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} |
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std::cout << "\nMax distance: " << maxDist << std::endl; |
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std::cout << "Min distance: " << minDist << std::endl; |
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std::cout << "Calculating homography using " << ptsPairs << " point pairs." << std::endl; |
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// drawing the results |
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Mat img_matches; |
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drawMatches( cpu_img1, keypoints1, cpu_img2, keypoints2, |
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good_matches, img_matches, Scalar::all(-1), Scalar::all(-1), |
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vector<char>(), DrawMatchesFlags::NOT_DRAW_SINGLE_POINTS ); |
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//-- Localize the object |
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std::vector<Point2f> obj; |
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std::vector<Point2f> scene; |
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for( size_t i = 0; i < good_matches.size(); i++ ) |
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{ |
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//-- Get the keypoints from the good matches |
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obj.push_back( keypoints1[ good_matches[i].queryIdx ].pt ); |
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scene.push_back( keypoints2[ good_matches[i].trainIdx ].pt ); |
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} |
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//-- Get the corners from the image_1 ( the object to be "detected" ) |
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std::vector<Point2f> obj_corners(4); |
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obj_corners[0] = cvPoint(0,0); |
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obj_corners[1] = cvPoint( cpu_img1.cols, 0 ); |
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obj_corners[2] = cvPoint( cpu_img1.cols, cpu_img1.rows ); |
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obj_corners[3] = cvPoint( 0, cpu_img1.rows ); |
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std::vector<Point2f> scene_corners(4); |
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Mat H = findHomography( obj, scene, CV_RANSAC ); |
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perspectiveTransform( obj_corners, scene_corners, H); |
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scene_corners_ = scene_corners; |
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//-- Draw lines between the corners (the mapped object in the scene - image_2 ) |
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line( img_matches, |
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scene_corners[0] + Point2f( (float)cpu_img1.cols, 0), scene_corners[1] + Point2f( (float)cpu_img1.cols, 0), |
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Scalar( 0, 255, 0), 2, CV_AA ); |
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line( img_matches, |
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scene_corners[1] + Point2f( (float)cpu_img1.cols, 0), scene_corners[2] + Point2f( (float)cpu_img1.cols, 0), |
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Scalar( 0, 255, 0), 2, CV_AA ); |
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line( img_matches, |
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scene_corners[2] + Point2f( (float)cpu_img1.cols, 0), scene_corners[3] + Point2f( (float)cpu_img1.cols, 0), |
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Scalar( 0, 255, 0), 2, CV_AA ); |
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line( img_matches, |
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scene_corners[3] + Point2f( (float)cpu_img1.cols, 0), scene_corners[0] + Point2f( (float)cpu_img1.cols, 0), |
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Scalar( 0, 255, 0), 2, CV_AA ); |
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return img_matches; |
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} |
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} |
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//////////////////////////////////////////////////// |
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// This program demonstrates the usage of SURF_OCL. |
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// use cpu findHomography interface to calculate the transformation matrix |
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int main(int argc, char* argv[]) |
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{ |
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const char* keys = |
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"{ h | help | false | print help message }" |
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"{ l | left | | specify left image }" |
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"{ r | right | | specify right image }" |
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"{ o | output | SURF_output.jpg | specify output save path (only works in CPU or GPU only mode) }" |
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"{ c | use_cpu | false | use CPU algorithms }" |
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"{ a | use_all | false | use both CPU and GPU algorithms}"; |
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CommandLineParser cmd(argc, argv, keys); |
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if (cmd.get<bool>("help")) |
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{ |
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std::cout << "Available options:" << std::endl; |
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cmd.printParams(); |
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return 0; |
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} |
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Mat cpu_img1, cpu_img2, cpu_img1_grey, cpu_img2_grey; |
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oclMat img1, img2; |
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bool useCPU = cmd.get<bool>("c"); |
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bool useGPU = false; |
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bool useALL = cmd.get<bool>("a"); |
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string outpath = cmd.get<std::string>("o"); |
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cpu_img1 = imread(cmd.get<std::string>("l")); |
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CV_Assert(!cpu_img1.empty()); |
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cvtColor(cpu_img1, cpu_img1_grey, CV_BGR2GRAY); |
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img1 = cpu_img1_grey; |
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cpu_img2 = imread(cmd.get<std::string>("r")); |
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CV_Assert(!cpu_img2.empty()); |
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cvtColor(cpu_img2, cpu_img2_grey, CV_BGR2GRAY); |
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img2 = cpu_img2_grey; |
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if(useALL) |
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{ |
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useCPU = false; |
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useGPU = false; |
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} |
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else if(useCPU==false && useALL==false) |
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{ |
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useGPU = true; |
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} |
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if(!useCPU) |
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{ |
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std::cout |
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<< "Device name:" |
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<< cv::ocl::Context::getContext()->getDeviceInfo().deviceName |
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<< std::endl; |
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} |
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double surf_time = 0.; |
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//declare input/output |
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vector<KeyPoint> keypoints1, keypoints2; |
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vector<DMatch> matches; |
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vector<KeyPoint> gpu_keypoints1; |
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vector<KeyPoint> gpu_keypoints2; |
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vector<DMatch> gpu_matches; |
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Mat descriptors1CPU, descriptors2CPU; |
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oclMat keypoints1GPU, keypoints2GPU; |
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oclMat descriptors1GPU, descriptors2GPU; |
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//instantiate detectors/matchers |
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SURFDetector<SURF> cpp_surf; |
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SURFDetector<SURF_OCL> ocl_surf; |
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SURFMatcher<BFMatcher> cpp_matcher; |
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SURFMatcher<BFMatcher_OCL> ocl_matcher; |
