opencv/modules/ocl/src/brute_force_matcher.cpp
2012-10-31 16:01:56 +08:00

1834 lines
69 KiB
C++

/*M///////////////////////////////////////////////////////////////////////////////////////
//
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//
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// If you do not agree to this license, do not download, install,
// copy or use the software.
//
//
// License Agreement
// For Open Source Computer Vision Library
//
// Copyright (C) 2010-2012, Multicoreware, Inc., all rights reserved.
// Copyright (C) 2010-2012, Advanced Micro Devices, Inc., all rights reserved.
// Third party copyrights are property of their respective owners.
//
// @Authors
// Nathan, liujun@multicorewareinc.com
//
// 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,
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// and on any theory of liability, whether in contract, strict liability,
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//M*/
#include "precomp.hpp"
#include <iterator>
#include <vector>
using namespace cv;
using namespace cv::ocl;
using namespace std;
#if !defined (HAVE_OPENCL)
cv::ocl::BruteForceMatcher_OCL_base::BruteForceMatcher_OCL_base(DistType)
{
throw_nogpu();
}
void cv::ocl::BruteForceMatcher_OCL_base::add(const vector<oclMat> &)
{
throw_nogpu();
}
const vector<oclMat> &cv::ocl::BruteForceMatcher_OCL_base::getTrainDescriptors() const
{
throw_nogpu();
return trainDescCollection;
}
void cv::ocl::BruteForceMatcher_OCL_base::clear()
{
throw_nogpu();
}
bool cv::ocl::BruteForceMatcher_OCL_base::empty() const
{
throw_nogpu();
return true;
}
bool cv::ocl::BruteForceMatcher_OCL_base::isMaskSupported() const
{
throw_nogpu();
return true;
}
void cv::ocl::BruteForceMatcher_OCL_base::matchSingle(const oclMat &, const oclMat &, oclMat &, oclMat &, const oclMat &)
{
throw_nogpu();
}
void cv::ocl::BruteForceMatcher_OCL_base::matchDownload(const oclMat &, const oclMat &, vector<DMatch> &)
{
throw_nogpu();
}
void cv::ocl::BruteForceMatcher_OCL_base::matchConvert(const Mat &, const Mat &, vector<DMatch> &)
{
throw_nogpu();
}
void cv::ocl::BruteForceMatcher_OCL_base::match(const oclMat &, const oclMat &, vector<DMatch> &, const oclMat &)
{
throw_nogpu();
}
void cv::ocl::BruteForceMatcher_OCL_base::makeGpuCollection(oclMat &, oclMat &, const vector<oclMat> &)
{
throw_nogpu();
}
void cv::ocl::BruteForceMatcher_OCL_base::matchCollection(const oclMat &, const oclMat &, oclMat &, oclMat &, oclMat &, const oclMat &)
{
throw_nogpu();
}
void cv::ocl::BruteForceMatcher_OCL_base::matchDownload(const oclMat &, const oclMat &, const oclMat &, vector<DMatch> &)
{
throw_nogpu();
}
void cv::ocl::BruteForceMatcher_OCL_base::matchConvert(const Mat &, const Mat &, const Mat &, vector<DMatch> &)
{
throw_nogpu();
}
void cv::ocl::BruteForceMatcher_OCL_base::match(const oclMat &, vector<DMatch> &, const vector<oclMat> &)
{
throw_nogpu();
}
void cv::ocl::BruteForceMatcher_OCL_base::knnMatchSingle(const oclMat &, const oclMat &, oclMat &, oclMat &, oclMat &, int, const oclMat &)
{
throw_nogpu();
}
void cv::ocl::BruteForceMatcher_OCL_base::knnMatchDownload(const oclMat &, const oclMat &, vector< vector<DMatch> > &, bool)
{
throw_nogpu();
}
void cv::ocl::BruteForceMatcher_OCL_base::knnMatchConvert(const Mat &, const Mat &, vector< vector<DMatch> > &, bool)
{
throw_nogpu();
}
void cv::ocl::BruteForceMatcher_OCL_base::knnMatch(const oclMat &, const oclMat &, vector< vector<DMatch> > &, int, const oclMat &, bool)
{
throw_nogpu();
}
void cv::ocl::BruteForceMatcher_OCL_base::knnMatch2Collection(const oclMat &, const oclMat &, oclMat &, oclMat &, oclMat &, const oclMat &)
{
throw_nogpu();
}
void cv::ocl::BruteForceMatcher_OCL_base::knnMatch2Download(const oclMat &, const oclMat &, const oclMat &, vector< vector<DMatch> > &, bool)
{
throw_nogpu();
}
void cv::ocl::BruteForceMatcher_OCL_base::knnMatch2Convert(const Mat &, const Mat &, const Mat &, vector< vector<DMatch> > &, bool)
{
throw_nogpu();
}
void cv::ocl::BruteForceMatcher_OCL_base::knnMatch(const oclMat &, vector< vector<DMatch> > &, int, const vector<oclMat> &, bool)
{
throw_nogpu();
}
void cv::ocl::BruteForceMatcher_OCL_base::radiusMatchSingle(const oclMat &, const oclMat &, oclMat &, oclMat &, oclMat &, float, const oclMat &)
{
throw_nogpu();
}
void cv::ocl::BruteForceMatcher_OCL_base::radiusMatchDownload(const oclMat &, const oclMat &, const oclMat &, vector< vector<DMatch> > &, bool)
{
throw_nogpu();
}
void cv::ocl::BruteForceMatcher_OCL_base::radiusMatchConvert(const Mat &, const Mat &, const Mat &, vector< vector<DMatch> > &, bool)
{
throw_nogpu();
}
void cv::ocl::BruteForceMatcher_OCL_base::radiusMatch(const oclMat &, const oclMat &, vector< vector<DMatch> > &, float, const oclMat &, bool)
{
throw_nogpu();
}
void cv::ocl::BruteForceMatcher_OCL_base::radiusMatchCollection(const oclMat &, oclMat &, oclMat &, oclMat &, oclMat &, float, const vector<oclMat> &)
{
throw_nogpu();
}
void cv::ocl::BruteForceMatcher_OCL_base::radiusMatchDownload(const oclMat &, const oclMat &, const oclMat &, const oclMat &, vector< vector<DMatch> > &, bool)
{
throw_nogpu();
}
void cv::ocl::BruteForceMatcher_OCL_base::radiusMatchConvert(const Mat &, const Mat &, const Mat &, const Mat &, vector< vector<DMatch> > &, bool)
{
throw_nogpu();
}
void cv::ocl::BruteForceMatcher_OCL_base::radiusMatch(const oclMat &, vector< vector<DMatch> > &, float, const vector<oclMat> &, bool)
{
throw_nogpu();
}
#else /* !defined (HAVE_OPENCL) */
using namespace std;
namespace cv
{
namespace ocl
{
////////////////////////////////////OpenCL kernel strings//////////////////////////
extern const char *brute_force_match;
}
}
template < int BLOCK_SIZE, int MAX_DESC_LEN, typename T/*, typename Mask*/ >
void matchUnrolledCached(const oclMat &query, const oclMat &train, const oclMat &mask,
const oclMat &trainIdx, const oclMat &distance, int distType)
{
cv::ocl::Context *ctx = query.clCxt;
size_t globalSize[] = {(query.rows + BLOCK_SIZE - 1) / BLOCK_SIZE * BLOCK_SIZE, BLOCK_SIZE, 1};
size_t localSize[] = {BLOCK_SIZE, BLOCK_SIZE, 1};
const size_t smemSize = (BLOCK_SIZE * (MAX_DESC_LEN >= 2 * BLOCK_SIZE ? MAX_DESC_LEN : 2 * BLOCK_SIZE) + BLOCK_SIZE * BLOCK_SIZE) * sizeof(int);
int block_size = BLOCK_SIZE;
int m_size = MAX_DESC_LEN;
vector< pair<size_t, const void *> > args;
if(globalSize[0] != 0)
{
args.push_back( make_pair( sizeof(cl_mem), (void *)&query.data ));
args.push_back( make_pair( sizeof(cl_mem), (void *)&train.data ));
args.push_back( make_pair( sizeof(cl_mem), (void *)&mask.data ));
args.push_back( make_pair( sizeof(cl_mem), (void *)&trainIdx.data ));
args.push_back( make_pair( sizeof(cl_mem), (void *)&distance.data ));
args.push_back( make_pair( smemSize, (void *)NULL));
args.push_back( make_pair( sizeof(cl_int), (void *)&block_size ));
args.push_back( make_pair( sizeof(cl_int), (void *)&m_size ));
args.push_back( make_pair( sizeof(cl_int), (void *)&query.rows ));
args.push_back( make_pair( sizeof(cl_int), (void *)&query.cols ));
args.push_back( make_pair( sizeof(cl_int), (void *)&train.rows ));
args.push_back( make_pair( sizeof(cl_int), (void *)&train.cols ));
args.push_back( make_pair( sizeof(cl_int), (void *)&query.step ));
args.push_back( make_pair( sizeof(cl_int), (void *)&distType ));
std::string kernelName = "BruteForceMatch_UnrollMatch";
openCLExecuteKernel(ctx, &brute_force_match, kernelName, globalSize, localSize, args, -1, -1);
}
}
template < int BLOCK_SIZE, int MAX_DESC_LEN, typename T/*, typename Mask*/ >
void matchUnrolledCached(const oclMat /*query*/, const oclMat * /*trains*/, int /*n*/, const oclMat /*mask*/,
