opencv/modules/features2d/src/matchers.cpp

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/*M///////////////////////////////////////////////////////////////////////////////////////
//
// IMPORTANT: READ BEFORE DOWNLOADING, COPYING, INSTALLING OR USING.
//
// By downloading, copying, installing or using the software you agree to this license.
// If you do not agree to this license, do not download, install,
// copy or use the software.
//
//
// Intel License Agreement
// For Open Source Computer Vision Library
//
// Copyright (C) 2000, Intel Corporation, all rights reserved.
// Third party copyrights are property of their respective owners.
//
// Redistribution and use in source and binary forms, with or without modification,
// are permitted provided that the following conditions are met:
//
// * Redistribution's of source code must retain the above copyright notice,
// this list of conditions and the following disclaimer.
//
// * Redistribution's in binary form must reproduce the above copyright notice,
// this list of conditions and the following disclaimer in the documentation
// and/or other materials provided with the distribution.
//
// * The name of Intel Corporation may not be used to endorse or promote products
// derived from this software without specific prior written permission.
//
// This software is provided by the copyright holders and contributors "as is" and
// any express or implied warranties, including, but not limited to, the implied
// warranties of merchantability and fitness for a particular purpose are disclaimed.
// In no event shall the Intel Corporation or contributors be liable for any direct,
// indirect, incidental, special, exemplary, or consequential damages
// (including, but not limited to, procurement of substitute goods or services;
// loss of use, data, or profits; or business interruption) however caused
// and on any theory of liability, whether in contract, strict liability,
// or tort (including negligence or otherwise) arising in any way out of
// the use of this software, even if advised of the possibility of such damage.
//
//M*/
#include "precomp.hpp"
#if defined(HAVE_EIGEN) && EIGEN_WORLD_VERSION == 2
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#include <Eigen/Array>
#endif
namespace cv
{
Mat windowedMatchingMask( const vector<KeyPoint>& keypoints1, const vector<KeyPoint>& keypoints2,
float maxDeltaX, float maxDeltaY )
{
if( keypoints1.empty() || keypoints2.empty() )
return Mat();
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int n1 = (int)keypoints1.size(), n2 = (int)keypoints2.size();
Mat mask( n1, n2, CV_8UC1 );
for( int i = 0; i < n1; i++ )
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{
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for( int j = 0; j < n2; j++ )
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{
Point2f diff = keypoints2[j].pt - keypoints1[i].pt;
mask.at<uchar>(i, j) = std::abs(diff.x) < maxDeltaX && std::abs(diff.y) < maxDeltaY;
}
}
return mask;
}
/****************************************************************************************\
* DescriptorMatcher *
\****************************************************************************************/
DescriptorMatcher::DescriptorCollection::DescriptorCollection()
{}
DescriptorMatcher::DescriptorCollection::DescriptorCollection( const DescriptorCollection& collection )
{
mergedDescriptors = collection.mergedDescriptors.clone();
copy( collection.startIdxs.begin(), collection.startIdxs.begin(), startIdxs.begin() );
}
DescriptorMatcher::DescriptorCollection::~DescriptorCollection()
{}
void DescriptorMatcher::DescriptorCollection::set( const vector<Mat>& descriptors )
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{
clear();
size_t imageCount = descriptors.size();
CV_Assert( imageCount > 0 );
startIdxs.resize( imageCount );
int dim = -1;
int type = -1;
startIdxs[0] = 0;
for( size_t i = 1; i < imageCount; i++ )
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{
int s = 0;
if( !descriptors[i-1].empty() )
{
dim = descriptors[i-1].cols;
type = descriptors[i-1].type();
s = descriptors[i-1].rows;
}
startIdxs[i] = startIdxs[i-1] + s;
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}
if( imageCount == 1 )
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{
if( descriptors[0].empty() ) return;
dim = descriptors[0].cols;
type = descriptors[0].type();
}
assert( dim > 0 );
int count = startIdxs[imageCount-1] + descriptors[imageCount-1].rows;
if( count > 0 )
{
mergedDescriptors.create( count, dim, type );
