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490 lines
21 KiB
C++
490 lines
21 KiB
C++
/*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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#ifndef __OPENCV_CUDAFEATURES2D_HPP__
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#define __OPENCV_CUDAFEATURES2D_HPP__
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#ifndef __cplusplus
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# error cudafeatures2d.hpp header must be compiled as C++
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#endif
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#include "opencv2/core/cuda.hpp"
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#include "opencv2/features2d.hpp"
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#include "opencv2/cudafilters.hpp"
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/**
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@addtogroup cuda
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@{
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@defgroup cudafeatures2d Feature Detection and Description
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@}
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*/
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namespace cv { namespace cuda {
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//! @addtogroup cudafeatures2d
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//! @{
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//
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// DescriptorMatcher
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//
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/** @brief Abstract base class for matching keypoint descriptors.
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It has two groups of match methods: for matching descriptors of an image with another image or with
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an image set.
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*/
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class CV_EXPORTS DescriptorMatcher : public cv::Algorithm
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{
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public:
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//
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// Factories
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//
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/** @brief Brute-force descriptor matcher.
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For each descriptor in the first set, this matcher finds the closest descriptor in the second set
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by trying each one. This descriptor matcher supports masking permissible matches of descriptor
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sets.
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@param normType One of NORM_L1, NORM_L2, NORM_HAMMING. L1 and L2 norms are
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preferable choices for SIFT and SURF descriptors, NORM_HAMMING should be used with ORB, BRISK and
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BRIEF).
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*/
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static Ptr<DescriptorMatcher> createBFMatcher(int normType = cv::NORM_L2);
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//
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// Utility
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//
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/** @brief Returns true if the descriptor matcher supports masking permissible matches.
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*/
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virtual bool isMaskSupported() const = 0;
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//
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// Descriptor collection
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//
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/** @brief Adds descriptors to train a descriptor collection.
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If the collection is not empty, the new descriptors are added to existing train descriptors.
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@param descriptors Descriptors to add. Each descriptors[i] is a set of descriptors from the same
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train image.
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*/
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virtual void add(const std::vector<GpuMat>& descriptors) = 0;
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/** @brief Returns a constant link to the train descriptor collection.
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*/
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virtual const std::vector<GpuMat>& getTrainDescriptors() const = 0;
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/** @brief Clears the train descriptor collection.
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*/
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virtual void clear() = 0;
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/** @brief Returns true if there are no train descriptors in the collection.
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*/
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virtual bool empty() const = 0;
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/** @brief Trains a descriptor matcher.
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Trains a descriptor matcher (for example, the flann index). In all methods to match, the method
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train() is run every time before matching.
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*/
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virtual void train() = 0;
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//
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// 1 to 1 match
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//
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/** @brief Finds the best match for each descriptor from a query set (blocking version).
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@param queryDescriptors Query set of descriptors.
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@param trainDescriptors Train set of descriptors. This set is not added to the train descriptors
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collection stored in the class object.
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@param matches Matches. If a query descriptor is masked out in mask , no match is added for this
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descriptor. So, matches size may be smaller than the query descriptors count.
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@param mask Mask specifying permissible matches between an input query and train matrices of
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descriptors.
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In the first variant of this method, the train descriptors are passed as an input argument. In the
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second variant of the method, train descriptors collection that was set by DescriptorMatcher::add is
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used. Optional mask (or masks) can be passed to specify which query and training descriptors can be
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matched. Namely, queryDescriptors[i] can be matched with trainDescriptors[j] only if
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mask.at\<uchar\>(i,j) is non-zero.
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*/
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virtual void match(InputArray queryDescriptors, InputArray trainDescriptors,
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std::vector<DMatch>& matches,
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InputArray mask = noArray()) = 0;
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/** @overload
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*/
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virtual void match(InputArray queryDescriptors,
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std::vector<DMatch>& matches,
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const std::vector<GpuMat>& masks = std::vector<GpuMat>()) = 0;
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/** @brief Finds the best match for each descriptor from a query set (asynchronous version).
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@param queryDescriptors Query set of descriptors.
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@param trainDescriptors Train set of descriptors. This set is not added to the train descriptors
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collection stored in the class object.
