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458 lines
17 KiB
458 lines
17 KiB
/*M/////////////////////////////////////////////////////////////////////////////////////// |
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// |
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// IMPORTANT: READ BEFORE DOWNLOADING, COPYING, INSTALLING OR USING. |
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// |
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// By downloading, copying, installing or using the software you agree to this license. |
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// If you do not agree to this license, do not download, install, |
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// copy or use the software. |
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// |
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// |
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// License Agreement |
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// For Open Source Computer Vision Library |
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// |
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// Copyright (C) 2000-2008, Intel Corporation, all rights reserved. |
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// Copyright (C) 2009, Willow Garage Inc., all rights reserved. |
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// Third party copyrights are property of their respective owners. |
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// |
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// Redistribution and use in source and binary forms, with or without modification, |
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// are permitted provided that the following conditions are met: |
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// |
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// * Redistribution's of source code must retain the above copyright notice, |
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// this list of conditions and the following disclaimer. |
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// |
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// * Redistribution's in binary form must reproduce the above copyright notice, |
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// this list of conditions and the following disclaimer in the documentation |
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// and/or other materials provided with the distribution. |
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// |
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// * The name of the copyright holders may not be used to endorse or promote products |
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// derived from this software without specific prior written permission. |
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// |
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// This software is provided by the copyright holders and contributors "as is" and |
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// any express or implied warranties, including, but not limited to, the implied |
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// warranties of merchantability and fitness for a particular purpose are disclaimed. |
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// In no event shall the Intel Corporation or contributors be liable for any direct, |
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// indirect, incidental, special, exemplary, or consequential damages |
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// (including, but not limited to, procurement of substitute goods or services; |
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// loss of use, data, or profits; or business interruption) however caused |
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// and on any theory of liability, whether in contract, strict liability, |
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// or tort (including negligence or otherwise) arising in any way out of |
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// the use of this software, even if advised of the possibility of such damage. |
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// |
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//M*/ |
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#include <algorithm> |
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#include <functional> |
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#include "matchers.hpp" |
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#include "util.hpp" |
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using namespace std; |
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using namespace cv; |
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using namespace cv::gpu; |
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////////////////////////////////////////////////////////////////////////////// |
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void FeaturesFinder::operator ()(const Mat &image, ImageFeatures &features) |
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{ |
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find(image, features); |
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features.img_size = image.size(); |
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//features.img = image.clone(); |
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} |
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////////////////////////////////////////////////////////////////////////////// |
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namespace |
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{ |
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class CpuSurfFeaturesFinder : public FeaturesFinder |
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{ |
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public: |
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CpuSurfFeaturesFinder(double hess_thresh, int num_octaves, int num_layers, |
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int num_octaves_descr, int num_layers_descr) |
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{ |
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detector_ = new SurfFeatureDetector(hess_thresh, num_octaves, num_layers); |
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extractor_ = new SurfDescriptorExtractor(num_octaves_descr, num_layers_descr); |
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} |
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protected: |
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void find(const Mat &image, ImageFeatures &features); |
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private: |
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Ptr<FeatureDetector> detector_; |
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Ptr<DescriptorExtractor> extractor_; |
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}; |
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class GpuSurfFeaturesFinder : public FeaturesFinder |
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{ |
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public: |
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GpuSurfFeaturesFinder(double hess_thresh, int num_octaves, int num_layers, |
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int num_octaves_descr, int num_layers_descr) |
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{ |
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surf_.keypointsRatio = 0.1f; |
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surf_.hessianThreshold = hess_thresh; |
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surf_.extended = false; |
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num_octaves_ = num_octaves; |
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num_layers_ = num_layers; |
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num_octaves_descr_ = num_octaves_descr; |
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num_layers_descr_ = num_layers_descr; |
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} |
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protected: |
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void find(const Mat &image, ImageFeatures &features); |
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private: |
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SURF_GPU surf_; |
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int num_octaves_, num_layers_; |
