opencv/modules/ml/src/knearest.cpp
Danny 20b23da8e2
Merge pull request #18061 from danielenricocahall:fix-kd-tree
Fix KD Tree kNN Implementation

* Make KDTree mode in kNN functional

remove docs and revert change

Make KDTree mode in kNN functional

spacing

Make KDTree mode in kNN functional

fix window compilations warnings

Make KDTree mode in kNN functional

fix window compilations warnings

Make KDTree mode in kNN functional

casting

Make KDTree mode in kNN functional

formatting

Make KDTree mode in kNN functional

* test coding style
2020-09-04 17:01:05 +00:00

522 lines
16 KiB
C++

/*M///////////////////////////////////////////////////////////////////////////////////////
//
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//M*/
#include "precomp.hpp"
#include "kdtree.hpp"
/****************************************************************************************\
* K-Nearest Neighbors Classifier *
\****************************************************************************************/
namespace cv {
namespace ml {
const String NAME_BRUTE_FORCE = "opencv_ml_knn";
const String NAME_KDTREE = "opencv_ml_knn_kd";
class Impl
{
public:
Impl()
{
defaultK = 10;
isclassifier = true;
Emax = INT_MAX;
}
virtual ~Impl() {}
virtual String getModelName() const = 0;
virtual int getType() const = 0;
virtual float findNearest( InputArray _samples, int k,
OutputArray _results,
OutputArray _neighborResponses,
OutputArray _dists ) const = 0;
bool train( const Ptr<TrainData>& data, int flags )
{
CV_Assert(!data.empty());
Mat new_samples = data->getTrainSamples(ROW_SAMPLE);
Mat new_responses;
data->getTrainResponses().convertTo(new_responses, CV_32F);
bool update = (flags & ml::KNearest::UPDATE_MODEL) != 0 && !samples.empty();
CV_Assert( new_samples.type() == CV_32F );
if( !update )
{
clear();
}
else
{
CV_Assert( new_samples.cols == samples.cols &&
new_responses.cols == responses.cols );
}
samples.push_back(new_samples);
responses.push_back(new_responses);
doTrain(samples);
return true;
}
virtual void doTrain(InputArray points) { CV_UNUSED(points); }
void clear()
{
samples.release();
responses.release();
}
void read( const FileNode& fn )
{
clear();
isclassifier = (int)fn["is_classifier"] != 0;
defaultK = (int)fn["default_k"];
fn["samples"] >> samples;
fn["responses"] >> responses;
}
void write( FileStorage& fs ) const
{
fs << "is_classifier" << (int)isclassifier;
fs << "default_k" << defaultK;
fs << "samples" << samples;
fs << "responses" << responses;
}
public:
int defaultK;
bool isclassifier;
int Emax;
Mat samples;
Mat responses;
};
class BruteForceImpl CV_FINAL : public Impl
{
public:
String getModelName() const CV_OVERRIDE { return NAME_BRUTE_FORCE; }
int getType() const CV_OVERRIDE { return ml::KNearest::BRUTE_FORCE; }
void findNearestCore( const Mat& _samples, int k, const Range& range,
Mat* results, Mat* neighbor_responses,
Mat* dists, float* presult ) const
{
int testidx, baseidx, i, j, d = samples.cols, nsamples = samples.rows;
int testcount = range.end - range.start;
AutoBuffer<float> buf(testcount*k*2);
float* dbuf = buf.data();
float* rbuf = dbuf + testcount*k;
const float* rptr = responses.ptr<float>();
for( testidx = 0; testidx < testcount; testidx++ )
{
for( i = 0; i < k; i++ )
{
dbuf[testidx*k + i] = FLT_MAX;
rbuf[testidx*k + i] = 0.f;
}
}
for( baseidx = 0; baseidx < nsamples; baseidx++ )
{
for( testidx = 0; testidx < testcount; testidx++ )
{
const float* v = samples.ptr<float>(baseidx);
const float* u = _samples.ptr<float>(testidx + range.start);