for( size_t i = 0; i < imageCount; i++ )
{
if( !descriptors[i].empty() )
{
CV_Assert( descriptors[i].cols == dim && descriptors[i].type() == type );
Mat m = mergedDescriptors.rowRange( startIdxs[i], startIdxs[i] + descriptors[i].rows );
descriptors[i].copyTo(m);
}
}
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}
}
void DescriptorMatcher::DescriptorCollection::clear()
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{
startIdxs.clear();
mergedDescriptors.release();
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}
const Mat DescriptorMatcher::DescriptorCollection::getDescriptor( int imgIdx, int localDescIdx ) const
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{
CV_Assert( imgIdx < (int)startIdxs.size() );
int globalIdx = startIdxs[imgIdx] + localDescIdx;
CV_Assert( globalIdx < (int)size() );
return getDescriptor( globalIdx );
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}
const Mat& DescriptorMatcher::DescriptorCollection::getDescriptors() const
{
return mergedDescriptors;
}
const Mat DescriptorMatcher::DescriptorCollection::getDescriptor( int globalDescIdx ) const
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{
CV_Assert( globalDescIdx < size() );
return mergedDescriptors.row( globalDescIdx );
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}
void DescriptorMatcher::DescriptorCollection::getLocalIdx( int globalDescIdx, int& imgIdx, int& localDescIdx ) const
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{
CV_Assert( (globalDescIdx>=0) && (globalDescIdx < size()) );
std::vector<int>::const_iterator img_it = std::upper_bound(startIdxs.begin(), startIdxs.end(), globalDescIdx);
--img_it;
imgIdx = (int)(img_it - startIdxs.begin());
localDescIdx = globalDescIdx - (*img_it);
}
int DescriptorMatcher::DescriptorCollection::size() const
{
return mergedDescriptors.rows;
}
/*
* DescriptorMatcher
*/
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static void convertMatches( const vector<vector<DMatch> >& knnMatches, vector<DMatch>& matches )
{
matches.clear();
matches.reserve( knnMatches.size() );
for( size_t i = 0; i < knnMatches.size(); i++ )
{
CV_Assert( knnMatches[i].size() <= 1 );
if( !knnMatches[i].empty() )
matches.push_back( knnMatches[i][0] );
}
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}
DescriptorMatcher::~DescriptorMatcher()
{}
void DescriptorMatcher::add( const vector<Mat>& descriptors )
{
trainDescCollection.insert( trainDescCollection.end(), descriptors.begin(), descriptors.end() );
}
const vector<Mat>& DescriptorMatcher::getTrainDescriptors() const
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{
return trainDescCollection;
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}
void DescriptorMatcher::clear()
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{
trainDescCollection.clear();
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}
bool DescriptorMatcher::empty() const
{
return trainDescCollection.empty();
}
void DescriptorMatcher::train()
{}
void DescriptorMatcher::match( const Mat& queryDescriptors, const Mat& trainDescriptors, vector<DMatch>& matches, const Mat& mask ) const
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{
Ptr<DescriptorMatcher> tempMatcher = clone(true);
tempMatcher->add( vector<Mat>(1, trainDescriptors) );
tempMatcher->match( queryDescriptors, matches, vector<Mat>(1, mask) );
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}
void DescriptorMatcher::knnMatch( const Mat& queryDescriptors, const Mat& trainDescriptors, vector<vector<DMatch> >& matches, int knn,
const Mat& mask, bool compactResult ) const
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{
Ptr<DescriptorMatcher> tempMatcher = clone(true);
tempMatcher->add( vector<Mat>(1, trainDescriptors) );
tempMatcher->knnMatch( queryDescriptors, matches, knn, vector<Mat>(1, mask), compactResult );
}
void DescriptorMatcher::radiusMatch( const Mat& queryDescriptors, const Mat& trainDescriptors, vector<vector<DMatch> >& matches, float maxDistance,
const Mat& mask, bool compactResult ) const
{
Ptr<DescriptorMatcher> tempMatcher = clone(true);
tempMatcher->add( vector<Mat>(1, trainDescriptors) );
tempMatcher->radiusMatch( queryDescriptors, matches, maxDistance, vector<Mat>(1, mask), compactResult );
}
void DescriptorMatcher::match( const Mat& queryDescriptors, vector<DMatch>& matches, const vector<Mat>& masks )
{
vector<vector<DMatch> > knnMatches;
knnMatch( queryDescriptors, knnMatches, 1, masks, true /*compactResult*/ );
convertMatches( knnMatches, matches );
}
void DescriptorMatcher::checkMasks( const vector<Mat>& masks, int queryDescriptorsCount ) const