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@param matches Matches array stored in GPU memory. Internal representation is not defined.
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Use DescriptorMatcher::matchConvert method to retrieve results in standard representation.
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@param mask Mask specifying permissible matches between an input query and train matrices of
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descriptors.
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@param stream CUDA stream.
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In the first variant of this method, the train descriptors are passed as an input argument. In the
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second variant of the method, train descriptors collection that was set by DescriptorMatcher::add is
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used. Optional mask (or masks) can be passed to specify which query and training descriptors can be
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matched. Namely, queryDescriptors[i] can be matched with trainDescriptors[j] only if
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mask.at\<uchar\>(i,j) is non-zero.
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*/
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virtual void matchAsync(InputArray queryDescriptors, InputArray trainDescriptors,
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OutputArray matches,
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InputArray mask = noArray(),
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Stream& stream = Stream::Null()) = 0;
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/** @overload
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*/
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virtual void matchAsync(InputArray queryDescriptors,
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OutputArray matches,
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const std::vector<GpuMat>& masks = std::vector<GpuMat>(),
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Stream& stream = Stream::Null()) = 0;
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/** @brief Converts matches array from internal representation to standard matches vector.
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The method is supposed to be used with DescriptorMatcher::matchAsync to get final result.
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Call this method only after DescriptorMatcher::matchAsync is completed (ie. after synchronization).
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@param gpu_matches Matches, returned from DescriptorMatcher::matchAsync.
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@param matches Vector of DMatch objects.
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*/
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virtual void matchConvert(InputArray gpu_matches,
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std::vector<DMatch>& matches) = 0;
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//
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// knn match
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//
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/** @brief Finds the k best matches for each descriptor from a query set (blocking version).
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@param queryDescriptors Query set of descriptors.
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@param trainDescriptors Train set of descriptors. This set is not added to the train descriptors
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collection stored in the class object.
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@param matches Matches. Each matches[i] is k or less matches for the same query descriptor.
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@param k Count of best matches found per each query descriptor or less if a query descriptor has
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less than k possible matches in total.
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@param mask Mask specifying permissible matches between an input query and train matrices of
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descriptors.
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@param compactResult Parameter used when the mask (or masks) is not empty. If compactResult is
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false, the matches vector has the same size as queryDescriptors rows. If compactResult is true,
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the matches vector does not contain matches for fully masked-out query descriptors.
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These extended variants of DescriptorMatcher::match methods find several best matches for each query
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descriptor. The matches are returned in the distance increasing order. See DescriptorMatcher::match
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for the details about query and train descriptors.
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*/
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virtual void knnMatch(InputArray queryDescriptors, InputArray trainDescriptors,
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std::vector<std::vector<DMatch> >& matches,
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int k,
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InputArray mask = noArray(),
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bool compactResult = false) = 0;
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/** @overload
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*/
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virtual void knnMatch(InputArray queryDescriptors,
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std::vector<std::vector<DMatch> >& matches,
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int k,
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const std::vector<GpuMat>& masks = std::vector<GpuMat>(),
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bool compactResult = false) = 0;
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/** @brief Finds the k best matches for each descriptor from a query set (asynchronous version).
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@param queryDescriptors Query set of descriptors.
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@param trainDescriptors Train set of descriptors. This set is not added to the train descriptors
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collection stored in the class object.
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@param matches Matches array stored in GPU memory. Internal representation is not defined.
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Use DescriptorMatcher::knnMatchConvert method to retrieve results in standard representation.
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@param k Count of best matches found per each query descriptor or less if a query descriptor has
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less than k possible matches in total.
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@param mask Mask specifying permissible matches between an input query and train matrices of
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descriptors.
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@param stream CUDA stream.
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These extended variants of DescriptorMatcher::matchAsync methods find several best matches for each query
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descriptor. The matches are returned in the distance increasing order. See DescriptorMatcher::matchAsync
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for the details about query and train descriptors.