const oclMat &/*bestTrainIdx*/, const oclMat & /*bestImgIdx*/, const oclMat & /*bestDistance*/, int /*distType*/)
{
}
template < int BLOCK_SIZE, typename T/*, typename Mask*/ >
void match(const oclMat &query, const oclMat &train, const oclMat &mask,
const oclMat &trainIdx, const oclMat &distance, int distType)
{
cv::ocl::Context *ctx = query.clCxt;
size_t globalSize[] = {(query.rows + BLOCK_SIZE - 1) / BLOCK_SIZE * BLOCK_SIZE, BLOCK_SIZE, 1};
size_t localSize[] = {BLOCK_SIZE, BLOCK_SIZE, 1};
const size_t smemSize = (2 * BLOCK_SIZE * BLOCK_SIZE) * sizeof(int);
int block_size = BLOCK_SIZE;
vector< pair<size_t, const void *> > args;
if(globalSize[0] != 0)
{
args.push_back( make_pair( sizeof(cl_mem), (void *)&query.data ));
args.push_back( make_pair( sizeof(cl_mem), (void *)&train.data ));
args.push_back( make_pair( sizeof(cl_mem), (void *)&mask.data ));
args.push_back( make_pair( sizeof(cl_mem), (void *)&trainIdx.data ));
args.push_back( make_pair( sizeof(cl_mem), (void *)&distance.data ));
args.push_back( make_pair( smemSize, (void *)NULL));
args.push_back( make_pair( sizeof(cl_int), (void *)&block_size ));
args.push_back( make_pair( sizeof(cl_int), (void *)&query.rows ));
args.push_back( make_pair( sizeof(cl_int), (void *)&query.cols ));
args.push_back( make_pair( sizeof(cl_int), (void *)&train.rows ));
args.push_back( make_pair( sizeof(cl_int), (void *)&train.cols ));
args.push_back( make_pair( sizeof(cl_int), (void *)&query.step ));
args.push_back( make_pair( sizeof(cl_int), (void *)&distType ));
std::string kernelName = "BruteForceMatch_Match";
openCLExecuteKernel(ctx, &brute_force_match, kernelName, globalSize, localSize, args, -1, -1);
}
}
template < int BLOCK_SIZE, typename T/*, typename Mask*/ >
void match(const oclMat /*query*/, const oclMat * /*trains*/, int /*n*/, const oclMat /*mask*/,
const oclMat &/*bestTrainIdx*/, const oclMat & /*bestImgIdx*/, const oclMat & /*bestDistance*/, int /*distType*/)
{
}
//radius_matchUnrolledCached
template < int BLOCK_SIZE, int MAX_DESC_LEN, typename T/*, typename Mask*/ >
void matchUnrolledCached(const oclMat &query, const oclMat &train, float maxDistance, const oclMat &mask,
const oclMat &trainIdx, const oclMat &distance, const oclMat &nMatches, int distType)
{
cv::ocl::Context *ctx = query.clCxt;
size_t globalSize[] = {(train.rows + BLOCK_SIZE - 1) / BLOCK_SIZE * BLOCK_SIZE, (query.rows + BLOCK_SIZE - 1) / BLOCK_SIZE * BLOCK_SIZE, 1};
size_t localSize[] = {BLOCK_SIZE, BLOCK_SIZE, 1};
const size_t smemSize = (2 * BLOCK_SIZE * BLOCK_SIZE) * sizeof(int);
int block_size = BLOCK_SIZE;
int m_size = MAX_DESC_LEN;
vector< pair<size_t, const void *> > args;
if(globalSize[0] != 0)
{
args.push_back( make_pair( sizeof(cl_mem), (void *)&query.data ));
args.push_back( make_pair( sizeof(cl_mem), (void *)&train.data ));
args.push_back( make_pair( sizeof(cl_float), (void *)&maxDistance ));
args.push_back( make_pair( sizeof(cl_mem), (void *)&mask.data ));
args.push_back( make_pair( sizeof(cl_mem), (void *)&trainIdx.data ));
args.push_back( make_pair( sizeof(cl_mem), (void *)&distance.data ));
args.push_back( make_pair( sizeof(cl_mem), (void *)&nMatches.data ));
args.push_back( make_pair( smemSize, (void *)NULL));
args.push_back( make_pair( sizeof(cl_int), (void *)&block_size ));
args.push_back( make_pair( sizeof(cl_int), (void *)&m_size ));
args.push_back( make_pair( sizeof(cl_int), (void *)&query.rows ));
args.push_back( make_pair( sizeof(cl_int), (void *)&query.cols ));
args.push_back( make_pair( sizeof(cl_int), (void *)&train.rows ));
args.push_back( make_pair( sizeof(cl_int), (void *)&train.cols ));
args.push_back( make_pair( sizeof(cl_int), (void *)&trainIdx.cols ));
args.push_back( make_pair( sizeof(cl_int), (void *)&query.step ));
args.push_back( make_pair( sizeof(cl_int), (void *)&trainIdx.step ));
args.push_back( make_pair( sizeof(cl_int), (void *)&distType ));
std::string kernelName = "BruteForceMatch_RadiusUnrollMatch";
openCLExecuteKernel(ctx, &brute_force_match, kernelName, globalSize, localSize, args, -1, -1);
}
}
//radius_match
template < int BLOCK_SIZE, typename T/*, typename Mask*/ >
void radius_match(const oclMat &query, const oclMat &train, float maxDistance, const oclMat &mask,
const oclMat &trainIdx, const oclMat &distance, const oclMat &nMatches, int distType)
{
cv::ocl::Context *ctx = query.clCxt;
size_t globalSize[] = {(train.rows + BLOCK_SIZE - 1) / BLOCK_SIZE * BLOCK_SIZE, (query.rows + BLOCK_SIZE - 1) / BLOCK_SIZE * BLOCK_SIZE, 1};
size_t localSize[] = {BLOCK_SIZE, BLOCK_SIZE, 1};
const size_t smemSize = (2 * BLOCK_SIZE * BLOCK_SIZE) * sizeof(int);
int block_size = BLOCK_SIZE;
vector< pair<size_t, const void *> > args;
if(globalSize[0] != 0)
{
args.push_back( make_pair( sizeof(cl_mem), (void *)&query.data ));
args.push_back( make_pair( sizeof(cl_mem), (void *)&train.data ));
args.push_back( make_pair( sizeof(cl_float), (void *)&maxDistance ));
args.push_back( make_pair( sizeof(cl_mem), (void *)&mask.data ));
args.push_back( make_pair( sizeof(cl_mem), (void *)&trainIdx.data ));
args.push_back( make_pair( sizeof(cl_mem), (void *)&distance.data ));
args.push_back( make_pair( sizeof(cl_mem), (void *)&nMatches.data ));
args.push_back( make_pair( smemSize, (void *)NULL));
args.push_back( make_pair( sizeof(cl_int), (void *)&block_size ));
args.push_back( make_pair( sizeof(cl_int), (void *)&query.rows ));
args.push_back( make_pair( sizeof(cl_int), (void *)&query.cols ));
args.push_back( make_pair( sizeof(cl_int), (void *)&train.rows ));
args.push_back( make_pair( sizeof(cl_int), (void *)&train.cols ));
args.push_back( make_pair( sizeof(cl_int), (void *)&trainIdx.cols ));
args.push_back( make_pair( sizeof(cl_int), (void *)&query.step ));
args.push_back( make_pair( sizeof(cl_int), (void *)&trainIdx.step ));
args.push_back( make_pair( sizeof(cl_int), (void *)&distType ));
std::string kernelName = "BruteForceMatch_RadiusMatch";
openCLExecuteKernel(ctx, &brute_force_match, kernelName, globalSize, localSize, args, -1, -1);
//float *dis = (float *)clEnqueueMapBuffer(ctx->impl->clCmdQueue, (cl_mem)distance.data, CL_TRUE, CL_MAP_READ, 0, 8, 0, NULL, NULL, NULL);
//printf("%f, %f\n", dis[0], dis[1]);
}
}
// with mask
template < typename T/*, typename Mask*/ >
void matchDispatcher(const oclMat &query, const oclMat &train, const oclMat &mask,
const oclMat &trainIdx, const oclMat &distance, int distType)
{
if (query.cols <= 64)
{
matchUnrolledCached<16, 64, T>(query, train, mask, trainIdx, distance, distType);
}
else if (query.cols <= 128)
{
matchUnrolledCached<16, 128, T>(query, train, mask, trainIdx, distance, distType);
}
/*else if (query.cols <= 256)
{
matchUnrolled<16, 256, Dist>(query, train, mask, trainIdx, distance, stream);
}
else if (query.cols <= 512)
{
matchUnrolled<16, 512, Dist>(query, train, mask, trainIdx, distance, stream);
}
else if (query.cols <= 1024)
{
matchUnrolled<16, 1024, Dist>(query, train, mask, trainIdx, distance, stream);
}*/
else
{
match<16, T>(query, train, mask, trainIdx, distance, distType);
}
}
// without mask
template < typename T/*, typename Mask*/ >
void matchDispatcher(const oclMat &query, const oclMat &train, const oclMat &trainIdx, const oclMat &distance, int distType)
{
oclMat mask;
if (query.cols <= 64)
{
matchUnrolledCached<16, 64, T>(query, train, mask, trainIdx, distance, distType);
}
else if (query.cols <= 128)
{
matchUnrolledCached<16, 128, T>(query, train, mask, trainIdx, distance, distType);
}
/*else if (query.cols <= 256)
{
matchUnrolled<16, 256, Dist>(query, trains, n, mask, trainIdx, imgIdx, distance);
}
else if (query.cols <= 512)
{
matchUnrolled<16, 512, Dist>(query, trains, n, mask, trainIdx, imgIdx, distance);