float s = 0;
for( i = 0; i <= d - 4; i += 4 )
{
float t0 = u[i] - v[i], t1 = u[i+1] - v[i+1];
float t2 = u[i+2] - v[i+2], t3 = u[i+3] - v[i+3];
s += t0*t0 + t1*t1 + t2*t2 + t3*t3;
}
for( ; i < d; i++ )
{
float t0 = u[i] - v[i];
s += t0*t0;
}
Cv32suf si;
si.f = (float)s;
Cv32suf* dd = (Cv32suf*)(&dbuf[testidx*k]);
float* nr = &rbuf[testidx*k];
for( i = k; i > 0; i-- )
if( si.i >= dd[i-1].i )
break;
if( i >= k )
continue;
for( j = k-2; j >= i; j-- )
{
dd[j+1].i = dd[j].i;
nr[j+1] = nr[j];
}
dd[i].i = si.i;
nr[i] = rptr[baseidx];
}
}
float result = 0.f;
float inv_scale = 1.f/k;
for( testidx = 0; testidx < testcount; testidx++ )
{
if( neighbor_responses )
{
float* nr = neighbor_responses->ptr<float>(testidx + range.start);
for( j = 0; j < k; j++ )
nr[j] = rbuf[testidx*k + j];
for( ; j < k; j++ )
nr[j] = 0.f;
}
if( dists )
{
float* dptr = dists->ptr<float>(testidx + range.start);
for( j = 0; j < k; j++ )
dptr[j] = dbuf[testidx*k + j];
for( ; j < k; j++ )
dptr[j] = 0.f;
}
if( results || testidx+range.start == 0 )
{
if( !isclassifier || k == 1 )
{
float s = 0.f;
for( j = 0; j < k; j++ )
s += rbuf[testidx*k + j];
result = (float)(s*inv_scale);
}
else
{
float* rp = rbuf + testidx*k;
std::sort(rp, rp+k);
result = rp[0];
int prev_start = 0;
int best_count = 0;
for( j = 1; j <= k; j++ )
{
if( j == k || rp[j] != rp[j-1] )
{
int count = j - prev_start;
if( best_count < count )
{
best_count = count;
result = rp[j-1];
}
prev_start = j;
}
}
}
if( results )
results->at<float>(testidx + range.start) = result;
if( presult && testidx+range.start == 0 )
*presult = result;
}
}
}
struct findKNearestInvoker : public ParallelLoopBody
{
findKNearestInvoker(const BruteForceImpl* _p, int _k, const Mat& __samples,
Mat* __results, Mat* __neighbor_responses, Mat* __dists, float* _presult)
{
p = _p;
k = _k;
_samples = &__samples;
_results = __results;
_neighbor_responses = __neighbor_responses;
_dists = __dists;
presult = _presult;
}
void operator()(const Range& range) const CV_OVERRIDE
{
int delta = std::min(range.end - range.start, 256);
for( int start = range.start; start < range.end; start += delta )
{
p->findNearestCore( *_samples, k, Range(start, std::min(start + delta, range.end)),
_results, _neighbor_responses, _dists, presult );
}
}
const BruteForceImpl* p;
int k;
const Mat* _samples;
Mat* _results;
Mat* _neighbor_responses;
Mat* _dists;
float* presult;
};
float findNearest( InputArray _samples, int k,
OutputArray _results,
OutputArray _neighborResponses,
OutputArray _dists ) const CV_OVERRIDE
{
float result = 0.f;
CV_Assert( 0 < k );
k = std::min(k, samples.rows);
Mat test_samples = _samples.getMat();
CV_Assert( test_samples.type() == CV_32F && test_samples.cols == samples.cols );
int testcount = test_samples.rows;
if( testcount == 0 )
{
_results.release();
_neighborResponses.release();
_dists.release();
return 0.f;
}
Mat res, nr, d, *pres = 0, *pnr = 0, *pd = 0;
if( _results.needed() )
{
_results.create(testcount, 1, CV_32F);
pres = &(res = _results.getMat());
}
if( _neighborResponses.needed() )
{
_neighborResponses.create(testcount, k, CV_32F);
pnr = &(nr = _neighborResponses.getMat());
}
if( _dists.needed() )
{
_dists.create(testcount, k, CV_32F);
pd = &(d = _dists.getMat());
}
findKNearestInvoker invoker(this, k, test_samples, pres, pnr, pd, &result);
parallel_for_(Range(0, testcount), invoker);
//invoker(Range(0, testcount));
return result;
}
};
class KDTreeImpl CV_FINAL : public Impl
{
public:
String getModelName() const CV_OVERRIDE { return NAME_KDTREE; }
