373 lines
13 KiB
C++
373 lines
13 KiB
C++
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/*
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By downloading, copying, installing or using the software you agree to this
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license. 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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License Agreement
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For Open Source Computer Vision Library
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(3-clause BSD License)
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Copyright (C) 2016, OpenCV Foundation, all rights reserved.
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Third party copyrights are property of their respective owners.
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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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* Redistributions 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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* Redistributions 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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* Neither the names of the copyright holders nor the names of the contributors
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may be used to endorse or promote products derived from this software
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without specific prior written permission.
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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
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disclaimed. In no event shall copyright holders or contributors be liable for
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any direct, 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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/**
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* @file sparse_matching_gpc.hpp
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* @author Vladislav Samsonov <vvladxx@gmail.com>
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* @brief Implementation of the Global Patch Collider.
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*
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* Implementation of the Global Patch Collider algorithm from the following paper:
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* http://research.microsoft.com/en-us/um/people/pkohli/papers/wfrik_cvpr2016.pdf
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*
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* @cite Wang_2016_CVPR
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*/
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#ifndef __OPENCV_OPTFLOW_SPARSE_MATCHING_GPC_HPP__
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#define __OPENCV_OPTFLOW_SPARSE_MATCHING_GPC_HPP__
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#include "opencv2/core.hpp"
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#include "opencv2/imgproc.hpp"
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namespace cv
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{
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namespace optflow
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{
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//! @addtogroup optflow
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//! @{
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struct CV_EXPORTS_W GPCPatchDescriptor
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{
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static const unsigned nFeatures = 18; //!< number of features in a patch descriptor
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Vec< double, nFeatures > feature;
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double dot( const Vec< double, nFeatures > &coef ) const;
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void markAsSeparated() { feature[0] = std::numeric_limits< double >::quiet_NaN(); }
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bool isSeparated() const { return cvIsNaN( feature[0] ) != 0; }
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};
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struct CV_EXPORTS_W GPCPatchSample
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{
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GPCPatchDescriptor ref;
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GPCPatchDescriptor pos;
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GPCPatchDescriptor neg;
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void getDirections( bool &refdir, bool &posdir, bool &negdir, const Vec< double, GPCPatchDescriptor::nFeatures > &coef, double rhs ) const;
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};
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typedef std::vector< GPCPatchSample > GPCSamplesVector;
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/** @brief Descriptor types for the Global Patch Collider.
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*/
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enum GPCDescType
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{
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GPC_DESCRIPTOR_DCT = 0, //!< Better quality but slow
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GPC_DESCRIPTOR_WHT //!< Worse quality but much faster
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};
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/** @brief Class encapsulating training samples.
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*/
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class CV_EXPORTS_W GPCTrainingSamples
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{
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private:
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GPCSamplesVector samples;
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int descriptorType;
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public:
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/** @brief This function can be used to extract samples from a pair of images and a ground truth flow.
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* Sizes of all the provided vectors must be equal.
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*/
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static Ptr< GPCTrainingSamples > create( const std::vector< String > &imagesFrom, const std::vector< String > &imagesTo,
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const std::vector< String > >, int descriptorType );
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static Ptr< GPCTrainingSamples > create( InputArrayOfArrays imagesFrom, InputArrayOfArrays imagesTo, InputArrayOfArrays gt,
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int descriptorType );
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size_t size() const { return samples.size(); }
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int type() const { return descriptorType; }
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operator GPCSamplesVector &() { return samples; }
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};
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/** @brief Class encapsulating training parameters.
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*/
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struct GPCTrainingParams
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{
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unsigned maxTreeDepth; //!< Maximum tree depth to stop partitioning.
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int minNumberOfSamples; //!< Minimum number of samples in the node to stop partitioning.
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int descriptorType; //!< Type of descriptors to use.
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bool printProgress; //!< Print progress to stdout.
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GPCTrainingParams( unsigned _maxTreeDepth = 20, int _minNumberOfSamples = 3, GPCDescType _descriptorType = GPC_DESCRIPTOR_DCT,
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bool _printProgress = true )
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: maxTreeDepth( _maxTreeDepth ), minNumberOfSamples( _minNumberOfSamples ), descriptorType( _descriptorType ),
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printProgress( _printProgress )
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{
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CV_Assert( check() );
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}
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bool check() const { return maxTreeDepth > 1 && minNumberOfSamples > 1; }
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};
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/** @brief Class encapsulating matching parameters.
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*/
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struct GPCMatchingParams
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{
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bool useOpenCL; //!< Whether to use OpenCL to speed up the matching.