}
else if (query.cols <= 1024)
{
matchUnrolled<16, 1024, Dist>(query, trains, n, mask, trainIdx, imgIdx, distance);
}*/
else
{
match<16, T>(query, train, mask, trainIdx, distance, distType);
}
}
template < typename T/*, typename Mask*/ >
void matchDispatcher(const oclMat &query, const oclMat *trains, int n, const oclMat &mask,
const oclMat &trainIdx, const oclMat &imgIdx, const oclMat &distance, int distType)
{
if (query.cols <= 64)
{
matchUnrolledCached<16, 64, T>(query, trains, n, mask, trainIdx, imgIdx, distance, distType);
}
else if (query.cols <= 128)
{
matchUnrolledCached<16, 128, T>(query, trains, n, mask, trainIdx, imgIdx, distance, distType);
}
/*else if (query.cols <= 256)
{
matchUnrolled<16, 256, Dist>(query, trains, n, mask, trainIdx, imgIdx, distance, stream);
}
else if (query.cols <= 512)
{
matchUnrolled<16, 512, Dist>(query, trains, n, mask, trainIdx, imgIdx, distance, stream);
}
else if (query.cols <= 1024)
{
matchUnrolled<16, 1024, Dist>(query, trains, n, mask, trainIdx, imgIdx, distance, stream);
}*/
else
{
match<16, T>(query, trains, n, mask, trainIdx, imgIdx, distance, distType);
}
}
template < typename T/*, typename Mask*/ >
void matchDispatcher(const oclMat &query, const oclMat *trains, int n, const oclMat &trainIdx,
const oclMat &imgIdx, const oclMat &distance, int distType)
{
oclMat mask;
if (query.cols <= 64)
{
matchUnrolledCached<16, 64, T>(query, trains, n, mask, trainIdx, imgIdx, distance, distType);
}
else if (query.cols <= 128)
{
matchUnrolledCached<16, 128, T>(query, trains, n, mask, trainIdx, imgIdx, distance, distType);
}
/*else if (query.cols <= 256)
{
matchUnrolled<16, 256, Dist>(query, trains, n, mask, trainIdx, imgIdx, distance, stream);
}
else if (query.cols <= 512)
{
matchUnrolled<16, 512, Dist>(query, trains, n, mask, trainIdx, imgIdx, distance, stream);
}
else if (query.cols <= 1024)
{
matchUnrolled<16, 1024, Dist>(query, trains, n, mask, trainIdx, imgIdx, distance, stream);
}*/
else
{
match<16, T>(query, trains, n, mask, trainIdx, imgIdx, distance, distType);
}
}
//radius matchDispatcher
// with mask
template < typename T/*, typename Mask*/ >
void matchDispatcher(const oclMat &query, const oclMat &train, float maxDistance, const oclMat &mask,
const oclMat &trainIdx, const oclMat &distance, const oclMat &nMatches, int distType)
{
if (query.cols <= 64)
{
matchUnrolledCached<16, 64, T>(query, train, maxDistance, mask, trainIdx, distance, nMatches, distType);
}
else if (query.cols <= 128)
{
matchUnrolledCached<16, 128, T>(query, train, maxDistance, mask, trainIdx, distance, nMatches, distType);
}
/*else if (query.cols <= 256)
{
matchUnrolled<16, 256, Dist>(query, train, maxDistance, mask, trainIdx, distance, nMatches, stream);
}
else if (query.cols <= 512)
{
matchUnrolled<16, 512, Dist>(query, train, maxDistance, mask, trainIdx, distance, nMatches, stream);
}
else if (query.cols <= 1024)
{
matchUnrolled<16, 1024, Dist>(query, train, maxDistance, mask, trainIdx, distance, nMatches, stream);
}*/
else
{
radius_match<16, T>(query, train, maxDistance, mask, trainIdx, distance, nMatches, distType);
}
}
// without mask
template < typename T/*, typename Mask*/ >
void matchDispatcher(const oclMat &query, const oclMat &train, float maxDistance, const oclMat &trainIdx,
const oclMat &distance, const oclMat &nMatches, int distType)
{
oclMat mask;
if (query.cols <= 64)
{
matchUnrolledCached<16, 64, T>(query, train, maxDistance, mask, trainIdx, distance, nMatches, distType);
}
else if (query.cols <= 128)
{
matchUnrolledCached<16, 128, T>(query, train, maxDistance, mask, trainIdx, distance, nMatches, distType);
}
/*else if (query.cols <= 256)
{
matchUnrolled<16, 256, Dist>(query, train, maxDistance, mask, trainIdx, distance, nMatches, stream);
}
else if (query.cols <= 512)
{
matchUnrolled<16, 512, Dist>(query, train, maxDistance, mask, trainIdx, distance, nMatches, stream);
}
else if (query.cols <= 1024)
{
matchUnrolled<16, 1024, Dist>(query, train, maxDistance, mask, trainIdx, distance, nMatches, stream);
}*/
else
{
radius_match<16, T>(query, train, maxDistance, mask, trainIdx, distance, nMatches, distType);
}
}
template < typename T/*, typename Mask*/ >
void matchDispatcher(const oclMat &query, const oclMat &train, int n, float maxDistance, const oclMat &mask,
const oclMat &trainIdx, const oclMat &distance, const oclMat &nMatches, int distType)
{
if (query.cols <= 64)
{
matchUnrolledCached<16, 64, T>(query, train, n, maxDistance, mask, trainIdx, distance, nMatches, distType);
}
else if (query.cols <= 128)
{
matchUnrolledCached<16, 128, T>(query, train, n, maxDistance, mask, trainIdx, distance, nMatches, distType);
}
/*else if (query.cols <= 256)
{
matchUnrolled<16, 256, Dist>(query, trains, n, maxDistance, masks, trainIdx, imgIdx, distance, nMatches, stream);
}
else if (query.cols <= 512)
{
matchUnrolled<16, 512, Dist>(query, trains, n, maxDistance, masks, trainIdx, imgIdx, distance, nMatches, stream);
}
else if (query.cols <= 1024)
{
matchUnrolled<16, 1024, Dist>(query, trains, n, maxDistance, masks, trainIdx, imgIdx, distance, nMatches, stream);
}*/
else
{
match<16, T>(query, train, n, maxDistance, mask, trainIdx, distance, nMatches, distType);
}
}
// without mask
template < typename T/*, typename Mask*/ >
void matchDispatcher(const oclMat &query, const oclMat &train, int n, float maxDistance, const oclMat &trainIdx,
const oclMat &distance, const oclMat &nMatches, int distType)
{
oclMat mask;
if (query.cols <= 64)
{
matchUnrolledCached<16, 64, T>(query, train, n, maxDistance, mask, trainIdx, distance, nMatches, distType);
}
else if (query.cols <= 128)
{
matchUnrolledCached<16, 128, T>(query, train, n, maxDistance, mask, trainIdx, distance, nMatches, distType);
}
/*else if (query.cols <= 256)
{
matchUnrolled<16, 256, Dist>(query, trains, n, maxDistance, masks, trainIdx, imgIdx, distance, nMatches, stream);
}
else if (query.cols <= 512)
{
matchUnrolled<16, 512, Dist>(query, trains, n, maxDistance, masks, trainIdx, imgIdx, distance, nMatches, stream);
}
else if (query.cols <= 1024)
{
matchUnrolled<16, 1024, Dist>(query, trains, n, maxDistance, masks, trainIdx, imgIdx, distance, nMatches, stream);
}*/
else
{
match<16, T>(query, train, n, maxDistance, mask, trainIdx, distance, nMatches, distType);
}
}
//knn match Dispatcher
template < int BLOCK_SIZE, int MAX_DESC_LEN, typename T/*, typename Mask*/ >
void knn_matchUnrolledCached(const oclMat &query, const oclMat &train, const oclMat &mask,
const oclMat &trainIdx, const oclMat &distance, int distType)
{
cv::ocl::Context *ctx = query.clCxt;
size_t globalSize[] = {(query.rows + BLOCK_SIZE - 1) / BLOCK_SIZE * BLOCK_SIZE, BLOCK_SIZE, 1};
size_t localSize[] = {BLOCK_SIZE, BLOCK_SIZE, 1};
const size_t smemSize = (BLOCK_SIZE * (MAX_DESC_LEN >= BLOCK_SIZE ? MAX_DESC_LEN : BLOCK_SIZE) + BLOCK_SIZE * BLOCK_SIZE) * sizeof(int);
int block_size = BLOCK_SIZE;
int m_size = MAX_DESC_LEN;
vector< pair<size_t, const void *> > args;
if(globalSize[0] != 0)
{
args.push_back( make_pair( sizeof(cl_mem), (void *)&query.data ));
args.push_back( make_pair( sizeof(cl_mem), (void *)&train.data ));
args.push_back( make_pair( sizeof(cl_mem), (void *)&mask.data ));
args.push_back( make_pair( sizeof(cl_mem), (void *)&trainIdx.data ));
args.push_back( make_pair( sizeof(cl_mem), (void *)&distance.data ));
args.push_back( make_pair( smemSize, (void *)NULL));
args.push_back( make_pair( sizeof(cl_int), (void *)&block_size ));
args.push_back( make_pair( sizeof(cl_int), (void *)&m_size ));
args.push_back( make_pair( sizeof(cl_int), (void *)&query.rows ));
args.push_back( make_pair( sizeof(cl_int), (void *)&query.cols ));