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int num_octaves_descr_, num_layers_descr_; |
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}; |
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void CpuSurfFeaturesFinder::find(const Mat &image, ImageFeatures &features) |
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{ |
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Mat gray_image; |
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CV_Assert(image.depth() == CV_8U); |
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cvtColor(image, gray_image, CV_BGR2GRAY); |
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detector_->detect(gray_image, features.keypoints); |
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extractor_->compute(gray_image, features.keypoints, features.descriptors); |
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} |
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void GpuSurfFeaturesFinder::find(const Mat &image, ImageFeatures &features) |
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{ |
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GpuMat gray_image; |
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CV_Assert(image.depth() == CV_8U); |
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cvtColor(GpuMat(image), gray_image, CV_BGR2GRAY); |
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GpuMat d_keypoints; |
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GpuMat d_descriptors; |
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surf_.nOctaves = num_octaves_; |
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surf_.nOctaveLayers = num_layers_; |
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surf_(gray_image, GpuMat(), d_keypoints); |
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surf_.nOctaves = num_octaves_descr_; |
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surf_.nOctaveLayers = num_layers_descr_; |
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surf_(gray_image, GpuMat(), d_keypoints, d_descriptors, true); |
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surf_.downloadKeypoints(d_keypoints, features.keypoints); |
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d_descriptors.download(features.descriptors); |
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} |
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} // anonymous namespace |
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SurfFeaturesFinder::SurfFeaturesFinder(bool try_use_gpu, double hess_thresh, int num_octaves, int num_layers, |
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int num_octaves_descr, int num_layers_descr) |
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{ |
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if (try_use_gpu && getCudaEnabledDeviceCount() > 0) |
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impl_ = new GpuSurfFeaturesFinder(hess_thresh, num_octaves, num_layers, num_octaves_descr, num_layers_descr); |
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else |
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impl_ = new CpuSurfFeaturesFinder(hess_thresh, num_octaves, num_layers, num_octaves_descr, num_layers_descr); |
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} |
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void SurfFeaturesFinder::find(const Mat &image, ImageFeatures &features) |
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{ |
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(*impl_)(image, features); |
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} |
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////////////////////////////////////////////////////////////////////////////// |
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MatchesInfo::MatchesInfo() : src_img_idx(-1), dst_img_idx(-1), num_inliers(0), confidence(0) {} |
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MatchesInfo::MatchesInfo(const MatchesInfo &other) { *this = other; } |
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const MatchesInfo& MatchesInfo::operator =(const MatchesInfo &other) |
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{ |
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src_img_idx = other.src_img_idx; |
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dst_img_idx = other.dst_img_idx; |
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matches = other.matches; |
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inliers_mask = other.inliers_mask; |
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num_inliers = other.num_inliers; |
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H = other.H.clone(); |
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confidence = other.confidence; |
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return *this; |
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} |
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////////////////////////////////////////////////////////////////////////////// |
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struct DistIdxPair |
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{ |
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bool operator<(const DistIdxPair &other) const { return dist < other.dist; } |
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double dist; |
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int idx; |
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}; |
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struct MatchPairsBody |
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{ |
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MatchPairsBody(const MatchPairsBody& other) |
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: matcher(other.matcher), features(other.features), |
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pairwise_matches(other.pairwise_matches), near_pairs(other.near_pairs) {} |
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MatchPairsBody(FeaturesMatcher &matcher, const vector<ImageFeatures> &features, |
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vector<MatchesInfo> &pairwise_matches, vector<pair<int,int> > &near_pairs) |
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: matcher(matcher), features(features), |
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pairwise_matches(pairwise_matches), near_pairs(near_pairs) {} |
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void operator ()(const BlockedRange &r) const |
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{ |
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const int num_images = static_cast<int>(features.size()); |
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for (int i = r.begin(); i < r.end(); ++i) |
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{ |
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int from = near_pairs[i].first; |
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int to = near_pairs[i].second; |
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int pair_idx = from*num_images + to; |
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matcher(features[from], features[to], pairwise_matches[pair_idx]); |
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pairwise_matches[pair_idx].src_img_idx = from; |
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pairwise_matches[pair_idx].dst_img_idx = to; |
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size_t dual_pair_idx = to*num_images + from; |
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pairwise_matches[dual_pair_idx] = pairwise_matches[pair_idx]; |
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pairwise_matches[dual_pair_idx].src_img_idx = to; |
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pairwise_matches[dual_pair_idx].dst_img_idx = from; |
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if (!pairwise_matches[pair_idx].H.empty()) |
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pairwise_matches[dual_pair_idx].H = pairwise_matches[pair_idx].H.inv(); |
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for (size_t j = 0; j < pairwise_matches[dual_pair_idx].matches.size(); ++j) |
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swap(pairwise_matches[dual_pair_idx].matches[j].queryIdx, |
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pairwise_matches[dual_pair_idx].matches[j].trainIdx); |
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LOG("."); |
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} |
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} |
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FeaturesMatcher &matcher; |
