Open Source Computer Vision Library https://opencv.org/
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/*M///////////////////////////////////////////////////////////////////////////////////////
//
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// Intel License Agreement
// For Open Source Computer Vision Library
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#include "precomp.hpp"
using namespace std;
namespace cv
{
/*
FeatureDetector
*/
struct MaskPredicate
{
MaskPredicate( const Mat& _mask ) : mask(_mask)
{}
MaskPredicate& operator=(const MaskPredicate&) { return *this; }
bool operator() (const KeyPoint& key_pt) const
{
return mask.at<uchar>( (int)(key_pt.pt.y + 0.5f), (int)(key_pt.pt.x + 0.5f) ) == 0;
}
const Mat& mask;
};
void FeatureDetector::removeInvalidPoints( const Mat& mask, vector<KeyPoint>& keypoints )
{
if( mask.empty() )
return;
keypoints.erase(remove_if(keypoints.begin(), keypoints.end(), MaskPredicate(mask)), keypoints.end());
};
/*
FastFeatureDetector
*/
FastFeatureDetector::FastFeatureDetector( int _threshold, bool _nonmaxSuppression )
: threshold(_threshold), nonmaxSuppression(_nonmaxSuppression)
{}
void FastFeatureDetector::read (const FileNode& fn)
{
threshold = fn["threshold"];
nonmaxSuppression = (int)fn["nonmaxSuppression"] ? true : false;
}
void FastFeatureDetector::write (FileStorage& fs) const
{
fs << "threshold" << threshold;
fs << "nonmaxSuppression" << nonmaxSuppression;
}
void FastFeatureDetector::detectImpl( const Mat& image, const Mat& mask, vector<KeyPoint>& keypoints) const
{
FAST( image, keypoints, threshold, nonmaxSuppression );
removeInvalidPoints( mask, keypoints );
}
/*
GoodFeaturesToTrackDetector
*/
GoodFeaturesToTrackDetector::GoodFeaturesToTrackDetector( int _maxCorners, double _qualityLevel, \
double _minDistance, int _blockSize,
bool _useHarrisDetector, double _k )
: maxCorners(_maxCorners), qualityLevel(_qualityLevel), minDistance(_minDistance),
blockSize(_blockSize), useHarrisDetector(_useHarrisDetector), k(_k)
{}
void GoodFeaturesToTrackDetector::read (const FileNode& fn)
{
maxCorners = fn["maxCorners"];
qualityLevel = fn["qualityLevel"];
minDistance = fn["minDistance"];
blockSize = fn["blockSize"];
useHarrisDetector = (int)fn["useHarrisDetector"] != 0;
k = fn["k"];
}
void GoodFeaturesToTrackDetector::write (FileStorage& fs) const
{
fs << "maxCorners" << maxCorners;
fs << "qualityLevel" << qualityLevel;
fs << "minDistance" << minDistance;
fs << "blockSize" << blockSize;
fs << "useHarrisDetector" << useHarrisDetector;
fs << "k" << k;
}
void GoodFeaturesToTrackDetector::detectImpl( const Mat& image, const Mat& mask,
vector<KeyPoint>& keypoints ) const
{
vector<Point2f> corners;
goodFeaturesToTrack( image, corners, maxCorners, qualityLevel, minDistance, mask,
blockSize, useHarrisDetector, k );
keypoints.resize(corners.size());
vector<Point2f>::const_iterator corner_it = corners.begin();
vector<KeyPoint>::iterator keypoint_it = keypoints.begin();
for( ; corner_it != corners.end(); ++corner_it, ++keypoint_it )
{
*keypoint_it = KeyPoint( *corner_it, (float)blockSize );
}
}
/*
MserFeatureDetector
*/
MserFeatureDetector::MserFeatureDetector( int delta, int minArea, int maxArea,
double maxVariation, double minDiversity,
int maxEvolution, double areaThreshold,
double minMargin, int edgeBlurSize )
: mser( delta, minArea, maxArea, maxVariation, minDiversity,