args.push_back( make_pair( sizeof(cl_int), (void *)&train.rows ));
args.push_back( make_pair( sizeof(cl_int), (void *)&train.cols ));
args.push_back( make_pair( sizeof(cl_int), (void *)&query.step ));
args.push_back( make_pair( sizeof(cl_int), (void *)&distType ));
std::string kernelName = "BruteForceMatch_knnUnrollMatch";
openCLExecuteKernel(ctx, &brute_force_match, kernelName, globalSize, localSize, args, -1, -1);
}
}
template < int BLOCK_SIZE, typename T/*, typename Mask*/ >
void knn_match(const oclMat &query, const oclMat &train, const oclMat &mask,
const oclMat &trainIdx, const oclMat &distance, int distType)
{
cv::ocl::Context *ctx = query.clCxt;
size_t globalSize[] = {(query.rows + BLOCK_SIZE - 1) / BLOCK_SIZE * BLOCK_SIZE, BLOCK_SIZE, 1};
size_t localSize[] = {BLOCK_SIZE, BLOCK_SIZE, 1};
const size_t smemSize = (2 * BLOCK_SIZE * BLOCK_SIZE) * sizeof(int);
int block_size = BLOCK_SIZE;
vector< pair<size_t, const void *> > args;
if(globalSize[0] != 0)
{
args.push_back( make_pair( sizeof(cl_mem), (void *)&query.data ));
args.push_back( make_pair( sizeof(cl_mem), (void *)&train.data ));
args.push_back( make_pair( sizeof(cl_mem), (void *)&mask.data ));
args.push_back( make_pair( sizeof(cl_mem), (void *)&trainIdx.data ));
args.push_back( make_pair( sizeof(cl_mem), (void *)&distance.data ));
args.push_back( make_pair( smemSize, (void *)NULL));
args.push_back( make_pair( sizeof(cl_int), (void *)&block_size ));
args.push_back( make_pair( sizeof(cl_int), (void *)&query.rows ));
args.push_back( make_pair( sizeof(cl_int), (void *)&query.cols ));
args.push_back( make_pair( sizeof(cl_int), (void *)&train.rows ));
args.push_back( make_pair( sizeof(cl_int), (void *)&train.cols ));
args.push_back( make_pair( sizeof(cl_int), (void *)&query.step ));
args.push_back( make_pair( sizeof(cl_int), (void *)&distType ));
std::string kernelName = "BruteForceMatch_knnMatch";
openCLExecuteKernel(ctx, &brute_force_match, kernelName, globalSize, localSize, args, -1, -1);
}
}
template < int BLOCK_SIZE, int MAX_DESC_LEN, typename T/*, typename Mask*/ >
void calcDistanceUnrolled(const oclMat &query, const oclMat &train, const oclMat &mask, const oclMat &allDist, int distType)
{
cv::ocl::Context *ctx = query.clCxt;
size_t globalSize[] = {(query.rows + BLOCK_SIZE - 1) / BLOCK_SIZE * BLOCK_SIZE, BLOCK_SIZE, 1};
size_t localSize[] = {BLOCK_SIZE, BLOCK_SIZE, 1};
const size_t smemSize = (2 * BLOCK_SIZE * BLOCK_SIZE) * sizeof(int);
int block_size = BLOCK_SIZE;
int m_size = MAX_DESC_LEN;
vector< pair<size_t, const void *> > args;
if(globalSize[0] != 0)
{
args.push_back( make_pair( sizeof(cl_mem), (void *)&query.data ));
args.push_back( make_pair( sizeof(cl_mem), (void *)&train.data ));
args.push_back( make_pair( sizeof(cl_mem), (void *)&mask.data ));
args.push_back( make_pair( sizeof(cl_mem), (void *)&allDist.data ));
args.push_back( make_pair( smemSize, (void *)NULL));
args.push_back( make_pair( sizeof(cl_int), (void *)&block_size ));
args.push_back( make_pair( sizeof(cl_int), (void *)&m_size ));
args.push_back( make_pair( sizeof(cl_int), (void *)&query.rows ));
args.push_back( make_pair( sizeof(cl_int), (void *)&query.cols ));
args.push_back( make_pair( sizeof(cl_int), (void *)&train.rows ));
args.push_back( make_pair( sizeof(cl_int), (void *)&train.cols ));
args.push_back( make_pair( sizeof(cl_int), (void *)&query.step ));
args.push_back( make_pair( sizeof(cl_int), (void *)&distType ));
std::string kernelName = "BruteForceMatch_calcDistanceUnrolled";
openCLExecuteKernel(ctx, &brute_force_match, kernelName, globalSize, localSize, args, -1, -1);
}
}
template < int BLOCK_SIZE, typename T/*, typename Mask*/ >
void calcDistance(const oclMat &query, const oclMat &train, const oclMat &mask, const oclMat &allDist, int distType)
{
cv::ocl::Context *ctx = query.clCxt;
size_t globalSize[] = {(query.rows + BLOCK_SIZE - 1) / BLOCK_SIZE * BLOCK_SIZE, BLOCK_SIZE, 1};
size_t localSize[] = {BLOCK_SIZE, BLOCK_SIZE, 1};
const size_t smemSize = (2 * BLOCK_SIZE * BLOCK_SIZE) * sizeof(int);
int block_size = BLOCK_SIZE;
vector< pair<size_t, const void *> > args;
if(globalSize[0] != 0)
{
args.push_back( make_pair( sizeof(cl_mem), (void *)&query.data ));
args.push_back( make_pair( sizeof(cl_mem), (void *)&train.data ));
args.push_back( make_pair( sizeof(cl_mem), (void *)&mask.data ));
args.push_back( make_pair( sizeof(cl_mem), (void *)&allDist.data ));
args.push_back( make_pair( smemSize, (void *)NULL));
args.push_back( make_pair( sizeof(cl_int), (void *)&block_size ));
args.push_back( make_pair( sizeof(cl_int), (void *)&query.rows ));
args.push_back( make_pair( sizeof(cl_int), (void *)&query.cols ));
args.push_back( make_pair( sizeof(cl_int), (void *)&train.rows ));
args.push_back( make_pair( sizeof(cl_int), (void *)&train.cols ));
args.push_back( make_pair( sizeof(cl_int), (void *)&query.step ));
args.push_back( make_pair( sizeof(cl_int), (void *)&distType ));
std::string kernelName = "BruteForceMatch_calcDistance";
openCLExecuteKernel(ctx, &brute_force_match, kernelName, globalSize, localSize, args, -1, -1);
}
}
///////////////////////////////////////////////////////////////////////////////
// Calc Distance dispatcher
template < typename T/*, typename Mask*/ >
void calcDistanceDispatcher(const oclMat &query, const oclMat &train, const oclMat &mask,
const oclMat &allDist, int distType)
{
if (query.cols <= 64)
{
calcDistanceUnrolled<16, 64, T>(query, train, mask, allDist, distType);
}
else if (query.cols <= 128)
{
calcDistanceUnrolled<16, 128, T>(query, train, mask, allDist, distType);
}
/*else if (query.cols <= 256)
{
calcDistanceUnrolled<16, 256, Dist>(query, train, mask, allDist, stream);
}
else if (query.cols <= 512)
{
calcDistanceUnrolled<16, 512, Dist>(query, train, mask, allDist, stream);
}
else if (query.cols <= 1024)
{
calcDistanceUnrolled<16, 1024, Dist>(query, train, mask, allDist, stream);
}*/
else
{
calcDistance<16, T>(query, train, mask, allDist, distType);
}
}
template < typename T/*, typename Mask*/ >
void match2Dispatcher(const oclMat &query, const oclMat &train, const oclMat &mask,
const oclMat &trainIdx, const oclMat &distance, int distType)
{
if (query.cols <= 64)
{
knn_matchUnrolledCached<16, 64, T>(query, train, mask, trainIdx, distance, distType);
}
else if (query.cols <= 128)
{
knn_matchUnrolledCached<16, 128, T>(query, train, mask, trainIdx, distance, distType);
}
/*else if (query.cols <= 256)
{
matchUnrolled<16, 256, Dist>(query, train, mask, static_cast< DevMem2D_<int2> >(trainIdx), static_cast< DevMem2D_<float2> > (distance), stream);
}
else if (query.cols <= 512)
{
matchUnrolled<16, 512, Dist>(query, train, mask, static_cast< DevMem2D_<int2> >(trainIdx), static_cast< DevMem2D_<float2> > (distance), stream);
}
else if (query.cols <= 1024)
{
matchUnrolled<16, 1024, Dist>(query, train, mask, static_cast< DevMem2D_<int2> >(trainIdx), static_cast< DevMem2D_<float2> > (distance), stream);
}*/
else
{
knn_match<16, T>(query, train, mask, trainIdx, distance, distType);
}
}
template <int BLOCK_SIZE>
void findKnnMatch(int k, const oclMat &trainIdx, const oclMat &distance, const oclMat &allDist, int /*distType*/)
{
cv::ocl::Context *ctx = trainIdx.clCxt;
size_t globalSize[] = {trainIdx.rows * BLOCK_SIZE, 1, 1};
size_t localSize[] = {BLOCK_SIZE, 1, 1};
int block_size = BLOCK_SIZE;
std::string kernelName = "BruteForceMatch_findBestMatch";
for (int i = 0; i < k; ++i)
{
vector< pair<size_t, const void *> > args;
args.push_back( make_pair( sizeof(cl_mem), (void *)&allDist.data ));
args.push_back( make_pair( sizeof(cl_mem), (void *)&trainIdx.data ));
args.push_back( make_pair( sizeof(cl_mem), (void *)&distance.data ));