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GPCMatchingParams( bool _useOpenCL = false ) : useOpenCL( _useOpenCL ) {}
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GPCMatchingParams( const GPCMatchingParams ¶ms ) : useOpenCL( params.useOpenCL ) {}
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};
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/** @brief Class for individual tree.
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*/
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class CV_EXPORTS_W GPCTree : public Algorithm
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{
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public:
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struct Node
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{
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Vec< double, GPCPatchDescriptor::nFeatures > coef; //!< Hyperplane coefficients
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double rhs; //!< Bias term of the hyperplane
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unsigned left;
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unsigned right;
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bool operator==( const Node &n ) const { return coef == n.coef && rhs == n.rhs && left == n.left && right == n.right; }
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};
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private:
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typedef GPCSamplesVector::iterator SIter;
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std::vector< Node > nodes;
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GPCTrainingParams params;
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bool trainNode( size_t nodeId, SIter begin, SIter end, unsigned depth );
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public:
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void train( GPCTrainingSamples &samples, const GPCTrainingParams params = GPCTrainingParams() );
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void write( FileStorage &fs ) const CV_OVERRIDE;
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void read( const FileNode &fn ) CV_OVERRIDE;
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unsigned findLeafForPatch( const GPCPatchDescriptor &descr ) const;
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static Ptr< GPCTree > create() { return makePtr< GPCTree >(); }
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bool operator==( const GPCTree &t ) const { return nodes == t.nodes; }
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int getDescriptorType() const { return params.descriptorType; }
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};
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template < int T > class GPCForest : public Algorithm
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{
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private:
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struct Trail
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{
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unsigned leaf[T]; //!< Inside which leaf of the tree 0..T the patch fell?
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Point2i coord; //!< Patch coordinates.
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bool operator==( const Trail &trail ) const { return memcmp( leaf, trail.leaf, sizeof( leaf ) ) == 0; }
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bool operator<( const Trail &trail ) const
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{
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for ( int i = 0; i < T - 1; ++i )
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if ( leaf[i] != trail.leaf[i] )
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return leaf[i] < trail.leaf[i];
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return leaf[T - 1] < trail.leaf[T - 1];
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}
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};
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class ParallelTrailsFilling : public ParallelLoopBody
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{
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private:
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const GPCForest *forest;
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const std::vector< GPCPatchDescriptor > *descr;
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std::vector< Trail > *trails;
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ParallelTrailsFilling &operator=( const ParallelTrailsFilling & );
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public:
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ParallelTrailsFilling( const GPCForest *_forest, const std::vector< GPCPatchDescriptor > *_descr, std::vector< Trail > *_trails )
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: forest( _forest ), descr( _descr ), trails( _trails ){};
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void operator()( const Range &range ) const CV_OVERRIDE
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{
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for ( int t = range.start; t < range.end; ++t )
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for ( size_t i = 0; i < descr->size(); ++i )
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trails->at( i ).leaf[t] = forest->tree[t].findLeafForPatch( descr->at( i ) );
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}
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};
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GPCTree tree[T];
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public:
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/** @brief Train the forest using one sample set for every tree.
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* Please, consider using the next method instead of this one for better quality.
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*/
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void train( GPCTrainingSamples &samples, const GPCTrainingParams params = GPCTrainingParams() )
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{
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for ( int i = 0; i < T; ++i )
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tree[i].train( samples, params );
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}
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/** @brief Train the forest using individual samples for each tree.
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* It is generally better to use this instead of the first method.
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*/
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void train( const std::vector< String > &imagesFrom, const std::vector< String > &imagesTo, const std::vector< String > >,
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const GPCTrainingParams params = GPCTrainingParams() )
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{
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for ( int i = 0; i < T; ++i )
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{
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Ptr< GPCTrainingSamples > samples =
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GPCTrainingSamples::create( imagesFrom, imagesTo, gt, params.descriptorType ); // Create training set for the tree
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tree[i].train( *samples, params );
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}
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}
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void train( InputArrayOfArrays imagesFrom, InputArrayOfArrays imagesTo, InputArrayOfArrays gt,
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const GPCTrainingParams params = GPCTrainingParams() )
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{
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for ( int i = 0; i < T; ++i )
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{
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Ptr< GPCTrainingSamples > samples =
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GPCTrainingSamples::create( imagesFrom, imagesTo, gt, params.descriptorType ); // Create training set for the tree
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tree[i].train( *samples, params );
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}
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}
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void write( FileStorage &fs ) const CV_OVERRIDE
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{
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fs << "ntrees" << T << "trees"
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<< "[";
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for ( int i = 0; i < T; ++i )
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{
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fs << "{";
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tree[i].write( fs );
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fs << "}";
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}
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fs << "]";
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}
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void read( const FileNode &fn ) CV_OVERRIDE
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{
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CV_Assert( T <= (int)fn["ntrees"] );
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FileNodeIterator it = fn["trees"].begin();
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for ( int i = 0; i < T; ++i, ++it )
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tree[i].read( *it );
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}
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/** @brief Find correspondences between two images.