maxEvolution, areaThreshold, minMargin, edgeBlurSize )
{}
MserFeatureDetector::MserFeatureDetector( CvMSERParams params )
: mser( params.delta, params.minArea, params.maxArea, params.maxVariation, params.minDiversity,
params.maxEvolution, params.areaThreshold, params.minMargin, params.edgeBlurSize )
{}
void MserFeatureDetector::read (const FileNode& fn)
{
int delta = fn["delta"];
int minArea = fn["minArea"];
int maxArea = fn["maxArea"];
float maxVariation = fn["maxVariation"];
float minDiversity = fn["minDiversity"];
int maxEvolution = fn["maxEvolution"];
double areaThreshold = fn["areaThreshold"];
double minMargin = fn["minMargin"];
int edgeBlurSize = fn["edgeBlurSize"];
mser = MSER( delta, minArea, maxArea, maxVariation, minDiversity,
maxEvolution, areaThreshold, minMargin, edgeBlurSize );
}
void MserFeatureDetector::write (FileStorage& fs) const
{
//fs << "algorithm" << getAlgorithmName ();
fs << "delta" << mser.delta;
fs << "minArea" << mser.minArea;
fs << "maxArea" << mser.maxArea;
fs << "maxVariation" << mser.maxVariation;
fs << "minDiversity" << mser.minDiversity;
fs << "maxEvolution" << mser.maxEvolution;
fs << "areaThreshold" << mser.areaThreshold;
fs << "minMargin" << mser.minMargin;
fs << "edgeBlurSize" << mser.edgeBlurSize;
}
void MserFeatureDetector::detectImpl( const Mat& image, const Mat& mask, vector<KeyPoint>& keypoints ) const
{
vector<vector<Point> > msers;
mser(image, msers, mask);
keypoints.resize( msers.size() );
vector<vector<Point> >::const_iterator contour_it = msers.begin();
vector<KeyPoint>::iterator keypoint_it = keypoints.begin();
for( ; contour_it != msers.end(); ++contour_it, ++keypoint_it )
{
// TODO check transformation from MSER region to KeyPoint
RotatedRect rect = fitEllipse(Mat(*contour_it));
*keypoint_it = KeyPoint( rect.center, sqrt(rect.size.height*rect.size.width), rect.angle);
}
}
/*
StarFeatureDetector
*/
StarFeatureDetector::StarFeatureDetector(int maxSize, int responseThreshold,
int lineThresholdProjected,
int lineThresholdBinarized,
int suppressNonmaxSize)
: star( maxSize, responseThreshold, lineThresholdProjected,
lineThresholdBinarized, suppressNonmaxSize)
{}
void StarFeatureDetector::read (const FileNode& fn)
{
int maxSize = fn["maxSize"];
int responseThreshold = fn["responseThreshold"];
int lineThresholdProjected = fn["lineThresholdProjected"];
int lineThresholdBinarized = fn["lineThresholdBinarized"];
int suppressNonmaxSize = fn["suppressNonmaxSize"];
star = StarDetector( maxSize, responseThreshold, lineThresholdProjected,
lineThresholdBinarized, suppressNonmaxSize);
}
void StarFeatureDetector::write (FileStorage& fs) const
{
//fs << "algorithm" << getAlgorithmName ();
fs << "maxSize" << star.maxSize;
fs << "responseThreshold" << star.responseThreshold;
fs << "lineThresholdProjected" << star.lineThresholdProjected;
fs << "lineThresholdBinarized" << star.lineThresholdBinarized;
fs << "suppressNonmaxSize" << star.suppressNonmaxSize;
}
void StarFeatureDetector::detectImpl( const Mat& image, const Mat& mask, vector<KeyPoint>& keypoints) const
{
star(image, keypoints);
removeInvalidPoints(mask, keypoints);
}
/*
SiftFeatureDetector
*/
SiftFeatureDetector::SiftFeatureDetector(double threshold, double edgeThreshold,
int nOctaves, int nOctaveLayers, int firstOctave, int angleMode) :
sift(threshold, edgeThreshold, nOctaves, nOctaveLayers, firstOctave, angleMode)