args.push_back( make_pair( sizeof(cl_mem), (void *)&i));
args.push_back( make_pair( sizeof(cl_int), (void *)&block_size ));
//args.push_back( make_pair( sizeof(cl_int), (void *)&train.rows ));
//args.push_back( make_pair( sizeof(cl_int), (void *)&train.cols ));
//args.push_back( make_pair( sizeof(cl_int), (void *)&query.step ));
openCLExecuteKernel(ctx, &brute_force_match, kernelName, globalSize, localSize, args, -1, -1);
}
}
void findKnnMatchDispatcher(int k, const oclMat &trainIdx, const oclMat &distance, const oclMat &allDist, int distType)
{
findKnnMatch<256>(k, trainIdx, distance, allDist, distType);
}
//with mask
template < typename T/*, typename Mask*/ >
void kmatchDispatcher(const oclMat &query, const oclMat &train, int k, const oclMat &mask,
const oclMat &trainIdx, const oclMat &distance, const oclMat &allDist, int distType)
{
if (k == 2)
{
match2Dispatcher<T>(query, train, mask, trainIdx, distance, distType);
}
else
{
calcDistanceDispatcher<T>(query, train, mask, allDist, distType);
findKnnMatchDispatcher(k, trainIdx, distance, allDist, distType);
}
}
//without mask
template < typename T/*, typename Mask*/ >
void kmatchDispatcher(const oclMat &query, const oclMat &train, int k,
const oclMat &trainIdx, const oclMat &distance, const oclMat &allDist, int distType)
{
oclMat mask;
if (k == 2)
{
match2Dispatcher<T>(query, train, mask, trainIdx, distance, distType);
}
else
{
calcDistanceDispatcher<T>(query, train, mask, allDist, distType);
findKnnMatchDispatcher(k, trainIdx, distance, allDist, distType);
}
}
template <typename T>
void ocl_matchL1_gpu(const oclMat &query, const oclMat &train, const oclMat &mask,
const oclMat &trainIdx, const oclMat &distance)
{
int distType = 0;
if (mask.data)
{
matchDispatcher<T>(query, train, mask, trainIdx, distance, distType);
}
else
{
matchDispatcher< T >(query, train, trainIdx, distance, distType);
}
}
template <typename T>
void ocl_matchL1_gpu(const oclMat &query, const oclMat &trains, const oclMat &masks,
const oclMat &trainIdx, const oclMat &imgIdx, const oclMat &distance)
{
int distType = 0;
if (masks.data)
{
matchDispatcher<T>(query, (const oclMat *)trains.ptr(), trains.cols, masks, trainIdx, imgIdx, distance, distType);
}
else
{
matchDispatcher<T>(query, (const oclMat *)trains.ptr(), trains.cols, trainIdx, imgIdx, distance, distType);
}
}
template <typename T>
void ocl_matchL2_gpu(const oclMat &query, const oclMat &train, const oclMat &mask,
const oclMat &trainIdx, const oclMat &distance)
{
int distType = 1;
if (mask.data)
{
matchDispatcher<T>(query, train, mask, trainIdx, distance, distType);
}
else
{
matchDispatcher<T >(query, train, trainIdx, distance, distType);
}
}
template <typename T>
void ocl_matchL2_gpu(const oclMat &query, const oclMat &trains, const oclMat &masks,
const oclMat &trainIdx, const oclMat &imgIdx, const oclMat &distance)
{
int distType = 1;
if (masks.data)
{
matchDispatcher<T>(query, (const oclMat *)trains.ptr(), trains.cols, masks, trainIdx, imgIdx, distance, distType);
}
else
{
matchDispatcher<T>(query, (const oclMat *)trains.ptr(), trains.cols, trainIdx, imgIdx, distance, distType);
}
}
template <typename T>
void ocl_matchHamming_gpu(const oclMat &query, const oclMat &train, const oclMat &mask,
const oclMat &trainIdx, const oclMat &distance)
{
int distType = 2;
if (mask.data)
{
matchDispatcher<T>(query, train, mask, trainIdx, distance, distType);
}
else
{
matchDispatcher< T >(query, train, trainIdx, distance, distType);
}
}
template <typename T>
void ocl_matchHamming_gpu(const oclMat &query, const oclMat &trains, const oclMat &masks,
const oclMat &trainIdx, const oclMat &imgIdx, const oclMat &distance)
{
int distType = 2;
if (masks.data)
{
matchDispatcher<T>(query, (const oclMat *)trains.ptr(), trains.cols, masks, trainIdx, imgIdx, distance, distType);
}
else
{
matchDispatcher<T>(query, (const oclMat *)trains.ptr(), trains.cols, trainIdx, imgIdx, distance, distType);
}
}
// knn caller
template <typename T>
void ocl_matchL1_gpu(const oclMat &query, const oclMat &train, int k, const oclMat &mask,
const oclMat &trainIdx, const oclMat &distance, const oclMat &allDist)
{
int distType = 0;
if (mask.data)
kmatchDispatcher<T>(query, train, k, mask, trainIdx, distance, allDist, distType);
else
kmatchDispatcher<T>(query, train, k, trainIdx, distance, allDist, distType);
}
template <typename T>
void ocl_matchL2_gpu(const oclMat &query, const oclMat &train, int k, const oclMat &mask,
const oclMat &trainIdx, const oclMat &distance, const oclMat &allDist)
{
int distType = 1;
if (mask.data)
kmatchDispatcher<T>(query, train, k, mask, trainIdx, distance, allDist, distType);
else
kmatchDispatcher<T>(query, train, k, trainIdx, distance, allDist, distType);
}
template <typename T>
void ocl_matchHamming_gpu(const oclMat &query, const oclMat &train, int k, const oclMat &mask,
const oclMat &trainIdx, const oclMat &distance, const oclMat &allDist)
{
int distType = 2;
if (mask.data)
kmatchDispatcher<T>(query, train, k, mask, trainIdx, distance, allDist, distType);
else
kmatchDispatcher<T>(query, train, k, trainIdx, distance, allDist, distType);
}
//radius caller
template <typename T>
void ocl_matchL1_gpu(const oclMat &query, const oclMat &train, float maxDistance, const oclMat &mask,
const oclMat &trainIdx, const oclMat &distance, const oclMat &nMatches)
{
int distType = 0;
if (mask.data)
matchDispatcher<T>(query, train, maxDistance, mask, trainIdx, distance, nMatches, distType);
else
matchDispatcher<T>(query, train, maxDistance, trainIdx, distance, nMatches, distType);
}
template <typename T>
void ocl_matchL2_gpu(const oclMat &query, const oclMat &train, float maxDistance, const oclMat &mask,
const oclMat &trainIdx, const oclMat &distance, const oclMat &nMatches)
{
int distType = 1;
if (mask.data)
matchDispatcher<T>(query, train, maxDistance, mask, trainIdx, distance, nMatches, distType);
else
matchDispatcher<T>(query, train, maxDistance, trainIdx, distance, nMatches, distType);
}
template <typename T>
void ocl_matchHamming_gpu(const oclMat &query, const oclMat &train, float maxDistance, const oclMat &mask,
const oclMat &trainIdx, const oclMat &distance, const oclMat &nMatches)
{
int distType = 2;
if (mask.data)
matchDispatcher<T>(query, train, maxDistance, mask, trainIdx, distance, nMatches, distType);
else
matchDispatcher<T>(query, train, maxDistance, trainIdx, distance, nMatches, distType);
}
cv::ocl::BruteForceMatcher_OCL_base::BruteForceMatcher_OCL_base(DistType distType_) : distType(distType_)
{
}
void cv::ocl::BruteForceMatcher_OCL_base::add(const vector<oclMat> &descCollection)
{
trainDescCollection.insert(trainDescCollection.end(), descCollection.begin(), descCollection.end());
}
const vector<oclMat> &cv::ocl::BruteForceMatcher_OCL_base::getTrainDescriptors() const
{
return trainDescCollection;
}
void cv::ocl::BruteForceMatcher_OCL_base::clear()
{
trainDescCollection.clear();
}
bool cv::ocl::BruteForceMatcher_OCL_base::empty() const
{
return trainDescCollection.empty();
}
bool cv::ocl::BruteForceMatcher_OCL_base::isMaskSupported() const
{
return true;
}
void cv::ocl::BruteForceMatcher_OCL_base::matchSingle(const oclMat &query, const oclMat &train,
oclMat &trainIdx, oclMat &distance, const oclMat &mask)
{
if (query.empty() || train.empty())
return;
typedef void (*caller_t)(const oclMat & query, const oclMat & train, const oclMat & mask,
const oclMat & trainIdx, const oclMat & distance);
static const caller_t callers[3][6] =
{
{
ocl_matchL1_gpu<unsigned char>, 0/*ocl_matchL1_gpu<signed char>*/,
ocl_matchL1_gpu<unsigned short>, ocl_matchL1_gpu<short>,
ocl_matchL1_gpu<int>, ocl_matchL1_gpu<float>
},
{