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const vector<ImageFeatures> &features; |
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vector<MatchesInfo> &pairwise_matches; |
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vector<pair<int,int> > &near_pairs; |
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private: |
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void operator =(const MatchPairsBody&); |
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}; |
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void FeaturesMatcher::operator ()(const vector<ImageFeatures> &features, vector<MatchesInfo> &pairwise_matches) |
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{ |
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const int num_images = static_cast<int>(features.size()); |
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vector<pair<int,int> > near_pairs; |
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for (int i = 0; i < num_images - 1; ++i) |
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for (int j = i + 1; j < num_images; ++j) |
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near_pairs.push_back(make_pair(i, j)); |
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pairwise_matches.resize(num_images * num_images); |
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MatchPairsBody body(*this, features, pairwise_matches, near_pairs); |
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if (is_thread_safe_) |
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parallel_for(BlockedRange(0, static_cast<int>(near_pairs.size())), body); |
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else |
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body(BlockedRange(0, static_cast<int>(near_pairs.size()))); |
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LOGLN(""); |
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} |
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////////////////////////////////////////////////////////////////////////////// |
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namespace |
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{ |
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typedef set<pair<int,int> > MatchesSet; |
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// These two classes are aimed to find features matches only, not to |
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// estimate homography |
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class CpuMatcher : public FeaturesMatcher |
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{ |
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public: |
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CpuMatcher(float match_conf) : FeaturesMatcher(true), match_conf_(match_conf) {} |
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void match(const ImageFeatures &features1, const ImageFeatures &features2, MatchesInfo& matches_info); |
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private: |
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float match_conf_; |
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}; |
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class GpuMatcher : public FeaturesMatcher |
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{ |
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public: |
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GpuMatcher(float match_conf) : match_conf_(match_conf) {} |
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void match(const ImageFeatures &features1, const ImageFeatures &features2, MatchesInfo& matches_info); |
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private: |
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float match_conf_; |
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GpuMat descriptors1_, descriptors2_; |
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GpuMat train_idx_, distance_, all_dist_; |
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}; |
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void CpuMatcher::match(const ImageFeatures &features1, const ImageFeatures &features2, MatchesInfo& matches_info) |
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{ |
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matches_info.matches.clear(); |
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FlannBasedMatcher matcher; |
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vector< vector<DMatch> > pair_matches; |
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MatchesSet matches; |
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// Find 1->2 matches |
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matcher.knnMatch(features1.descriptors, features2.descriptors, pair_matches, 2); |
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for (size_t i = 0; i < pair_matches.size(); ++i) |
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{ |
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if (pair_matches[i].size() < 2) |
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continue; |
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const DMatch& m0 = pair_matches[i][0]; |
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const DMatch& m1 = pair_matches[i][1]; |
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if (m0.distance < (1.f - match_conf_) * m1.distance) |
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{ |
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matches_info.matches.push_back(m0); |
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matches.insert(make_pair(m0.queryIdx, m0.trainIdx)); |
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} |
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} |
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// Find 2->1 matches |
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pair_matches.clear(); |
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matcher.knnMatch(features2.descriptors, features1.descriptors, pair_matches, 2); |
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for (size_t i = 0; i < pair_matches.size(); ++i) |
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{ |
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if (pair_matches[i].size() < 2) |
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continue; |
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const DMatch& m0 = pair_matches[i][0]; |
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const DMatch& m1 = pair_matches[i][1]; |
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if (m0.distance < (1.f - match_conf_) * m1.distance) |
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if (matches.find(make_pair(m0.trainIdx, m0.queryIdx)) == matches.end()) |
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matches_info.matches.push_back(DMatch(m0.trainIdx, m0.queryIdx, m0.distance)); |
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} |
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} |
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void GpuMatcher::match(const ImageFeatures &features1, const ImageFeatures &features2, MatchesInfo& matches_info) |
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{ |
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matches_info.matches.clear(); |
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descriptors1_.upload(features1.descriptors); |
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descriptors2_.upload(features2.descriptors); |
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BruteForceMatcher_GPU< L2<float> > matcher; |
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vector< vector<DMatch> > pair_matches; |
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MatchesSet matches; |
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// Find 1->2 matches |
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matcher.knnMatch(descriptors1_, descriptors2_, train_idx_, distance_, all_dist_, 2); |
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matcher.knnMatchDownload(train_idx_, distance_, pair_matches); |
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for (size_t i = 0; i < pair_matches.size(); ++i) |
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{ |
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if (pair_matches[i].size() < 2) |
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continue; |
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const DMatch& m0 = pair_matches[i][0]; |
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const DMatch& m1 = pair_matches[i][1]; |