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*/
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virtual void knnMatchAsync(InputArray queryDescriptors, InputArray trainDescriptors,
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OutputArray matches,
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int k,
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InputArray mask = noArray(),
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Stream& stream = Stream::Null()) = 0;
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/** @overload
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*/
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virtual void knnMatchAsync(InputArray queryDescriptors,
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OutputArray matches,
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int k,
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const std::vector<GpuMat>& masks = std::vector<GpuMat>(),
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Stream& stream = Stream::Null()) = 0;
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/** @brief Converts matches array from internal representation to standard matches vector.
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The method is supposed to be used with DescriptorMatcher::knnMatchAsync to get final result.
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Call this method only after DescriptorMatcher::knnMatchAsync is completed (ie. after synchronization).
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@param gpu_matches Matches, returned from DescriptorMatcher::knnMatchAsync.
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@param matches Vector of DMatch objects.
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@param compactResult Parameter used when the mask (or masks) is not empty. If compactResult is
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false, the matches vector has the same size as queryDescriptors rows. If compactResult is true,
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the matches vector does not contain matches for fully masked-out query descriptors.
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*/
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virtual void knnMatchConvert(InputArray gpu_matches,
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std::vector< std::vector<DMatch> >& matches,
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bool compactResult = false) = 0;
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//
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// radius match
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//
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/** @brief For each query descriptor, finds the training descriptors not farther than the specified distance (blocking version).
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@param queryDescriptors Query set of descriptors.
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@param trainDescriptors Train set of descriptors. This set is not added to the train descriptors
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collection stored in the class object.
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@param matches Found matches.
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@param maxDistance Threshold for the distance between matched descriptors. Distance means here
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metric distance (e.g. Hamming distance), not the distance between coordinates (which is measured
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in Pixels)!
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@param mask Mask specifying permissible matches between an input query and train matrices of
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descriptors.
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@param compactResult Parameter used when the mask (or masks) is not empty. If compactResult is
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false, the matches vector has the same size as queryDescriptors rows. If compactResult is true,
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the matches vector does not contain matches for fully masked-out query descriptors.
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For each query descriptor, the methods find such training descriptors that the distance between the
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query descriptor and the training descriptor is equal or smaller than maxDistance. Found matches are
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returned in the distance increasing order.
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*/
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virtual void radiusMatch(InputArray queryDescriptors, InputArray trainDescriptors,
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std::vector<std::vector<DMatch> >& matches,
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float maxDistance,
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InputArray mask = noArray(),
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bool compactResult = false) = 0;
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/** @overload
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*/
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virtual void radiusMatch(InputArray queryDescriptors,
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std::vector<std::vector<DMatch> >& matches,
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float maxDistance,
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const std::vector<GpuMat>& masks = std::vector<GpuMat>(),
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bool compactResult = false) = 0;
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/** @brief For each query descriptor, finds the training descriptors not farther than the specified distance (asynchronous version).
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@param queryDescriptors Query set of descriptors.
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@param trainDescriptors Train set of descriptors. This set is not added to the train descriptors
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collection stored in the class object.
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@param matches Matches array stored in GPU memory. Internal representation is not defined.
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Use DescriptorMatcher::radiusMatchConvert method to retrieve results in standard representation.
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@param maxDistance Threshold for the distance between matched descriptors. Distance means here
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metric distance (e.g. Hamming distance), not the distance between coordinates (which is measured
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in Pixels)!
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@param mask Mask specifying permissible matches between an input query and train matrices of
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descriptors.
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@param stream CUDA stream.
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For each query descriptor, the methods find such training descriptors that the distance between the
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query descriptor and the training descriptor is equal or smaller than maxDistance. Found matches are
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returned in the distance increasing order.
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*/
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virtual void radiusMatchAsync(InputArray queryDescriptors, InputArray trainDescriptors,
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OutputArray matches,
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float maxDistance,
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InputArray mask = noArray(),
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Stream& stream = Stream::Null()) = 0;
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/** @overload
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*/
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virtual void radiusMatchAsync(InputArray queryDescriptors,
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OutputArray matches,
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float maxDistance,
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const std::vector<GpuMat>& masks = std::vector<GpuMat>(),
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Stream& stream = Stream::Null()) = 0;
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/** @brief Converts matches array from internal representation to standard matches vector.
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The method is supposed to be used with DescriptorMatcher::radiusMatchAsync to get final result.