0/*ocl_matchL2_gpu<unsigned char>*/, 0/*ocl_matchL2_gpu<signed char>*/,
0/*ocl_matchL2_gpu<unsigned short>*/, 0/*ocl_matchL2_gpu<short>*/,
0/*ocl_matchL2_gpu<int>*/, ocl_matchL2_gpu<float>
},
{
ocl_matchHamming_gpu<unsigned char>, 0/*ocl_matchHamming_gpu<signed char>*/,
ocl_matchHamming_gpu<unsigned short>, 0/*ocl_matchHamming_gpu<short>*/,
ocl_matchHamming_gpu<int>, 0/*ocl_matchHamming_gpu<float>*/
}
};
CV_Assert(query.channels() == 1 && query.depth() < CV_64F);
CV_Assert(train.cols == query.cols && train.type() == query.type());
const int nQuery = query.rows;
trainIdx.create(1, nQuery, CV_32S);
distance.create(1, nQuery, CV_32F);
caller_t func = callers[distType][query.depth()];
func(query, train, mask, trainIdx, distance);
}
void cv::ocl::BruteForceMatcher_OCL_base::matchDownload(const oclMat &trainIdx, const oclMat &distance, vector<DMatch> &matches)
{
if (trainIdx.empty() || distance.empty())
return;
Mat trainIdxCPU(trainIdx);
Mat distanceCPU(distance);
matchConvert(trainIdxCPU, distanceCPU, matches);
}
void cv::ocl::BruteForceMatcher_OCL_base::matchConvert(const Mat &trainIdx, const Mat &distance, vector<DMatch> &matches)
{
if (trainIdx.empty() || distance.empty())
return;
CV_Assert(trainIdx.type() == CV_32SC1);
CV_Assert(distance.type() == CV_32FC1 && distance.cols == trainIdx.cols);
const int nQuery = trainIdx.cols;
matches.clear();
matches.reserve(nQuery);
const int *trainIdx_ptr = trainIdx.ptr<int>();
const float *distance_ptr = distance.ptr<float>();
for (int queryIdx = 0; queryIdx < nQuery; ++queryIdx, ++trainIdx_ptr, ++distance_ptr)
{
int trainIdx = *trainIdx_ptr;
if (trainIdx == -1)
continue;
float distance = *distance_ptr;
DMatch m(queryIdx, trainIdx, 0, distance);
matches.push_back(m);
}
}
void cv::ocl::BruteForceMatcher_OCL_base::match(const oclMat &query, const oclMat &train, vector<DMatch> &matches, const oclMat &mask)
{
oclMat trainIdx, distance;
matchSingle(query, train, trainIdx, distance, mask);
matchDownload(trainIdx, distance, matches);
}
void cv::ocl::BruteForceMatcher_OCL_base::makeGpuCollection(oclMat &trainCollection, oclMat &maskCollection, const vector<oclMat> &masks)
{
if (empty())
return;
if (masks.empty())
{
Mat trainCollectionCPU(1, static_cast<int>(trainDescCollection.size()), CV_8UC(sizeof(oclMat)));
oclMat *trainCollectionCPU_ptr = trainCollectionCPU.ptr<oclMat>();
for (size_t i = 0, size = trainDescCollection.size(); i < size; ++i, ++trainCollectionCPU_ptr)
*trainCollectionCPU_ptr = trainDescCollection[i];
trainCollection.upload(trainCollectionCPU);
maskCollection.release();
}
else
{
CV_Assert(masks.size() == trainDescCollection.size());
Mat trainCollectionCPU(1, static_cast<int>(trainDescCollection.size()), CV_8UC(sizeof(oclMat)));
Mat maskCollectionCPU(1, static_cast<int>(trainDescCollection.size()), CV_8UC(sizeof(oclMat)));
oclMat *trainCollectionCPU_ptr = trainCollectionCPU.ptr<oclMat>();
oclMat *maskCollectionCPU_ptr = maskCollectionCPU.ptr<oclMat>();
for (size_t i = 0, size = trainDescCollection.size(); i < size; ++i, ++trainCollectionCPU_ptr, ++maskCollectionCPU_ptr)
{
const oclMat &train = trainDescCollection[i];
const oclMat &mask = masks[i];
CV_Assert(mask.empty() || (mask.type() == CV_8UC1 && mask.cols == train.rows));
*trainCollectionCPU_ptr = train;
*maskCollectionCPU_ptr = mask;
}
trainCollection.upload(trainCollectionCPU);
maskCollection.upload(maskCollectionCPU);
}
}
void cv::ocl::BruteForceMatcher_OCL_base::matchCollection(const oclMat &query, const oclMat &trainCollection, oclMat &trainIdx,
oclMat &imgIdx, oclMat &distance, const oclMat &masks)
{
if (query.empty() || trainCollection.empty())
return;
typedef void (*caller_t)(const oclMat & query, const oclMat & trains, const oclMat & masks,
const oclMat & trainIdx, const oclMat & imgIdx, const oclMat & distance);
static const caller_t callers[3][6] =
{
{
ocl_matchL1_gpu<unsigned char>, 0/*matchL1_gpu<signed char>*/,
ocl_matchL1_gpu<unsigned short>, ocl_matchL1_gpu<short>,
ocl_matchL1_gpu<int>, ocl_matchL1_gpu<float>
},
{
0/*matchL2_gpu<unsigned char>*/, 0/*matchL2_gpu<signed char>*/,
0/*matchL2_gpu<unsigned short>*/, 0/*matchL2_gpu<short>*/,
0/*matchL2_gpu<int>*/, ocl_matchL2_gpu<float>
},
{
ocl_matchHamming_gpu<unsigned char>, 0/*matchHamming_gpu<signed char>*/,
ocl_matchHamming_gpu<unsigned short>, 0/*matchHamming_gpu<short>*/,
ocl_matchHamming_gpu<int>, 0/*matchHamming_gpu<float>*/
}
};
CV_Assert(query.channels() == 1 && query.depth() < CV_64F);
const int nQuery = query.rows;
trainIdx.create(1, nQuery, CV_32S);
imgIdx.create(1, nQuery, CV_32S);
distance.create(1, nQuery, CV_32F);
caller_t func = callers[distType][query.depth()];
CV_Assert(func != 0);
func(query, trainCollection, masks, trainIdx, imgIdx, distance);
}
void cv::ocl::BruteForceMatcher_OCL_base::matchDownload(const oclMat &trainIdx, const oclMat &imgIdx, const oclMat &distance, vector<DMatch> &matches)
{
if (trainIdx.empty() || imgIdx.empty() || distance.empty())
return;
Mat trainIdxCPU(trainIdx);
Mat imgIdxCPU(imgIdx);
Mat distanceCPU(distance);
matchConvert(trainIdxCPU, imgIdxCPU, distanceCPU, matches);
}
void cv::ocl::BruteForceMatcher_OCL_base::matchConvert(const Mat &trainIdx, const Mat &imgIdx, const Mat &distance, vector<DMatch> &matches)
{
if (trainIdx.empty() || imgIdx.empty() || distance.empty())
return;
CV_Assert(trainIdx.type() == CV_32SC1);
CV_Assert(imgIdx.type() == CV_32SC1 && imgIdx.cols == trainIdx.cols);
CV_Assert(distance.type() == CV_32FC1 && distance.cols == trainIdx.cols);
const int nQuery = trainIdx.cols;
matches.clear();
matches.reserve(nQuery);
const int *trainIdx_ptr = trainIdx.ptr<int>();
const int *imgIdx_ptr = imgIdx.ptr<int>();
const float *distance_ptr = distance.ptr<float>();
for (int queryIdx = 0; queryIdx < nQuery; ++queryIdx, ++trainIdx_ptr, ++imgIdx_ptr, ++distance_ptr)
{
int trainIdx = *trainIdx_ptr;
if (trainIdx == -1)
continue;
int imgIdx = *imgIdx_ptr;
float distance = *distance_ptr;
DMatch m(queryIdx, trainIdx, imgIdx, distance);
matches.push_back(m);
}
}
void cv::ocl::BruteForceMatcher_OCL_base::match(const oclMat &query, vector<DMatch> &matches, const vector<oclMat> &masks)
{
oclMat trainCollection;
oclMat maskCollection;
makeGpuCollection(trainCollection, maskCollection, masks);
oclMat trainIdx, imgIdx, distance;
matchCollection(query, trainCollection, trainIdx, imgIdx, distance, maskCollection);
matchDownload(trainIdx, imgIdx, distance, matches);
}
// knn match
void cv::ocl::BruteForceMatcher_OCL_base::knnMatchSingle(const oclMat &query, const oclMat &train, oclMat &trainIdx,
oclMat &distance, oclMat &allDist, int k, const oclMat &mask)
{
if (query.empty() || train.empty())
return;
typedef void (*caller_t)(const oclMat & query, const oclMat & train, int k, const oclMat & mask,
const oclMat & trainIdx, const oclMat & distance, const oclMat & allDist);
static const caller_t callers[3][6] =
{
{
ocl_matchL1_gpu<unsigned char>, 0/*ocl_matchL1_gpu<signed char>*/,
ocl_matchL1_gpu<unsigned short>, ocl_matchL1_gpu<short>,
ocl_matchL1_gpu<int>, ocl_matchL1_gpu<float>
},
{
0/*ocl_matchL2_gpu<unsigned char>*/, 0/*ocl_matchL2_gpu<signed char>*/,
0/*ocl_matchL2_gpu<unsigned short>*/, 0/*ocl_matchL2_gpu<short>*/,
0/*ocl_matchL2_gpu<int>*/, ocl_matchL2_gpu<float>
},
{
ocl_matchHamming_gpu<unsigned char>, 0/*ocl_matchHamming_gpu<signed char>*/,
ocl_matchHamming_gpu<unsigned short>, 0/*ocl_matchHamming_gpu<short>*/,
ocl_matchHamming_gpu<int>, 0/*ocl_matchHamming_gpu<float>*/
}
};
CV_Assert(query.channels() == 1 && query.depth() < CV_64F);
CV_Assert(train.type() == query.type() && train.cols == query.cols);
const int nQuery = query.rows;
const int nTrain = train.rows;
if (k == 2)
{