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//-- start of timing section |
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if (useCPU) |
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{ |
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for (int i = 0; i <= LOOP_NUM; i++) |
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{ |
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if(i == 1) workBegin(); |
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cpp_surf(cpu_img1_grey, Mat(), keypoints1, descriptors1CPU); |
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cpp_surf(cpu_img2_grey, Mat(), keypoints2, descriptors2CPU); |
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cpp_matcher.match(descriptors1CPU, descriptors2CPU, matches); |
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} |
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workEnd(); |
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std::cout << "CPP: FOUND " << keypoints1.size() << " keypoints on first image" << std::endl; |
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std::cout << "CPP: FOUND " << keypoints2.size() << " keypoints on second image" << std::endl; |
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surf_time = getTime(); |
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std::cout << "SURF run time: " << surf_time / LOOP_NUM << " ms" << std::endl<<"\n"; |
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} |
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else if(useGPU) |
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{ |
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for (int i = 0; i <= LOOP_NUM; i++) |
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{ |
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if(i == 1) workBegin(); |
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ocl_surf(img1, oclMat(), keypoints1, descriptors1GPU); |
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ocl_surf(img2, oclMat(), keypoints2, descriptors2GPU); |
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ocl_matcher.match(descriptors1GPU, descriptors2GPU, matches); |
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} |
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workEnd(); |
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std::cout << "OCL: FOUND " << keypoints1.size() << " keypoints on first image" << std::endl; |
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std::cout << "OCL: FOUND " << keypoints2.size() << " keypoints on second image" << std::endl; |
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surf_time = getTime(); |
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std::cout << "SURF run time: " << surf_time / LOOP_NUM << " ms" << std::endl<<"\n"; |
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} |
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else |
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{ |
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//cpu runs |
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for (int i = 0; i <= LOOP_NUM; i++) |
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{ |
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if(i == 1) workBegin(); |
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cpp_surf(cpu_img1_grey, Mat(), keypoints1, descriptors1CPU); |
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cpp_surf(cpu_img2_grey, Mat(), keypoints2, descriptors2CPU); |
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cpp_matcher.match(descriptors1CPU, descriptors2CPU, matches); |
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} |
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workEnd(); |
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std::cout << "\nCPP: FOUND " << keypoints1.size() << " keypoints on first image" << std::endl; |
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std::cout << "CPP: FOUND " << keypoints2.size() << " keypoints on second image" << std::endl; |
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surf_time = getTime(); |
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std::cout << "(CPP)SURF run time: " << surf_time / LOOP_NUM << " ms" << std::endl; |
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//gpu runs |
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for (int i = 0; i <= LOOP_NUM; i++) |
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{ |
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if(i == 1) workBegin(); |
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ocl_surf(img1, oclMat(), gpu_keypoints1, descriptors1GPU); |
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ocl_surf(img2, oclMat(), gpu_keypoints2, descriptors2GPU); |
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ocl_matcher.match(descriptors1GPU, descriptors2GPU, gpu_matches); |
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} |
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workEnd(); |
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std::cout << "\nOCL: FOUND " << keypoints1.size() << " keypoints on first image" << std::endl; |
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std::cout << "OCL: FOUND " << keypoints2.size() << " keypoints on second image" << std::endl; |
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surf_time = getTime(); |
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std::cout << "(OCL)SURF run time: " << surf_time / LOOP_NUM << " ms" << std::endl<<"\n"; |
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} |
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//-------------------------------------------------------------------------- |
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std::vector<Point2f> cpu_corner; |
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Mat img_matches = drawGoodMatches(cpu_img1, cpu_img2, keypoints1, keypoints2, matches, cpu_corner); |
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std::vector<Point2f> gpu_corner; |
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Mat ocl_img_matches; |
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if(useALL || (!useCPU&&!useGPU)) |
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{ |
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ocl_img_matches = drawGoodMatches(cpu_img1, cpu_img2, gpu_keypoints1, gpu_keypoints2, gpu_matches, gpu_corner); |
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//check accuracy |
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std::cout<<"\nCheck accuracy:\n"; |
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if(cpu_corner.size()!=gpu_corner.size()) |
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std::cout<<"Failed\n"; |
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else |
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{ |
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bool result = false; |
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for(size_t i = 0; i < cpu_corner.size(); i++) |
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{ |
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if((std::abs(cpu_corner[i].x - gpu_corner[i].x) > 10) |
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||(std::abs(cpu_corner[i].y - gpu_corner[i].y) > 10)) |
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{ |
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std::cout<<"Failed\n"; |
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result = false; |
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break; |
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} |
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result = true; |
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} |
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if(result) |
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std::cout<<"Passed\n"; |
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} |
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} |
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//-- Show detected matches |
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if (useCPU) |
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{ |
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namedWindow("cpu surf matches", 0); |
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imshow("cpu surf matches", img_matches); |
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imwrite(outpath, img_matches); |
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} |
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else if(useGPU) |
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{ |
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namedWindow("ocl surf matches", 0); |
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imshow("ocl surf matches", img_matches); |
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imwrite(outpath, img_matches); |
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} |
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else |
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{ |
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namedWindow("cpu surf matches", 0); |
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imshow("cpu surf matches", img_matches); |
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namedWindow("ocl surf matches", 0); |
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imshow("ocl surf matches", ocl_img_matches); |
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} |
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waitKey(0); |
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return 0; |
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}
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