{
if( isMaskSupported() && !masks.empty() )
{
// Check masks
size_t imageCount = trainDescCollection.size();
CV_Assert( masks.size() == imageCount );
for( size_t i = 0; i < imageCount; i++ )
{
if( !masks[i].empty() && !trainDescCollection[i].empty() )
{
CV_Assert( masks[i].rows == queryDescriptorsCount &&
masks[i].cols == trainDescCollection[i].rows &&
masks[i].type() == CV_8UC1 );
}
}
}
}
void DescriptorMatcher::knnMatch( const Mat& queryDescriptors, vector<vector<DMatch> >& matches, int knn,
const vector<Mat>& masks, bool compactResult )
{
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matches.clear();
if( empty() || queryDescriptors.empty() )
return;
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CV_Assert( knn > 0 );
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checkMasks( masks, queryDescriptors.rows );
train();
knnMatchImpl( queryDescriptors, matches, knn, masks, compactResult );
}
void DescriptorMatcher::radiusMatch( const Mat& queryDescriptors, vector<vector<DMatch> >& matches, float maxDistance,
const vector<Mat>& masks, bool compactResult )
{
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matches.clear();
if( empty() || queryDescriptors.empty() )
return;
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CV_Assert( maxDistance > std::numeric_limits<float>::epsilon() );
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checkMasks( masks, queryDescriptors.rows );
train();
radiusMatchImpl( queryDescriptors, matches, maxDistance, masks, compactResult );
}
void DescriptorMatcher::read( const FileNode& )
{}
void DescriptorMatcher::write( FileStorage& ) const
{}
bool DescriptorMatcher::isPossibleMatch( const Mat& mask, int queryIdx, int trainIdx )
{
return mask.empty() || mask.at<uchar>(queryIdx, trainIdx);
}
bool DescriptorMatcher::isMaskedOut( const vector<Mat>& masks, int queryIdx )
{
size_t outCount = 0;
for( size_t i = 0; i < masks.size(); i++ )
{
if( !masks[i].empty() && (countNonZero(masks[i].row(queryIdx)) == 0) )
outCount++;
}
return !masks.empty() && outCount == masks.size() ;
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}
///////////////////////////////////////////////////////////////////////////////////////////////////////
BFMatcher::BFMatcher( int _normType, bool _crossCheck )
{
normType = _normType;
crossCheck = _crossCheck;
}
Ptr<DescriptorMatcher> BFMatcher::clone( bool emptyTrainData ) const
{
BFMatcher* matcher = new BFMatcher(normType, crossCheck);
if( !emptyTrainData )
{
matcher->trainDescCollection.resize(trainDescCollection.size());
std::transform( trainDescCollection.begin(), trainDescCollection.end(),
matcher->trainDescCollection.begin(), clone_op );
}
return matcher;
}
void BFMatcher::knnMatchImpl( const Mat& queryDescriptors, vector<vector<DMatch> >& matches, int knn,
const vector<Mat>& masks, bool compactResult )
{
const int IMGIDX_SHIFT = 18;
const int IMGIDX_ONE = (1 << IMGIDX_SHIFT);
if( queryDescriptors.empty() || trainDescCollection.empty() )
{
matches.clear();
return;
}
CV_Assert( queryDescriptors.type() == trainDescCollection[0].type() );
matches.reserve(queryDescriptors.rows);
Mat dist, nidx;
int iIdx, imgCount = (int)trainDescCollection.size(), update = 0;
int dtype = normType == NORM_HAMMING || normType == NORM_HAMMING2 ||
(normType == NORM_L1 && queryDescriptors.type() == CV_8U) ? CV_32S : CV_32F;
CV_Assert( (int64)imgCount*IMGIDX_ONE < INT_MAX );
for( iIdx = 0; iIdx < imgCount; iIdx++ )
{
CV_Assert( trainDescCollection[iIdx].rows < IMGIDX_ONE );
batchDistance(queryDescriptors, trainDescCollection[iIdx], dist, dtype, nidx,
normType, knn, masks.empty() ? Mat() : masks[iIdx], update, crossCheck);
update += IMGIDX_ONE;
}
if( dtype == CV_32S )
{
Mat temp;
dist.convertTo(temp, CV_32F);
dist = temp;
}
for( int qIdx = 0; qIdx < queryDescriptors.rows; qIdx++ )
{
const float* distptr = dist.ptr<float>(qIdx);
const int* nidxptr = nidx.ptr<int>(qIdx);
matches.push_back( vector<DMatch>() );
vector<DMatch>& mq = matches.back();
mq.reserve(knn);
for( int k = 0; k < nidx.cols; k++ )
{
if( nidxptr[k] < 0 )
break;
mq.push_back( DMatch(qIdx, nidxptr[k] & (IMGIDX_ONE - 1),
nidxptr[k] >> IMGIDX_SHIFT, distptr[k]) );
}
if( mq.empty() && compactResult )
matches.pop_back();
}
}
void BFMatcher::radiusMatchImpl( const Mat& queryDescriptors, vector<vector<DMatch> >& matches,
float maxDistance, const vector<Mat>& masks, bool compactResult )
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{
if( queryDescriptors.empty() || trainDescCollection.empty() )
{
matches.clear();
return;
}