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Call this method only after DescriptorMatcher::radiusMatchAsync is completed (ie. after synchronization).
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@param gpu_matches Matches, returned from DescriptorMatcher::radiusMatchAsync.
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@param matches Vector of DMatch objects.
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@param compactResult Parameter used when the mask (or masks) is not empty. If compactResult is
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false, the matches vector has the same size as queryDescriptors rows. If compactResult is true,
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the matches vector does not contain matches for fully masked-out query descriptors.
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*/
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virtual void radiusMatchConvert(InputArray gpu_matches,
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std::vector< std::vector<DMatch> >& matches,
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bool compactResult = false) = 0;
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};
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//
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// Feature2DAsync
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//
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/** @brief Abstract base class for CUDA asynchronous 2D image feature detectors and descriptor extractors.
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*/
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class CV_EXPORTS Feature2DAsync
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{
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public:
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virtual ~Feature2DAsync();
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/** @brief Detects keypoints in an image.
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@param image Image.
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@param keypoints The detected keypoints.
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@param mask Mask specifying where to look for keypoints (optional). It must be a 8-bit integer
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matrix with non-zero values in the region of interest.
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@param stream CUDA stream.
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*/
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virtual void detectAsync(InputArray image,
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OutputArray keypoints,
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InputArray mask = noArray(),
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Stream& stream = Stream::Null());
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/** @brief Computes the descriptors for a set of keypoints detected in an image.
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@param image Image.
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@param keypoints Input collection of keypoints.
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@param descriptors Computed descriptors. Row j is the descriptor for j-th keypoint.
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@param stream CUDA stream.
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*/
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virtual void computeAsync(InputArray image,
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OutputArray keypoints,
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OutputArray descriptors,
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Stream& stream = Stream::Null());
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/** Detects keypoints and computes the descriptors. */
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virtual void detectAndComputeAsync(InputArray image,
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InputArray mask,
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OutputArray keypoints,
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OutputArray descriptors,
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bool useProvidedKeypoints = false,
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Stream& stream = Stream::Null());
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/** Converts keypoints array from internal representation to standard vector. */
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virtual void convert(InputArray gpu_keypoints,
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std::vector<KeyPoint>& keypoints) = 0;
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};
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//
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// FastFeatureDetector
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//
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/** @brief Wrapping class for feature detection using the FAST method.
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*/
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class CV_EXPORTS FastFeatureDetector : public cv::FastFeatureDetector, public Feature2DAsync
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{
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public:
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enum
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{
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LOCATION_ROW = 0,
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RESPONSE_ROW,
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ROWS_COUNT,
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FEATURE_SIZE = 7
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};
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static Ptr<FastFeatureDetector> create(int threshold=10,
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bool nonmaxSuppression=true,
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int type=FastFeatureDetector::TYPE_9_16,
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int max_npoints = 5000);
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virtual void setMaxNumPoints(int max_npoints) = 0;
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virtual int getMaxNumPoints() const = 0;
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};
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//
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// ORB
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//
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/** @brief Class implementing the ORB (*oriented BRIEF*) keypoint detector and descriptor extractor
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*
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* @sa cv::ORB
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*/
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class CV_EXPORTS ORB : public cv::ORB, public Feature2DAsync
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{
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public:
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enum
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{
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X_ROW = 0,
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Y_ROW,
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RESPONSE_ROW,
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ANGLE_ROW,
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OCTAVE_ROW,
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SIZE_ROW,
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ROWS_COUNT
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};
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static Ptr<ORB> create(int nfeatures=500,
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float scaleFactor=1.2f,
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int nlevels=8,
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int edgeThreshold=31,
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int firstLevel=0,
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int WTA_K=2,
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int scoreType=ORB::HARRIS_SCORE,
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int patchSize=31,
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int fastThreshold=20,
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bool blurForDescriptor=false);
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//! if true, image will be blurred before descriptors calculation
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virtual void setBlurForDescriptor(bool blurForDescriptor) = 0;
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virtual bool getBlurForDescriptor() const = 0;
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};
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//! @}
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}} // namespace cv { namespace cuda {
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#endif /* __OPENCV_CUDAFEATURES2D_HPP__ */
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