opencv/modules/legacy/src/em.cpp
Andrey Kamaev 2a6fb2867e Remove all using directives for STL namespace and members
Made all STL usages explicit to be able automatically find all usages of
particular class or function.
2013-02-25 15:04:17 +04:00

264 lines
7.5 KiB
C++

/*M///////////////////////////////////////////////////////////////////////////////////////
//
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#include "precomp.hpp"
using namespace cv;
CvEMParams::CvEMParams() : nclusters(10), cov_mat_type(CvEM::COV_MAT_DIAGONAL),
start_step(CvEM::START_AUTO_STEP), probs(0), weights(0), means(0), covs(0)
{
term_crit=cvTermCriteria( CV_TERMCRIT_ITER+CV_TERMCRIT_EPS, 100, FLT_EPSILON );
}
CvEMParams::CvEMParams( int _nclusters, int _cov_mat_type, int _start_step,
CvTermCriteria _term_crit, const CvMat* _probs,
const CvMat* _weights, const CvMat* _means, const CvMat** _covs ) :
nclusters(_nclusters), cov_mat_type(_cov_mat_type), start_step(_start_step),
probs(_probs), weights(_weights), means(_means), covs(_covs), term_crit(_term_crit)
{}
CvEM::CvEM() : logLikelihood(DBL_MAX)
{
}
CvEM::CvEM( const CvMat* samples, const CvMat* sample_idx,
CvEMParams params, CvMat* labels ) : logLikelihood(DBL_MAX)
{
train(samples, sample_idx, params, labels);
}
CvEM::~CvEM()
{
clear();
}
void CvEM::clear()
{
emObj.clear();
}
void CvEM::read( CvFileStorage* fs, CvFileNode* node )
{
FileNode fn(fs, node);
emObj.read(fn);
set_mat_hdrs();
}
void CvEM::write( CvFileStorage* _fs, const char* name ) const
{
FileStorage fs = _fs;
if(name)
fs << name << "{";
emObj.write(fs);
if(name)
fs << "}";
fs.fs.obj = 0;
}
double CvEM::calcLikelihood( const Mat &input_sample ) const
{
return emObj.predict(input_sample)[0];
}
float
CvEM::predict( const CvMat* _sample, CvMat* _probs ) const
{
Mat prbs0 = cvarrToMat(_probs), prbs = prbs0, sample = cvarrToMat(_sample);
int cls = static_cast<int>(emObj.predict(sample, _probs ? _OutputArray(prbs) : cv::noArray())[1]);
if(_probs)
{
if( prbs.data != prbs0.data )
{
CV_Assert( prbs.size == prbs0.size );
prbs.convertTo(prbs0, prbs0.type());
}
}
return (float)cls;
}
void CvEM::set_mat_hdrs()
{
if(emObj.isTrained())
{
meansHdr = emObj.get<Mat>("means");
int K = emObj.get<int>("nclusters");
covsHdrs.resize(K);
covsPtrs.resize(K);
const std::vector<Mat>& covs = emObj.get<std::vector<Mat> >("covs");
for(size_t i = 0; i < covsHdrs.size(); i++)
{
covsHdrs[i] = covs[i];
covsPtrs[i] = &covsHdrs[i];
}
weightsHdr = emObj.get<Mat>("weights");
probsHdr = probs;
}
}
static
void init_params(const CvEMParams& src,
Mat& prbs, Mat& weights,
Mat& means, std::vector<Mat>& covsHdrs)
{
prbs = src.probs;
weights = src.weights;
means = src.means;
if(src.covs)
{
covsHdrs.resize(src.nclusters);
for(size_t i = 0; i < covsHdrs.size(); i++)
covsHdrs[i] = src.covs[i];
}
}
bool CvEM::train( const CvMat* _samples, const CvMat* _sample_idx,
CvEMParams _params, CvMat* _labels )
{
CV_Assert(_sample_idx == 0);
Mat samples = cvarrToMat(_samples), labels0, labels;
if( _labels )
labels0 = labels = cvarrToMat(_labels);
bool isOk = train(samples, Mat(), _params, _labels ? &labels : 0);
CV_Assert( labels0.data == labels.data );
return isOk;
}
int CvEM::get_nclusters() const
{
return emObj.get<int>("nclusters");
}
const CvMat* CvEM::get_means() const
{
return emObj.isTrained() ? &meansHdr : 0;
}
const CvMat** CvEM::get_covs() const
{
return emObj.isTrained() ? (const CvMat**)&covsPtrs[0] : 0;
}
const CvMat* CvEM::get_weights() const
{
return emObj.isTrained() ? &weightsHdr : 0;
}
const CvMat* CvEM::get_probs() const
{
return emObj.isTrained() ? &probsHdr : 0;
}
using namespace cv;
CvEM::CvEM( const Mat& samples, const Mat& sample_idx, CvEMParams params )
{
train(samples, sample_idx, params, 0);
}
bool CvEM::train( const Mat& _samples, const Mat& _sample_idx,
CvEMParams _params, Mat* _labels )
{
CV_Assert(_sample_idx.empty());
Mat prbs, weights, means, logLikelihoods;
std::vector<Mat> covshdrs;
init_params(_params, prbs, weights, means, covshdrs);
emObj = EM(_params.nclusters, _params.cov_mat_type, _params.term_crit);
bool isOk = false;
if( _params.start_step == EM::START_AUTO_STEP )
isOk = emObj.train(_samples,
logLikelihoods, _labels ? _OutputArray(*_labels) : cv::noArray(), probs);
else if( _params.start_step == EM::START_E_STEP )
isOk = emObj.trainE(_samples, means, covshdrs, weights,
logLikelihoods, _labels ? _OutputArray(*_labels) : cv::noArray(), probs);
else if( _params.start_step == EM::START_M_STEP )
isOk = emObj.trainM(_samples, prbs,
logLikelihoods, _labels ? _OutputArray(*_labels) : cv::noArray(), probs);
else
CV_Error(CV_StsBadArg, "Bad start type of EM algorithm");
if(isOk)
{
logLikelihood = sum(logLikelihoods).val[0];
set_mat_hdrs();
}
return isOk;
}
float
CvEM::predict( const Mat& _sample, Mat* _probs ) const
{
return static_cast<float>(emObj.predict(_sample, _probs ? _OutputArray(*_probs) : cv::noArray())[1]);
}
int CvEM::getNClusters() const
{
return emObj.get<int>("nclusters");
}
Mat CvEM::getMeans() const
{
return emObj.get<Mat>("means");
}
void CvEM::getCovs(std::vector<Mat>& _covs) const
{
_covs = emObj.get<std::vector<Mat> >("covs");
}
Mat CvEM::getWeights() const
{
return emObj.get<Mat>("weights");
}
Mat CvEM::getProbs() const
{
return probs;
}
/* End of file. */