CV_Assert( queryDescriptors.type() == trainDescCollection[0].type() );
matches.resize(queryDescriptors.rows);
Mat dist, distf;
int iIdx, imgCount = (int)trainDescCollection.size();
int dtype = normType == NORM_HAMMING ||
(normType == NORM_L1 && queryDescriptors.type() == CV_8U) ? CV_32S : CV_32F;
for( iIdx = 0; iIdx < imgCount; iIdx++ )
{
batchDistance(queryDescriptors, trainDescCollection[iIdx], dist, dtype, noArray(),
normType, 0, masks.empty() ? Mat() : masks[iIdx], 0, false);
if( dtype == CV_32S )
dist.convertTo(distf, CV_32F);
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else
distf = dist;
for( int qIdx = 0; qIdx < queryDescriptors.rows; qIdx++ )
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{
const float* distptr = dist.ptr<float>(qIdx);
vector<DMatch>& mq = matches[qIdx];
for( int k = 0; k < dist.cols; k++ )
{
if( distptr[k] <= maxDistance )
mq.push_back( DMatch(qIdx, k, iIdx, distptr[k]) );
}
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}
}
int qIdx0 = 0;
for( int qIdx = 0; qIdx < queryDescriptors.rows; qIdx++ )
{
if( matches[qIdx].empty() && compactResult )
continue;
if( qIdx0 < qIdx )
std::swap(matches[qIdx], matches[qIdx0]);
std::sort( matches[qIdx0].begin(), matches[qIdx0].end() );
qIdx0++;
}
}
///////////////////////////////////////////////////////////////////////////////////////////////////////
/*
* Factory function for DescriptorMatcher creating
*/
Ptr<DescriptorMatcher> DescriptorMatcher::create( const string& descriptorMatcherType )
{
DescriptorMatcher* dm = 0;
if( !descriptorMatcherType.compare( "FlannBased" ) )
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{
dm = new FlannBasedMatcher();
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}
else if( !descriptorMatcherType.compare( "BruteForce" ) ) // L2
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{
dm = new BFMatcher(NORM_L2);
}
else if( !descriptorMatcherType.compare( "BruteForce-SL2" ) ) // Squared L2
{
dm = new BFMatcher(NORM_L2SQR);
}
else if( !descriptorMatcherType.compare( "BruteForce-L1" ) )
{
dm = new BFMatcher(NORM_L1);
}
else if( !descriptorMatcherType.compare("BruteForce-Hamming") ||
!descriptorMatcherType.compare("BruteForce-HammingLUT") )
{
dm = new BFMatcher(NORM_HAMMING);
}
else if( !descriptorMatcherType.compare("BruteForce-Hamming(2)") )
{
dm = new BFMatcher(NORM_HAMMING2);
}
else
CV_Error( CV_StsBadArg, "Unknown matcher name" );
return dm;
}
/*
* Flann based matcher
*/
FlannBasedMatcher::FlannBasedMatcher( const Ptr<flann::IndexParams>& _indexParams, const Ptr<flann::SearchParams>& _searchParams )
: indexParams(_indexParams), searchParams(_searchParams), addedDescCount(0)
{
CV_Assert( !_indexParams.empty() );
CV_Assert( !_searchParams.empty() );
}
void FlannBasedMatcher::add( const vector<Mat>& descriptors )
{
DescriptorMatcher::add( descriptors );
for( size_t i = 0; i < descriptors.size(); i++ )
{
addedDescCount += descriptors[i].rows;
}
}
void FlannBasedMatcher::clear()
{
DescriptorMatcher::clear();
mergedDescriptors.clear();
flannIndex.release();
addedDescCount = 0;
}
void FlannBasedMatcher::train()
{
if( flannIndex.empty() || mergedDescriptors.size() < addedDescCount )
{
mergedDescriptors.set( trainDescCollection );
flannIndex = new flann::Index( mergedDescriptors.getDescriptors(), *indexParams );
}
}
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void FlannBasedMatcher::read( const FileNode& fn)
{
if (indexParams == 0)
indexParams = new flann::IndexParams();
FileNode ip = fn["indexParams"];
CV_Assert(ip.type() == FileNode::SEQ);
for(int i = 0; i < (int)ip.size(); ++i)
{
CV_Assert(ip[i].type() == FileNode::MAP);
std::string name = (std::string)ip[i]["name"];
int type = (int)ip[i]["type"];
switch(type)
{
case CV_8U:
case CV_8S:
case CV_16U:
case CV_16S:
case CV_32S:
indexParams->setInt(name, (int) ip[i]["value"]);
break;
case CV_32F:
indexParams->setFloat(name, (float) ip[i]["value"]);
break;
case CV_64F:
indexParams->setDouble(name, (double) ip[i]["value"]);
break;
case CV_USRTYPE1:
indexParams->setString(name, (std::string) ip[i]["value"]);
break;
case CV_MAKETYPE(CV_USRTYPE1,2):
indexParams->setBool(name, (int) ip[i]["value"] != 0);
break;
case CV_MAKETYPE(CV_USRTYPE1,3):
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indexParams->setAlgorithm((int) ip[i]["value"]);
break;
};
}
if (searchParams == 0)
searchParams = new flann::SearchParams();
FileNode sp = fn["searchParams"];
CV_Assert(sp.type() == FileNode::SEQ);
for(int i = 0; i < (int)sp.size(); ++i)
{
CV_Assert(sp[i].type() == FileNode::MAP);
std::string name = (std::string)sp[i]["name"];
int type = (int)sp[i]["type"];