trainIdx.create(1, nQuery, CV_32SC2);
distance.create(1, nQuery, CV_32FC2);
}
else
{
trainIdx.create(nQuery, k, CV_32S);
distance.create(nQuery, k, CV_32F);
allDist.create(nQuery, nTrain, CV_32FC1);
}
trainIdx.setTo(Scalar::all(-1));
caller_t func = callers[distType][query.depth()];
CV_Assert(func != 0);
func(query, train, k, mask, trainIdx, distance, allDist);
}
void cv::ocl::BruteForceMatcher_OCL_base::knnMatchDownload(const oclMat &trainIdx, const oclMat &distance, vector< vector<DMatch> > &matches, bool compactResult)
{
if (trainIdx.empty() || distance.empty())
return;
Mat trainIdxCPU(trainIdx);
Mat distanceCPU(distance);
knnMatchConvert(trainIdxCPU, distanceCPU, matches, compactResult);
}
void cv::ocl::BruteForceMatcher_OCL_base::knnMatchConvert(const Mat &trainIdx, const Mat &distance, vector< vector<DMatch> > &matches, bool compactResult)
{
if (trainIdx.empty() || distance.empty())
return;
CV_Assert(trainIdx.type() == CV_32SC2 || trainIdx.type() == CV_32SC1);
CV_Assert(distance.type() == CV_32FC2 || distance.type() == CV_32FC1);
CV_Assert(distance.size() == trainIdx.size());
CV_Assert(trainIdx.isContinuous() && distance.isContinuous());
const int nQuery = trainIdx.type() == CV_32SC2 ? trainIdx.cols : trainIdx.rows;
const int k = trainIdx.type() == CV_32SC2 ? 2 : trainIdx.cols;
matches.clear();
matches.reserve(nQuery);
const int *trainIdx_ptr = trainIdx.ptr<int>();
const float *distance_ptr = distance.ptr<float>();
for (int queryIdx = 0; queryIdx < nQuery; ++queryIdx)
{
matches.push_back(vector<DMatch>());
vector<DMatch> &curMatches = matches.back();
curMatches.reserve(k);
for (int i = 0; i < k; ++i, ++trainIdx_ptr, ++distance_ptr)
{
int trainIdx = *trainIdx_ptr;
if (trainIdx != -1)
{
float distance = *distance_ptr;
DMatch m(queryIdx, trainIdx, 0, distance);
curMatches.push_back(m);
}
}
if (compactResult && curMatches.empty())
matches.pop_back();
}
}
void cv::ocl::BruteForceMatcher_OCL_base::knnMatch(const oclMat &query, const oclMat &train, vector< vector<DMatch> > &matches
, int k, const oclMat &mask, bool compactResult)
{
oclMat trainIdx, distance, allDist;
knnMatchSingle(query, train, trainIdx, distance, allDist, k, mask);
knnMatchDownload(trainIdx, distance, matches, compactResult);
}
void cv::ocl::BruteForceMatcher_OCL_base::knnMatch2Collection(const oclMat &query, const oclMat &trainCollection,
oclMat &trainIdx, oclMat &imgIdx, oclMat &distance, const oclMat &/*maskCollection*/)
{
if (query.empty() || trainCollection.empty())
return;
typedef void (*caller_t)(const oclMat & query, const oclMat & trains, const oclMat & masks,
const oclMat & trainIdx, const oclMat & imgIdx, const oclMat & distance);
#if 0
static const caller_t callers[3][6] =
{
{
ocl_match2L1_gpu<unsigned char>, 0/*match2L1_gpu<signed char>*/,
ocl_match2L1_gpu<unsigned short>, ocl_match2L1_gpu<short>,
ocl_match2L1_gpu<int>, ocl_match2L1_gpu<float>
},
{
0/*match2L2_gpu<unsigned char>*/, 0/*match2L2_gpu<signed char>*/,
0/*match2L2_gpu<unsigned short>*/, 0/*match2L2_gpu<short>*/,
0/*match2L2_gpu<int>*/, ocl_match2L2_gpu<float>
},
{
ocl_match2Hamming_gpu<unsigned char>, 0/*match2Hamming_gpu<signed char>*/,
ocl_match2Hamming_gpu<unsigned short>, 0/*match2Hamming_gpu<short>*/,
ocl_match2Hamming_gpu<int>, 0/*match2Hamming_gpu<float>*/
}
};
#endif
CV_Assert(query.channels() == 1 && query.depth() < CV_64F);
const int nQuery = query.rows;
trainIdx.create(1, nQuery, CV_32SC2);
imgIdx.create(1, nQuery, CV_32SC2);
distance.create(1, nQuery, CV_32SC2);
trainIdx.setTo(Scalar::all(-1));
//caller_t func = callers[distType][query.depth()];
//CV_Assert(func != 0);
//func(query, trainCollection, maskCollection, trainIdx, imgIdx, distance, cc, StreamAccessor::getStream(stream));
}
void cv::ocl::BruteForceMatcher_OCL_base::knnMatch2Download(const oclMat &trainIdx, const oclMat &imgIdx,
const oclMat &distance, vector< vector<DMatch> > &matches, bool compactResult)
{
if (trainIdx.empty() || imgIdx.empty() || distance.empty())
return;
Mat trainIdxCPU(trainIdx);
Mat imgIdxCPU(imgIdx);
Mat distanceCPU(distance);
knnMatch2Convert(trainIdxCPU, imgIdxCPU, distanceCPU, matches, compactResult);
}
void cv::ocl::BruteForceMatcher_OCL_base::knnMatch2Convert(const Mat &trainIdx, const Mat &imgIdx, const Mat &distance,
vector< vector<DMatch> > &matches, bool compactResult)
{
if (trainIdx.empty() || imgIdx.empty() || distance.empty())
return;
CV_Assert(trainIdx.type() == CV_32SC2);
CV_Assert(imgIdx.type() == CV_32SC2 && imgIdx.cols == trainIdx.cols);
CV_Assert(distance.type() == CV_32FC2 && distance.cols == trainIdx.cols);
const int nQuery = trainIdx.cols;
matches.clear();
matches.reserve(nQuery);
const int *trainIdx_ptr = trainIdx.ptr<int>();
const int *imgIdx_ptr = imgIdx.ptr<int>();
const float *distance_ptr = distance.ptr<float>();
for (int queryIdx = 0; queryIdx < nQuery; ++queryIdx)
{
matches.push_back(vector<DMatch>());
vector<DMatch> &curMatches = matches.back();
curMatches.reserve(2);
for (int i = 0; i < 2; ++i, ++trainIdx_ptr, ++imgIdx_ptr, ++distance_ptr)
{
int trainIdx = *trainIdx_ptr;
if (trainIdx != -1)
{
int imgIdx = *imgIdx_ptr;
float distance = *distance_ptr;
DMatch m(queryIdx, trainIdx, imgIdx, distance);
curMatches.push_back(m);
}
}
if (compactResult && curMatches.empty())
matches.pop_back();
}
}
namespace
{
struct ImgIdxSetter
{
explicit inline ImgIdxSetter(int imgIdx_) : imgIdx(imgIdx_) {}
inline void operator()(DMatch &m) const
{
m.imgIdx = imgIdx;
}
int imgIdx;
};
}
void cv::ocl::BruteForceMatcher_OCL_base::knnMatch(const oclMat &query, vector< vector<DMatch> > &matches, int k,
const vector<oclMat> &masks, bool compactResult)
{
if (k == 2)
{
oclMat trainCollection;
oclMat maskCollection;
makeGpuCollection(trainCollection, maskCollection, masks);
oclMat trainIdx, imgIdx, distance;
knnMatch2Collection(query, trainCollection, trainIdx, imgIdx, distance, maskCollection);
knnMatch2Download(trainIdx, imgIdx, distance, matches);
}
else
{
if (query.empty() || empty())
return;
vector< vector<DMatch> > curMatches;
vector<DMatch> temp;
temp.reserve(2 * k);
matches.resize(query.rows);
for_each(matches.begin(), matches.end(), bind2nd(mem_fun_ref(&vector<DMatch>::reserve), k));
for (size_t imgIdx = 0, size = trainDescCollection.size(); imgIdx < size; ++imgIdx)
{
knnMatch(query, trainDescCollection[imgIdx], curMatches, k, masks.empty() ? oclMat() : masks[imgIdx]);
for (int queryIdx = 0; queryIdx < query.rows; ++queryIdx)
{
vector<DMatch> &localMatch = curMatches[queryIdx];
vector<DMatch> &globalMatch = matches[queryIdx];
for_each(localMatch.begin(), localMatch.end(), ImgIdxSetter(static_cast<int>(imgIdx)));
temp.clear();
merge(globalMatch.begin(), globalMatch.end(), localMatch.begin(), localMatch.end(), back_inserter(temp));
globalMatch.clear();
const size_t count = std::min((size_t)k, temp.size());
copy(temp.begin(), temp.begin() + count, back_inserter(globalMatch));
}
}
if (compactResult)
{
vector< vector<DMatch> >::iterator new_end = remove_if(matches.begin(), matches.end(), mem_fun_ref(&vector<DMatch>::empty));
matches.erase(new_end, matches.end());
}
}
}
// radiusMatchSingle
void cv::ocl::BruteForceMatcher_OCL_base::radiusMatchSingle(const oclMat &query, const oclMat &train,
oclMat &trainIdx, oclMat &distance, oclMat &nMatches, float maxDistance, const oclMat &mask)
{
if (query.empty() || train.empty())
return;
typedef void (*caller_t)(const oclMat & query, const oclMat & train, float maxDistance, const oclMat & mask,
const oclMat & trainIdx, const oclMat & distance, const oclMat & nMatches);
//#if 0
static const caller_t callers[3][6] =
{
{
ocl_matchL1_gpu<unsigned char>, 0/*ocl_matchL1_gpu<signed char>*/,