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* @param[in] imgFrom First image in a sequence.
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* @param[in] imgTo Second image in a sequence.
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* @param[out] corr Output vector with pairs of corresponding points.
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* @param[in] params Additional matching parameters for fine-tuning.
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*/
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void findCorrespondences( InputArray imgFrom, InputArray imgTo, std::vector< std::pair< Point2i, Point2i > > &corr,
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const GPCMatchingParams params = GPCMatchingParams() ) const;
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static Ptr< GPCForest > create() { return makePtr< GPCForest >(); }
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};
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class CV_EXPORTS_W GPCDetails
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{
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public:
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static void dropOutliers( std::vector< std::pair< Point2i, Point2i > > &corr );
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static void getAllDescriptorsForImage( const Mat *imgCh, std::vector< GPCPatchDescriptor > &descr, const GPCMatchingParams &mp,
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int type );
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static void getCoordinatesFromIndex( size_t index, Size sz, int &x, int &y );
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};
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template < int T >
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void GPCForest< T >::findCorrespondences( InputArray imgFrom, InputArray imgTo, std::vector< std::pair< Point2i, Point2i > > &corr,
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const GPCMatchingParams params ) const
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{
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CV_Assert( imgFrom.channels() == 3 );
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CV_Assert( imgTo.channels() == 3 );
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Mat from, to;
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imgFrom.getMat().convertTo( from, CV_32FC3 );
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imgTo.getMat().convertTo( to, CV_32FC3 );
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cvtColor( from, from, COLOR_BGR2YCrCb );
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cvtColor( to, to, COLOR_BGR2YCrCb );
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Mat fromCh[3], toCh[3];
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split( from, fromCh );
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split( to, toCh );
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std::vector< GPCPatchDescriptor > descr;
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GPCDetails::getAllDescriptorsForImage( fromCh, descr, params, tree[0].getDescriptorType() );
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std::vector< Trail > trailsFrom( descr.size() ), trailsTo( descr.size() );
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for ( size_t i = 0; i < descr.size(); ++i )
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GPCDetails::getCoordinatesFromIndex( i, from.size(), trailsFrom[i].coord.x, trailsFrom[i].coord.y );
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parallel_for_( Range( 0, T ), ParallelTrailsFilling( this, &descr, &trailsFrom ) );
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descr.clear();
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GPCDetails::getAllDescriptorsForImage( toCh, descr, params, tree[0].getDescriptorType() );
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for ( size_t i = 0; i < descr.size(); ++i )
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GPCDetails::getCoordinatesFromIndex( i, to.size(), trailsTo[i].coord.x, trailsTo[i].coord.y );
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parallel_for_( Range( 0, T ), ParallelTrailsFilling( this, &descr, &trailsTo ) );
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std::sort( trailsFrom.begin(), trailsFrom.end() );
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std::sort( trailsTo.begin(), trailsTo.end() );
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for ( size_t i = 0; i < trailsFrom.size(); ++i )
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{
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bool uniq = true;
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while ( i + 1 < trailsFrom.size() && trailsFrom[i] == trailsFrom[i + 1] )
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++i, uniq = false;
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if ( uniq )
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{
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typename std::vector< Trail >::const_iterator lb = std::lower_bound( trailsTo.begin(), trailsTo.end(), trailsFrom[i] );
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if ( lb != trailsTo.end() && *lb == trailsFrom[i] && ( ( lb + 1 ) == trailsTo.end() || !( *lb == *( lb + 1 ) ) ) )
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corr.push_back( std::make_pair( trailsFrom[i].coord, lb->coord ) );
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}
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}
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GPCDetails::dropOutliers( corr );
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}
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//! @}
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} // namespace optflow
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CV_EXPORTS void write( FileStorage &fs, const String &name, const optflow::GPCTree::Node &node );
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CV_EXPORTS void read( const FileNode &fn, optflow::GPCTree::Node &node, optflow::GPCTree::Node );
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} // namespace cv
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#endif
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