switch(type)
{
case CV_8U:
case CV_8S:
case CV_16U:
case CV_16S:
case CV_32S:
searchParams->setInt(name, (int) sp[i]["value"]);
break;
case CV_32F:
searchParams->setFloat(name, (float) ip[i]["value"]);
break;
case CV_64F:
searchParams->setDouble(name, (double) ip[i]["value"]);
break;
case CV_USRTYPE1:
searchParams->setString(name, (std::string) ip[i]["value"]);
break;
case CV_MAKETYPE(CV_USRTYPE1,2):
searchParams->setBool(name, (int) ip[i]["value"] != 0);
break;
case CV_MAKETYPE(CV_USRTYPE1,3):
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searchParams->setAlgorithm((int) ip[i]["value"]);
break;
};
}
flannIndex.release();
}
void FlannBasedMatcher::write( FileStorage& fs) const
{
fs << "indexParams" << "[";
if (indexParams != 0)
{
std::vector<std::string> names;
std::vector<int> types;
std::vector<std::string> strValues;
std::vector<double> numValues;
indexParams->getAll(names, types, strValues, numValues);
for(size_t i = 0; i < names.size(); ++i)
{
fs << "{" << "name" << names[i] << "type" << types[i] << "value";
switch(types[i])
{
case CV_8U:
fs << (uchar)numValues[i];
break;
case CV_8S:
fs << (char)numValues[i];
break;
case CV_16U:
fs << (ushort)numValues[i];
break;
case CV_16S:
fs << (short)numValues[i];
break;
case CV_32S:
case CV_MAKETYPE(CV_USRTYPE1,2):
case CV_MAKETYPE(CV_USRTYPE1,3):
fs << (int)numValues[i];
break;
case CV_32F:
fs << (float)numValues[i];
break;
case CV_64F:
fs << (double)numValues[i];
break;
case CV_USRTYPE1:
fs << strValues[i];
break;
default:
fs << (double)numValues[i];
fs << "typename" << strValues[i];
break;
}
fs << "}";
}
}
fs << "]" << "searchParams" << "[";
if (searchParams != 0)
{
std::vector<std::string> names;
std::vector<int> types;
std::vector<std::string> strValues;
std::vector<double> numValues;
searchParams->getAll(names, types, strValues, numValues);
for(size_t i = 0; i < names.size(); ++i)
{
fs << "{" << "name" << names[i] << "type" << types[i] << "value";
switch(types[i])
{
case CV_8U:
fs << (uchar)numValues[i];
break;
case CV_8S:
fs << (char)numValues[i];
break;
case CV_16U:
fs << (ushort)numValues[i];
break;
case CV_16S:
fs << (short)numValues[i];
break;
case CV_32S:
case CV_MAKETYPE(CV_USRTYPE1,2):
case CV_MAKETYPE(CV_USRTYPE1,3):
fs << (int)numValues[i];
break;
case CV_32F:
fs << (float)numValues[i];
break;
case CV_64F:
fs << (double)numValues[i];
break;
case CV_USRTYPE1:
fs << strValues[i];
break;
default:
fs << (double)numValues[i];
fs << "typename" << strValues[i];
break;
}
fs << "}";
}
}
fs << "]";
}
bool FlannBasedMatcher::isMaskSupported() const
{
return false;
}
Ptr<DescriptorMatcher> FlannBasedMatcher::clone( bool emptyTrainData ) const
{
FlannBasedMatcher* matcher = new FlannBasedMatcher(indexParams, searchParams);
if( !emptyTrainData )
{
CV_Error( CV_StsNotImplemented, "deep clone functionality is not implemented, because "
"Flann::Index has not copy constructor or clone method ");
//matcher->flannIndex;
matcher->addedDescCount = addedDescCount;
matcher->mergedDescriptors = DescriptorCollection( mergedDescriptors );
std::transform( trainDescCollection.begin(), trainDescCollection.end(),
matcher->trainDescCollection.begin(), clone_op );
}
return matcher;
}
void FlannBasedMatcher::convertToDMatches( const DescriptorCollection& collection, const Mat& indices, const Mat& dists,
vector<vector<DMatch> >& matches )
{
matches.resize( indices.rows );
for( int i = 0; i < indices.rows; i++ )
{
for( int j = 0; j < indices.cols; j++ )
{
int idx = indices.at<int>(i, j);
if( idx >= 0 )
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{
int imgIdx, trainIdx;
collection.getLocalIdx( idx, imgIdx, trainIdx );
float dist = 0;
if (dists.type() == CV_32S)
dist = static_cast<float>( dists.at<int>(i,j) );
else
dist = std::sqrt(dists.at<float>(i,j));
matches[i].push_back( DMatch( i, trainIdx, imgIdx, dist ) );
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}
}
}
}
void FlannBasedMatcher::knnMatchImpl( const Mat& queryDescriptors, vector<vector<DMatch> >& matches, int knn,
const vector<Mat>& /*masks*/, bool /*compactResult*/ )
{
Mat indices( queryDescriptors.rows, knn, CV_32SC1 );
Mat dists( queryDescriptors.rows, knn, CV_32FC1);
flannIndex->knnSearch( queryDescriptors, indices, dists, knn, *searchParams );
convertToDMatches( mergedDescriptors, indices, dists, matches );
}
void FlannBasedMatcher::radiusMatchImpl( const Mat& queryDescriptors, vector<vector<DMatch> >& matches, float maxDistance,
const vector<Mat>& /*masks*/, bool /*compactResult*/ )
{
const int count = mergedDescriptors.size(); // TODO do count as param?
