|  | OpenCV
    4.5.1
    Open Source Computer Vision | 
| Classes | |
| class | cv::xfeatures2d::AffineFeature2D | 
| Class implementing affine adaptation for key points.  More... | |
| class | cv::xfeatures2d::BEBLID | 
| Class implementing BEBLID (Boosted Efficient Binary Local Image Descriptor), described in [226] .  More... | |
| class | cv::xfeatures2d::BoostDesc | 
| Class implementing BoostDesc (Learning Image Descriptors with Boosting), described in [230] and [231].  More... | |
| class | cv::xfeatures2d::BriefDescriptorExtractor | 
| Class for computing BRIEF descriptors described in [35] .  More... | |
| class | cv::xfeatures2d::DAISY | 
| Class implementing DAISY descriptor, described in [239].  More... | |
| class | cv::xfeatures2d::Elliptic_KeyPoint | 
| Elliptic region around an interest point.  More... | |
| class | cv::xfeatures2d::FREAK | 
| Class implementing the FREAK (Fast Retina Keypoint) keypoint descriptor, described in [5] .  More... | |
| class | cv::xfeatures2d::HarrisLaplaceFeatureDetector | 
| Class implementing the Harris-Laplace feature detector as described in [166].  More... | |
| class | cv::xfeatures2d::LATCH | 
| class | cv::xfeatures2d::LUCID | 
| Class implementing the locally uniform comparison image descriptor, described in [287].  More... | |
| class | cv::xfeatures2d::MSDDetector | 
| Class implementing the MSD (Maximal Self-Dissimilarity) keypoint detector, described in [240].  More... | |
| class | cv::xfeatures2d::PCTSignatures | 
| Class implementing PCT (position-color-texture) signature extraction as described in [127]. The algorithm is divided to a feature sampler and a clusterizer. Feature sampler produces samples at given set of coordinates. Clusterizer then produces clusters of these samples using k-means algorithm. Resulting set of clusters is the signature of the input image.  More... | |
| class | cv::xfeatures2d::PCTSignaturesSQFD | 
| Class implementing Signature Quadratic Form Distance (SQFD).  More... | |
| class | cv::xfeatures2d::StarDetector | 
| The class implements the keypoint detector introduced by [2], synonym of StarDetector. :  More... | |
| class | cv::xfeatures2d::TBMR | 
| Class implementing the Tree Based Morse Regions (TBMR) as described in [273] extended with scaled extraction ability.  More... | |
| class | cv::xfeatures2d::VGG | 
| Class implementing VGG (Oxford Visual Geometry Group) descriptor trained end to end using "Descriptor Learning Using Convex Optimisation" (DLCO) aparatus described in [217].  More... | |
| Functions | |
| void | cv::xfeatures2d::FASTForPointSet (InputArray image, std::vector< KeyPoint > &keypoints, int threshold, bool nonmaxSuppression=true, cv::FastFeatureDetector::DetectorType type=FastFeatureDetector::TYPE_9_16) | 
| Estimates cornerness for prespecified KeyPoints using the FAST algorithm.  More... | |
This section describes experimental algorithms for 2d feature detection.
| void cv::xfeatures2d::FASTForPointSet | ( | InputArray | image, | 
| std::vector< KeyPoint > & | keypoints, | ||
| int | threshold, | ||
| bool | nonmaxSuppression = true, | ||
| cv::FastFeatureDetector::DetectorType | type = FastFeatureDetector::TYPE_9_16 | ||
| ) | 
#include <opencv2/xfeatures2d.hpp>
Estimates cornerness for prespecified KeyPoints using the FAST algorithm.
| image | grayscale image where keypoints (corners) are detected. | 
| keypoints | keypoints which should be tested to fit the FAST criteria. Keypoints not being detected as corners are removed. | 
| threshold | threshold on difference between intensity of the central pixel and pixels of a circle around this pixel. | 
| nonmaxSuppression | if true, non-maximum suppression is applied to detected corners (keypoints). | 
| type | one of the three neighborhoods as defined in the paper: FastFeatureDetector::TYPE_9_16, FastFeatureDetector::TYPE_7_12, FastFeatureDetector::TYPE_5_8 | 
Detects corners using the FAST algorithm by [199] .
 1.8.13
 1.8.13