{
}
void SiftFeatureDetector::read (const FileNode& fn)
{
double threshold = fn["threshold"];
double edgeThreshold = fn["edgeThreshold"];
int nOctaves = fn["nOctaves"];
int nOctaveLayers = fn["nOctaveLayers"];
int firstOctave = fn["firstOctave"];
int angleMode = fn["angleMode"];
sift = SIFT(threshold, edgeThreshold, nOctaves, nOctaveLayers, firstOctave, angleMode);
}
void SiftFeatureDetector::write (FileStorage& fs) const
{
//fs << "algorithm" << getAlgorithmName ();
SIFT::CommonParams commParams = sift.getCommonParams ();
SIFT::DetectorParams detectorParams = sift.getDetectorParams ();
fs << "threshold" << detectorParams.threshold;
fs << "edgeThreshold" << detectorParams.edgeThreshold;
fs << "nOctaves" << commParams.nOctaves;
fs << "nOctaveLayers" << commParams.nOctaveLayers;
fs << "firstOctave" << commParams.firstOctave;
fs << "angleMode" << commParams.angleMode;
}
void SiftFeatureDetector::detectImpl( const Mat& image, const Mat& mask,
vector<KeyPoint>& keypoints) const
{
sift(image, mask, keypoints);
}
/*
SurfFeatureDetector
*/
SurfFeatureDetector::SurfFeatureDetector( double hessianThreshold, int octaves, int octaveLayers)
: surf(hessianThreshold, octaves, octaveLayers)
{}
void SurfFeatureDetector::read (const FileNode& fn)
{
double hessianThreshold = fn["hessianThreshold"];
int octaves = fn["octaves"];
int octaveLayers = fn["octaveLayers"];
surf = SURF( hessianThreshold, octaves, octaveLayers );
}
void SurfFeatureDetector::write (FileStorage& fs) const
{
//fs << "algorithm" << getAlgorithmName ();
fs << "hessianThreshold" << surf.hessianThreshold;
fs << "octaves" << surf.nOctaves;
fs << "octaveLayers" << surf.nOctaveLayers;
}
void SurfFeatureDetector::detectImpl( const Mat& image, const Mat& mask,
vector<KeyPoint>& keypoints) const
{
surf(image, mask, keypoints);
}
Ptr<FeatureDetector> createDetector( const string& detectorType )
{
FeatureDetector* fd = 0;
if( !detectorType.compare( "FAST" ) )
{
fd = new FastFeatureDetector( 10/*threshold*/, true/*nonmax_suppression*/ );
}
else if( !detectorType.compare( "STAR" ) )
{
fd = new StarFeatureDetector( 16/*max_size*/, 5/*response_threshold*/, 10/*line_threshold_projected*/,
8/*line_threshold_binarized*/, 5/*suppress_nonmax_size*/ );
}
else if( !detectorType.compare( "SIFT" ) )
{
fd = new SiftFeatureDetector(SIFT::DetectorParams::GET_DEFAULT_THRESHOLD(),
SIFT::DetectorParams::GET_DEFAULT_EDGE_THRESHOLD());
}
else if( !detectorType.compare( "SURF" ) )
{
15 years ago
fd = new SurfFeatureDetector( 400./*hessian_threshold*/, 3 /*octaves*/, 4/*octave_layers*/ );
}
else if( !detectorType.compare( "MSER" ) )
{
fd = new MserFeatureDetector( 5/*delta*/, 60/*min_area*/, 14400/*_max_area*/, 0.25f/*max_variation*/,
0.2/*min_diversity*/, 200/*max_evolution*/, 1.01/*area_threshold*/, 0.003/*min_margin*/,
5/*edge_blur_size*/ );
}
else if( !detectorType.compare( "GFTT" ) )
{
fd = new GoodFeaturesToTrackDetector( 1000/*maxCorners*/, 0.01/*qualityLevel*/, 1./*minDistance*/,
3/*int _blockSize*/, false/*useHarrisDetector*/, 0.04/*k*/ );
}
else if( !detectorType.compare( "HARRIS" ) )
{
fd = new GoodFeaturesToTrackDetector( 1000/*maxCorners*/, 0.01/*qualityLevel*/, 1./*minDistance*/,
3/*int _blockSize*/, true/*useHarrisDetector*/, 0.04/*k*/ );
}
else
{
//CV_Error( CV_StsBadArg, "unsupported feature detector type");
}
return fd;
}
}