Mat indices( queryDescriptors.rows, count, CV_32SC1, Scalar::all(-1) );
Mat dists( queryDescriptors.rows, count, CV_32FC1, Scalar::all(-1) );
for( int qIdx = 0; qIdx < queryDescriptors.rows; qIdx++ )
{
Mat queryDescriptorsRow = queryDescriptors.row(qIdx);
Mat indicesRow = indices.row(qIdx);
Mat distsRow = dists.row(qIdx);
flannIndex->radiusSearch( queryDescriptorsRow, indicesRow, distsRow, maxDistance*maxDistance, count, *searchParams );
}
convertToDMatches( mergedDescriptors, indices, dists, matches );
}
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/****************************************************************************************\
* GenericDescriptorMatcher *
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\****************************************************************************************/
/*
* KeyPointCollection
*/
GenericDescriptorMatcher::KeyPointCollection::KeyPointCollection() : pointCount(0)
{}
GenericDescriptorMatcher::KeyPointCollection::KeyPointCollection( const KeyPointCollection& collection )
{
pointCount = collection.pointCount;
std::transform( collection.images.begin(), collection.images.end(), images.begin(), clone_op );
keypoints.resize( collection.keypoints.size() );
for( size_t i = 0; i < keypoints.size(); i++ )
copy( collection.keypoints[i].begin(), collection.keypoints[i].end(), keypoints[i].begin() );
copy( collection.startIndices.begin(), collection.startIndices.end(), startIndices.begin() );
}
void GenericDescriptorMatcher::KeyPointCollection::add( const vector<Mat>& _images,
const vector<vector<KeyPoint> >& _points )
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{
CV_Assert( !_images.empty() );
CV_Assert( _images.size() == _points.size() );
images.insert( images.end(), _images.begin(), _images.end() );
keypoints.insert( keypoints.end(), _points.begin(), _points.end() );
for( size_t i = 0; i < _points.size(); i++ )
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pointCount += (int)_points[i].size();
size_t prevSize = startIndices.size(), addSize = _images.size();
startIndices.resize( prevSize + addSize );
if( prevSize == 0 )
startIndices[prevSize] = 0; //first
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else
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startIndices[prevSize] = (int)(startIndices[prevSize-1] + keypoints[prevSize-1].size());
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for( size_t i = prevSize + 1; i < prevSize + addSize; i++ )
{
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startIndices[i] = (int)(startIndices[i - 1] + keypoints[i - 1].size());
}
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}
void GenericDescriptorMatcher::KeyPointCollection::clear()
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{
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pointCount = 0;
images.clear();
keypoints.clear();
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startIndices.clear();
}
size_t GenericDescriptorMatcher::KeyPointCollection::keypointCount() const
{
return pointCount;
}
size_t GenericDescriptorMatcher::KeyPointCollection::imageCount() const
{
return images.size();
}
const vector<vector<KeyPoint> >& GenericDescriptorMatcher::KeyPointCollection::getKeypoints() const
{
return keypoints;
}
const vector<KeyPoint>& GenericDescriptorMatcher::KeyPointCollection::getKeypoints( int imgIdx ) const
{
CV_Assert( imgIdx < (int)imageCount() );
return keypoints[imgIdx];
}
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const KeyPoint& GenericDescriptorMatcher::KeyPointCollection::getKeyPoint( int imgIdx, int localPointIdx ) const
{
CV_Assert( imgIdx < (int)images.size() );
CV_Assert( localPointIdx < (int)keypoints[imgIdx].size() );
return keypoints[imgIdx][localPointIdx];
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}
const KeyPoint& GenericDescriptorMatcher::KeyPointCollection::getKeyPoint( int globalPointIdx ) const
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{
int imgIdx, localPointIdx;
getLocalIdx( globalPointIdx, imgIdx, localPointIdx );
return keypoints[imgIdx][localPointIdx];
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}
void GenericDescriptorMatcher::KeyPointCollection::getLocalIdx( int globalPointIdx, int& imgIdx, int& localPointIdx ) const
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{
imgIdx = -1;
CV_Assert( globalPointIdx < (int)keypointCount() );
for( size_t i = 1; i < startIndices.size(); i++ )
{
if( globalPointIdx < startIndices[i] )
{
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imgIdx = (int)(i - 1);
break;
}
}
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imgIdx = imgIdx == -1 ? (int)(startIndices.size() - 1) : imgIdx;
localPointIdx = globalPointIdx - startIndices[imgIdx];
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}
const vector<Mat>& GenericDescriptorMatcher::KeyPointCollection::getImages() const
{
return images;
}