ocl_matchL1_gpu<unsigned short>, ocl_matchL1_gpu<short>,
ocl_matchL1_gpu<int>, ocl_matchL1_gpu<float>
},
{
0/*ocl_matchL2_gpu<unsigned char>*/, 0/*ocl_matchL2_gpu<signed char>*/,
0/*ocl_matchL2_gpu<unsigned short>*/, 0/*ocl_matchL2_gpu<short>*/,
0/*ocl_matchL2_gpu<int>*/, ocl_matchL2_gpu<float>
},
{
ocl_matchHamming_gpu<unsigned char>, 0/*ocl_matchHamming_gpu<signed char>*/,
ocl_matchHamming_gpu<unsigned short>, 0/*ocl_matchHamming_gpu<short>*/,
ocl_matchHamming_gpu<int>, 0/*ocl_matchHamming_gpu<float>*/
}
};
//#endif
const int nQuery = query.rows;
const int nTrain = train.rows;
CV_Assert(query.channels() == 1 && query.depth() < CV_64F);
CV_Assert(train.type() == query.type() && train.cols == query.cols);
CV_Assert(trainIdx.empty() || (trainIdx.rows == nQuery && trainIdx.size() == distance.size()));
nMatches.create(1, nQuery, CV_32SC1);
if (trainIdx.empty())
{
trainIdx.create(nQuery, std::max((nTrain / 100), 10), CV_32SC1);
distance.create(nQuery, std::max((nTrain / 100), 10), CV_32FC1);
}
nMatches.setTo(Scalar::all(0));
caller_t func = callers[distType][query.depth()];
//CV_Assert(func != 0);
//func(query, train, maxDistance, mask, trainIdx, distance, nMatches, cc, StreamAccessor::getStream(stream));
func(query, train, maxDistance, mask, trainIdx, distance, nMatches);
}
void cv::ocl::BruteForceMatcher_OCL_base::radiusMatchDownload(const oclMat &trainIdx, const oclMat &distance, const oclMat &nMatches,
vector< vector<DMatch> > &matches, bool compactResult)
{
if (trainIdx.empty() || distance.empty() || nMatches.empty())
return;
Mat trainIdxCPU(trainIdx);
Mat distanceCPU(distance);
Mat nMatchesCPU(nMatches);
radiusMatchConvert(trainIdxCPU, distanceCPU, nMatchesCPU, matches, compactResult);
}
void cv::ocl::BruteForceMatcher_OCL_base::radiusMatchConvert(const Mat &trainIdx, const Mat &distance, const Mat &nMatches,
vector< vector<DMatch> > &matches, bool compactResult)
{
if (trainIdx.empty() || distance.empty() || nMatches.empty())
return;
CV_Assert(trainIdx.type() == CV_32SC1);
CV_Assert(distance.type() == CV_32FC1 && distance.size() == trainIdx.size());
CV_Assert(nMatches.type() == CV_32SC1 && nMatches.cols == trainIdx.rows);
const int nQuery = trainIdx.rows;
matches.clear();
matches.reserve(nQuery);
const int *nMatches_ptr = nMatches.ptr<int>();
for (int queryIdx = 0; queryIdx < nQuery; ++queryIdx)
{
const int *trainIdx_ptr = trainIdx.ptr<int>(queryIdx);
const float *distance_ptr = distance.ptr<float>(queryIdx);
const int nMatches = std::min(nMatches_ptr[queryIdx], trainIdx.cols);
if (nMatches == 0)
{
if (!compactResult)
matches.push_back(vector<DMatch>());
continue;
}
matches.push_back(vector<DMatch>(nMatches));
vector<DMatch> &curMatches = matches.back();
for (int i = 0; i < nMatches; ++i, ++trainIdx_ptr, ++distance_ptr)
{
int trainIdx = *trainIdx_ptr;
float distance = *distance_ptr;
DMatch m(queryIdx, trainIdx, 0, distance);
curMatches[i] = m;
}
sort(curMatches.begin(), curMatches.end());
}
}
void cv::ocl::BruteForceMatcher_OCL_base::radiusMatch(const oclMat &query, const oclMat &train, vector< vector<DMatch> > &matches,
float maxDistance, const oclMat &mask, bool compactResult)
{
oclMat trainIdx, distance, nMatches;
radiusMatchSingle(query, train, trainIdx, distance, nMatches, maxDistance, mask);
radiusMatchDownload(trainIdx, distance, nMatches, matches, compactResult);
}
void cv::ocl::BruteForceMatcher_OCL_base::radiusMatchCollection(const oclMat &query, oclMat &trainIdx, oclMat &imgIdx, oclMat &distance,
oclMat &nMatches, float /*maxDistance*/, const vector<oclMat> &masks)
{
if (query.empty() || empty())
return;
typedef void (*caller_t)(const oclMat & query, const oclMat * trains, int n, float maxDistance, const oclMat * masks,
const oclMat & trainIdx, const oclMat & imgIdx, const oclMat & distance, const oclMat & nMatches);
#if 0
static const caller_t callers[3][6] =
{
{
ocl_matchL1_gpu<unsigned char>, 0/*matchL1_gpu<signed char>*/,
ocl_matchL1_gpu<unsigned short>, matchL1_gpu<short>,
ocl_matchL1_gpu<int>, matchL1_gpu<float>
},
{
0/*matchL2_gpu<unsigned char>*/, 0/*matchL2_gpu<signed char>*/,
0/*matchL2_gpu<unsigned short>*/, 0/*matchL2_gpu<short>*/,
0/*matchL2_gpu<int>*/, ocl_matchL2_gpu<float>
},
{
ocl_matchHamming_gpu<unsigned char>, 0/*matchHamming_gpu<signed char>*/,
ocl_matchHamming_gpu<unsigned short>, 0/*matchHamming_gpu<short>*/,
ocl_matchHamming_gpu<int>, 0/*matchHamming_gpu<float>*/
}
};
#endif
const int nQuery = query.rows;
CV_Assert(query.channels() == 1 && query.depth() < CV_64F);
CV_Assert(trainIdx.empty() || (trainIdx.rows == nQuery && trainIdx.size() == distance.size() && trainIdx.size() == imgIdx.size()));
nMatches.create(1, nQuery, CV_32SC1);
if (trainIdx.empty())
{
trainIdx.create(nQuery, std::max((nQuery / 100), 10), CV_32SC1);
imgIdx.create(nQuery, std::max((nQuery / 100), 10), CV_32SC1);
distance.create(nQuery, std::max((nQuery / 100), 10), CV_32FC1);
}
nMatches.setTo(Scalar::all(0));
//caller_t func = callers[distType][query.depth()];
//CV_Assert(func != 0);
vector<oclMat> trains_(trainDescCollection.begin(), trainDescCollection.end());
vector<oclMat> masks_(masks.begin(), masks.end());
/* func(query, &trains_[0], static_cast<int>(trains_.size()), maxDistance, masks_.size() == 0 ? 0 : &masks_[0],
trainIdx, imgIdx, distance, nMatches));*/
}
void cv::ocl::BruteForceMatcher_OCL_base::radiusMatchDownload(const oclMat &trainIdx, const oclMat &imgIdx, const oclMat &distance,
const oclMat &nMatches, vector< vector<DMatch> > &matches, bool compactResult)
{
if (trainIdx.empty() || imgIdx.empty() || distance.empty() || nMatches.empty())
return;
Mat trainIdxCPU(trainIdx);
Mat imgIdxCPU(imgIdx);
Mat distanceCPU(distance);
Mat nMatchesCPU(nMatches);
radiusMatchConvert(trainIdxCPU, imgIdxCPU, distanceCPU, nMatchesCPU, matches, compactResult);
}
void cv::ocl::BruteForceMatcher_OCL_base::radiusMatchConvert(const Mat &trainIdx, const Mat &imgIdx, const Mat &distance, const Mat &nMatches,
vector< vector<DMatch> > &matches, bool compactResult)
{
if (trainIdx.empty() || imgIdx.empty() || distance.empty() || nMatches.empty())
return;
CV_Assert(trainIdx.type() == CV_32SC1);
CV_Assert(imgIdx.type() == CV_32SC1 && imgIdx.size() == trainIdx.size());
CV_Assert(distance.type() == CV_32FC1 && distance.size() == trainIdx.size());
CV_Assert(nMatches.type() == CV_32SC1 && nMatches.cols == trainIdx.rows);
const int nQuery = trainIdx.rows;
matches.clear();
matches.reserve(nQuery);
const int *nMatches_ptr = nMatches.ptr<int>();
for (int queryIdx = 0; queryIdx < nQuery; ++queryIdx)
{
const int *trainIdx_ptr = trainIdx.ptr<int>(queryIdx);
const int *imgIdx_ptr = imgIdx.ptr<int>(queryIdx);
const float *distance_ptr = distance.ptr<float>(queryIdx);
const int nMatches = std::min(nMatches_ptr[queryIdx], trainIdx.cols);
if (nMatches == 0)
{
if (!compactResult)
matches.push_back(vector<DMatch>());
continue;
}
matches.push_back(vector<DMatch>());
vector<DMatch> &curMatches = matches.back();
curMatches.reserve(nMatches);
for (int i = 0; i < nMatches; ++i, ++trainIdx_ptr, ++imgIdx_ptr, ++distance_ptr)
{
int trainIdx = *trainIdx_ptr;
int imgIdx = *imgIdx_ptr;
float distance = *distance_ptr;
DMatch m(queryIdx, trainIdx, imgIdx, distance);
curMatches.push_back(m);
}
sort(curMatches.begin(), curMatches.end());
}
}
void cv::ocl::BruteForceMatcher_OCL_base::radiusMatch(const oclMat &query, vector< vector<DMatch> > &matches, float maxDistance,
const vector<oclMat> &masks, bool compactResult)
{
oclMat trainIdx, imgIdx, distance, nMatches;
radiusMatchCollection(query, trainIdx, imgIdx, distance, nMatches, maxDistance, masks);
radiusMatchDownload(trainIdx, imgIdx, distance, nMatches, matches, compactResult);
}
#endif