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if (m0.distance < (1.f - match_conf_) * m1.distance) |
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{ |
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matches_info.matches.push_back(m0); |
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matches.insert(make_pair(m0.queryIdx, m0.trainIdx)); |
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} |
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} |
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// Find 2->1 matches |
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pair_matches.clear(); |
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matcher.knnMatch(descriptors2_, descriptors1_, train_idx_, distance_, all_dist_, 2); |
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matcher.knnMatchDownload(train_idx_, distance_, pair_matches); |
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for (size_t i = 0; i < pair_matches.size(); ++i) |
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{ |
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if (pair_matches[i].size() < 2) |
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continue; |
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const DMatch& m0 = pair_matches[i][0]; |
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const DMatch& m1 = pair_matches[i][1]; |
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if (m0.distance < (1.f - match_conf_) * m1.distance) |
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if (matches.find(make_pair(m0.trainIdx, m0.queryIdx)) == matches.end()) |
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matches_info.matches.push_back(DMatch(m0.trainIdx, m0.queryIdx, m0.distance)); |
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} |
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} |
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} // anonymous namespace |
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BestOf2NearestMatcher::BestOf2NearestMatcher(bool try_use_gpu, float match_conf, int num_matches_thresh1, int num_matches_thresh2) |
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{ |
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if (try_use_gpu && getCudaEnabledDeviceCount() > 0) |
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impl_ = new GpuMatcher(match_conf); |
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else |
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impl_ = new CpuMatcher(match_conf); |
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is_thread_safe_ = impl_->isThreadSafe(); |
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num_matches_thresh1_ = num_matches_thresh1; |
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num_matches_thresh2_ = num_matches_thresh2; |
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} |
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void BestOf2NearestMatcher::match(const ImageFeatures &features1, const ImageFeatures &features2, |
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MatchesInfo &matches_info) |
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{ |
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(*impl_)(features1, features2, matches_info); |
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//Mat out; |
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//drawMatches(features1.img, features1.keypoints, features2.img, features2.keypoints, matches_info.matches, out); |
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//stringstream ss; |
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//ss << features1.img_idx << features2.img_idx << ".png"; |
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//imwrite(ss.str(), out); |
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// Check if it makes sense to find homography |
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if (matches_info.matches.size() < static_cast<size_t>(num_matches_thresh1_)) |
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return; |
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// Construct point-point correspondences for homography estimation |
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Mat src_points(1, matches_info.matches.size(), CV_32FC2); |
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Mat dst_points(1, matches_info.matches.size(), CV_32FC2); |
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for (size_t i = 0; i < matches_info.matches.size(); ++i) |
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{ |
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const DMatch& m = matches_info.matches[i]; |
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Point2f p = features1.keypoints[m.queryIdx].pt; |
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p.x -= features1.img_size.width * 0.5f; |
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p.y -= features1.img_size.height * 0.5f; |
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src_points.at<Point2f>(0, i) = p; |
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p = features2.keypoints[m.trainIdx].pt; |
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p.x -= features2.img_size.width * 0.5f; |
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p.y -= features2.img_size.height * 0.5f; |
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dst_points.at<Point2f>(0, i) = p; |
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} |
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// Find pair-wise motion |
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matches_info.H = findHomography(src_points, dst_points, matches_info.inliers_mask, CV_RANSAC); |
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// Find number of inliers |
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matches_info.num_inliers = 0; |
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for (size_t i = 0; i < matches_info.inliers_mask.size(); ++i) |
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if (matches_info.inliers_mask[i]) |
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matches_info.num_inliers++; |
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matches_info.confidence = matches_info.num_inliers / (8 + 0.3*matches_info.matches.size()); |
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// Check if we should try to refine motion |
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if (matches_info.num_inliers < num_matches_thresh2_) |
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return; |
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// Construct point-point correspondences for inliers only |
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src_points.create(1, matches_info.num_inliers, CV_32FC2); |
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dst_points.create(1, matches_info.num_inliers, CV_32FC2); |
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int inlier_idx = 0; |
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for (size_t i = 0; i < matches_info.matches.size(); ++i) |
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{ |
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if (!matches_info.inliers_mask[i]) |
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continue; |
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const DMatch& m = matches_info.matches[i]; |
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Point2f p = features1.keypoints[m.queryIdx].pt; |
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p.x -= features1.img_size.width * 0.5f; |
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p.y -= features1.img_size.height * 0.5f; |
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src_points.at<Point2f>(0, inlier_idx) = p; |
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p = features2.keypoints[m.trainIdx].pt; |
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p.x -= features2.img_size.width * 0.5f; |
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p.y -= features2.img_size.height * 0.5f; |
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dst_points.at<Point2f>(0, inlier_idx) = p; |
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inlier_idx++; |
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} |
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// Rerun motion estimation on inliers only |
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matches_info.H = findHomography(src_points, dst_points, CV_RANSAC); |
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}
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