const Mat& GenericDescriptorMatcher::KeyPointCollection::getImage( int imgIdx ) const
{
CV_Assert( imgIdx < (int)imageCount() );
return images[imgIdx];
}
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/*
* GenericDescriptorMatcher
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*/
GenericDescriptorMatcher::GenericDescriptorMatcher()
{}
GenericDescriptorMatcher::~GenericDescriptorMatcher()
{}
void GenericDescriptorMatcher::add( const vector<Mat>& images,
vector<vector<KeyPoint> >& keypoints )
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{
CV_Assert( !images.empty() );
CV_Assert( images.size() == keypoints.size() );
for( size_t i = 0; i < images.size(); i++ )
{
CV_Assert( !images[i].empty() );
KeyPointsFilter::runByImageBorder( keypoints[i], images[i].size(), 0 );
KeyPointsFilter::runByKeypointSize( keypoints[i], std::numeric_limits<float>::epsilon() );
}
trainPointCollection.add( images, keypoints );
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}
const vector<Mat>& GenericDescriptorMatcher::getTrainImages() const
{
return trainPointCollection.getImages();
}
const vector<vector<KeyPoint> >& GenericDescriptorMatcher::getTrainKeypoints() const
{
return trainPointCollection.getKeypoints();
}
void GenericDescriptorMatcher::clear()
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{
trainPointCollection.clear();
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}
void GenericDescriptorMatcher::train()
{}
void GenericDescriptorMatcher::classify( const Mat& queryImage, vector<KeyPoint>& queryKeypoints,
const Mat& trainImage, vector<KeyPoint>& trainKeypoints ) const
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{
vector<DMatch> matches;
match( queryImage, queryKeypoints, trainImage, trainKeypoints, matches );
// remap keypoint indices to descriptors
for( size_t i = 0; i < matches.size(); i++ )
queryKeypoints[matches[i].queryIdx].class_id = trainKeypoints[matches[i].trainIdx].class_id;
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}
void GenericDescriptorMatcher::classify( const Mat& queryImage, vector<KeyPoint>& queryKeypoints )
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{
vector<DMatch> matches;
match( queryImage, queryKeypoints, matches );
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// remap keypoint indices to descriptors
for( size_t i = 0; i < matches.size(); i++ )
queryKeypoints[matches[i].queryIdx].class_id = trainPointCollection.getKeyPoint( matches[i].trainIdx, matches[i].trainIdx ).class_id;
}
void GenericDescriptorMatcher::match( const Mat& queryImage, vector<KeyPoint>& queryKeypoints,
const Mat& trainImage, vector<KeyPoint>& trainKeypoints,
vector<DMatch>& matches, const Mat& mask ) const
{
Ptr<GenericDescriptorMatcher> tempMatcher = clone( true );
vector<vector<KeyPoint> > vecTrainPoints(1, trainKeypoints);
tempMatcher->add( vector<Mat>(1, trainImage), vecTrainPoints );
tempMatcher->match( queryImage, queryKeypoints, matches, vector<Mat>(1, mask) );
vecTrainPoints[0].swap( trainKeypoints );
}
void GenericDescriptorMatcher::knnMatch( const Mat& queryImage, vector<KeyPoint>& queryKeypoints,
const Mat& trainImage, vector<KeyPoint>& trainKeypoints,
vector<vector<DMatch> >& matches, int knn, const Mat& mask, bool compactResult ) const
{
Ptr<GenericDescriptorMatcher> tempMatcher = clone( true );
vector<vector<KeyPoint> > vecTrainPoints(1, trainKeypoints);
tempMatcher->add( vector<Mat>(1, trainImage), vecTrainPoints );
tempMatcher->knnMatch( queryImage, queryKeypoints, matches, knn, vector<Mat>(1, mask), compactResult );
vecTrainPoints[0].swap( trainKeypoints );
}
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void GenericDescriptorMatcher::radiusMatch( const Mat& queryImage, vector<KeyPoint>& queryKeypoints,
const Mat& trainImage, vector<KeyPoint>& trainKeypoints,
vector<vector<DMatch> >& matches, float maxDistance,
const Mat& mask, bool compactResult ) const
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{
Ptr<GenericDescriptorMatcher> tempMatcher = clone( true );
vector<vector<KeyPoint> > vecTrainPoints(1, trainKeypoints);
tempMatcher->add( vector<Mat>(1, trainImage), vecTrainPoints );
tempMatcher->radiusMatch( queryImage, queryKeypoints, matches, maxDistance, vector<Mat>(1, mask), compactResult );
vecTrainPoints[0].swap( trainKeypoints );
}
void GenericDescriptorMatcher::match( const Mat& queryImage, vector<KeyPoint>& queryKeypoints,
vector<DMatch>& matches, const vector<Mat>& masks )
{
vector<vector<DMatch> > knnMatches;
knnMatch( queryImage, queryKeypoints, knnMatches, 1, masks, false );
convertMatches( knnMatches, matches );
}
void GenericDescriptorMatcher::knnMatch( const Mat& queryImage, vector<KeyPoint>& queryKeypoints,
vector<vector<DMatch> >& matches, int knn,
const vector<Mat>& masks, bool compactResult )
{
matches.clear();
if( queryImage.empty() || queryKeypoints.empty() )
return;
KeyPointsFilter::runByImageBorder( queryKeypoints, queryImage.size(), 0 );