int getType() const CV_OVERRIDE { return ml::KNearest::KDTREE; }
void doTrain(InputArray points) CV_OVERRIDE
{
tr.build(points);
}
float findNearest( InputArray _samples, int k,
OutputArray _results,
OutputArray _neighborResponses,
OutputArray _dists ) const CV_OVERRIDE
{
float result = 0.f;
CV_Assert( 0 < k );
k = std::min(k, samples.rows);
Mat test_samples = _samples.getMat();
CV_Assert( test_samples.type() == CV_32F && test_samples.cols == samples.cols );
int testcount = test_samples.rows;
if( testcount == 0 )
{
_results.release();
_neighborResponses.release();
_dists.release();
return 0.f;
}
Mat res, nr, d;
if( _results.needed() )
{
res = _results.getMat();
}
if( _neighborResponses.needed() )
{
nr = _neighborResponses.getMat();
}
if( _dists.needed() )
{
d = _dists.getMat();
}
for (int i=0; i<test_samples.rows; ++i)
{
Mat _res, _nr, _d;
tr.findNearest(test_samples.row(i), k, Emax, _res, _nr, _d, noArray());
res.push_back(_res.t());
_results.assign(res);
}
return result; // currently always 0
}
KDTree tr;
};
//================================================================
class KNearestImpl CV_FINAL : public KNearest
{
inline int getDefaultK() const CV_OVERRIDE { return impl->defaultK; }
inline void setDefaultK(int val) CV_OVERRIDE { impl->defaultK = val; }
inline bool getIsClassifier() const CV_OVERRIDE { return impl->isclassifier; }
inline void setIsClassifier(bool val) CV_OVERRIDE { impl->isclassifier = val; }
inline int getEmax() const CV_OVERRIDE { return impl->Emax; }
inline void setEmax(int val) CV_OVERRIDE { impl->Emax = val; }
public:
int getAlgorithmType() const CV_OVERRIDE
{
return impl->getType();
}
void setAlgorithmType(int val) CV_OVERRIDE
{
if (val != BRUTE_FORCE && val != KDTREE)
val = BRUTE_FORCE;
int k = getDefaultK();
int e = getEmax();
bool c = getIsClassifier();
initImpl(val);
setDefaultK(k);
setEmax(e);
setIsClassifier(c);
}
public:
KNearestImpl()
{
initImpl(BRUTE_FORCE);
}
~KNearestImpl()
{
}
bool isClassifier() const CV_OVERRIDE { return impl->isclassifier; }
bool isTrained() const CV_OVERRIDE { return !impl->samples.empty(); }
int getVarCount() const CV_OVERRIDE { return impl->samples.cols; }
void write( FileStorage& fs ) const CV_OVERRIDE
{
writeFormat(fs);
impl->write(fs);
}
void read( const FileNode& fn ) CV_OVERRIDE
{
int algorithmType = BRUTE_FORCE;
if (fn.name() == NAME_KDTREE)
algorithmType = KDTREE;
initImpl(algorithmType);
impl->read(fn);
}
float findNearest( InputArray samples, int k,
OutputArray results,
OutputArray neighborResponses=noArray(),
OutputArray dist=noArray() ) const CV_OVERRIDE
{
return impl->findNearest(samples, k, results, neighborResponses, dist);
}
float predict(InputArray inputs, OutputArray outputs, int) const CV_OVERRIDE
{
return impl->findNearest( inputs, impl->defaultK, outputs, noArray(), noArray() );
}
bool train( const Ptr<TrainData>& data, int flags ) CV_OVERRIDE
{
CV_Assert(!data.empty());
return impl->train(data, flags);
}
String getDefaultName() const CV_OVERRIDE { return impl->getModelName(); }
protected:
void initImpl(int algorithmType)
{
if (algorithmType != KDTREE)
impl = makePtr<BruteForceImpl>();
else
impl = makePtr<KDTreeImpl>();
}
Ptr<Impl> impl;
};
Ptr<KNearest> KNearest::create()
{
return makePtr<KNearestImpl>();
}
Ptr<KNearest> KNearest::load(const String& filepath)
{
FileStorage fs;
fs.open(filepath, FileStorage::READ);
Ptr<KNearest> knearest = makePtr<KNearestImpl>();
((KNearestImpl*)knearest.get())->read(fs.getFirstTopLevelNode());
return knearest;
}
}
}
/* End of file */