KeyPointsFilter::runByKeypointSize( queryKeypoints, std::numeric_limits<float>::epsilon() );
train();
knnMatchImpl( queryImage, queryKeypoints, matches, knn, masks, compactResult );
}
void GenericDescriptorMatcher::radiusMatch( const Mat& queryImage, vector<KeyPoint>& queryKeypoints,
vector<vector<DMatch> >& matches, float maxDistance,
const vector<Mat>& masks, bool compactResult )
{
matches.clear();
if( queryImage.empty() || queryKeypoints.empty() )
return;
KeyPointsFilter::runByImageBorder( queryKeypoints, queryImage.size(), 0 );
KeyPointsFilter::runByKeypointSize( queryKeypoints, std::numeric_limits<float>::epsilon() );
train();
radiusMatchImpl( queryImage, queryKeypoints, matches, maxDistance, masks, compactResult );
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}
void GenericDescriptorMatcher::read( const FileNode& )
{}
void GenericDescriptorMatcher::write( FileStorage& ) const
{}
bool GenericDescriptorMatcher::empty() const
{
return true;
}
/*
* Factory function for GenericDescriptorMatch creating
*/
Ptr<GenericDescriptorMatcher> GenericDescriptorMatcher::create( const string& genericDescritptorMatcherType,
const string &paramsFilename )
{
Ptr<GenericDescriptorMatcher> descriptorMatcher =
Algorithm::create<GenericDescriptorMatcher>("DescriptorMatcher." + genericDescritptorMatcherType);
if( !paramsFilename.empty() && !descriptorMatcher.empty() )
{
FileStorage fs = FileStorage( paramsFilename, FileStorage::READ );
if( fs.isOpened() )
{
descriptorMatcher->read( fs.root() );
fs.release();
}
}
return descriptorMatcher;
}
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/****************************************************************************************\
* VectorDescriptorMatcher *
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\****************************************************************************************/
VectorDescriptorMatcher::VectorDescriptorMatcher( const Ptr<DescriptorExtractor>& _extractor,
const Ptr<DescriptorMatcher>& _matcher )
: extractor( _extractor ), matcher( _matcher )
{
CV_Assert( !extractor.empty() && !matcher.empty() );
}
VectorDescriptorMatcher::~VectorDescriptorMatcher()
{}
void VectorDescriptorMatcher::add( const vector<Mat>& imgCollection,
vector<vector<KeyPoint> >& pointCollection )
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{
vector<Mat> descriptors;
extractor->compute( imgCollection, pointCollection, descriptors );
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matcher->add( descriptors );
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trainPointCollection.add( imgCollection, pointCollection );
}
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void VectorDescriptorMatcher::clear()
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{
//extractor->clear();
matcher->clear();
GenericDescriptorMatcher::clear();
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}
void VectorDescriptorMatcher::train()
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{
matcher->train();
}
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bool VectorDescriptorMatcher::isMaskSupported()
{
return matcher->isMaskSupported();
}
void VectorDescriptorMatcher::knnMatchImpl( const Mat& queryImage, vector<KeyPoint>& queryKeypoints,
vector<vector<DMatch> >& matches, int knn,
const vector<Mat>& masks, bool compactResult )
{
Mat queryDescriptors;
extractor->compute( queryImage, queryKeypoints, queryDescriptors );
matcher->knnMatch( queryDescriptors, matches, knn, masks, compactResult );
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}
void VectorDescriptorMatcher::radiusMatchImpl( const Mat& queryImage, vector<KeyPoint>& queryKeypoints,
vector<vector<DMatch> >& matches, float maxDistance,
const vector<Mat>& masks, bool compactResult )
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{
Mat queryDescriptors;
extractor->compute( queryImage, queryKeypoints, queryDescriptors );
matcher->radiusMatch( queryDescriptors, matches, maxDistance, masks, compactResult );
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}
void VectorDescriptorMatcher::read( const FileNode& fn )
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{
GenericDescriptorMatcher::read(fn);
extractor->read(fn);
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}
void VectorDescriptorMatcher::write (FileStorage& fs) const
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{
GenericDescriptorMatcher::write(fs);
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extractor->write (fs);
}
bool VectorDescriptorMatcher::empty() const
{
return extractor.empty() || extractor->empty() ||
matcher.empty() || matcher->empty();
}
Ptr<GenericDescriptorMatcher> VectorDescriptorMatcher::clone( bool emptyTrainData ) const
{
// TODO clone extractor
return new VectorDescriptorMatcher( extractor, matcher->clone(emptyTrainData) );
}
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}