_labels           166 modules/core/src/kmeans.cpp                             int *_labels,
_labels           170 modules/core/src/kmeans.cpp           labels(_labels),
_labels           237 modules/core/src/kmeans.cpp     Mat _labels, best_labels = _bestLabels.getMat();
_labels           244 modules/core/src/kmeans.cpp         best_labels.copyTo(_labels);
_labels           253 modules/core/src/kmeans.cpp         _labels.create(best_labels.size(), best_labels.type());
_labels           255 modules/core/src/kmeans.cpp     int* labels = _labels.ptr<int>();
_labels           451 modules/core/src/kmeans.cpp             _labels.copyTo(best_labels);
_labels          4221 modules/core/src/matrix.cpp cvKMeans2( const CvArr* _samples, int cluster_count, CvArr* _labels,
_labels          4225 modules/core/src/matrix.cpp     cv::Mat data = cv::cvarrToMat(_samples), labels = cv::cvarrToMat(_labels), centers;
_labels           140 modules/cudalegacy/perf/perf_labeling.cpp     cv::Mat _labels;
_labels           190 modules/cudalegacy/perf/perf_labeling.cpp         TEST_CYCLE() host(host._labels);
_labels           192 modules/cudalegacy/perf/perf_labeling.cpp         cv::Mat components = host._labels;
_labels           135 modules/cudalegacy/test/test_labeling.cpp             cv::Mat diff = gpu - _labels;
_labels           141 modules/cudalegacy/test/test_labeling.cpp                     if ( (_labels.at<int>(j,i) == gpu.at<int>(j,i + 1)) && (diff.at<int>(j, i) != diff.at<int>(j,i + 1)))
_labels           150 modules/cudalegacy/test/test_labeling.cpp         cv::Mat _labels;
_labels           180 modules/cudalegacy/test/test_labeling.cpp     host(host._labels);
_labels           367 modules/imgproc/src/connectedcomponents.cpp int cv::connectedComponents(InputArray _img, OutputArray _labels, int connectivity, int ltype){
_labels           369 modules/imgproc/src/connectedcomponents.cpp     _labels.create(img.size(), CV_MAT_DEPTH(ltype));
_labels           370 modules/imgproc/src/connectedcomponents.cpp     cv::Mat labels = _labels.getMat();
_labels           382 modules/imgproc/src/connectedcomponents.cpp int cv::connectedComponentsWithStats(InputArray _img, OutputArray _labels, OutputArray statsv,
_labels           386 modules/imgproc/src/connectedcomponents.cpp     _labels.create(img.size(), CV_MAT_DEPTH(ltype));
_labels           387 modules/imgproc/src/connectedcomponents.cpp     cv::Mat labels = _labels.getMat();
_labels           233 modules/imgproc/src/distransform.cpp distanceTransformEx_5x5( const Mat& _src, Mat& _temp, Mat& _dist, Mat& _labels, const float* metrics )
_labels           246 modules/imgproc/src/distransform.cpp     int* labels = _labels.ptr<int>();
_labels           250 modules/imgproc/src/distransform.cpp     int lstep = (int)(_labels.step/sizeof(dist[0]));
_labels           710 modules/imgproc/src/distransform.cpp void cv::distanceTransform( InputArray _src, OutputArray _dst, OutputArray _labels,
_labels           714 modules/imgproc/src/distransform.cpp     bool need_labels = _labels.needed();
_labels           725 modules/imgproc/src/distransform.cpp         _labels.create(src.size(), CV_32S);
_labels           726 modules/imgproc/src/distransform.cpp         labels = _labels.getMat();
_labels            75 modules/ml/src/kdtree.cpp KDTree::KDTree(InputArray _points, InputArray _labels, bool _copyData)
_labels            79 modules/ml/src/kdtree.cpp     build(_points, _labels, _copyData);
_labels           166 modules/ml/src/kdtree.cpp     Mat _points = __points.getMat(), _labels = __labels.getMat();
_labels           187 modules/ml/src/kdtree.cpp     if( !_labels.empty() )
_labels           189 modules/ml/src/kdtree.cpp         int nlabels = _labels.checkVector(1, CV_32S, true);
_labels           191 modules/ml/src/kdtree.cpp         _labels_data = _labels.ptr<int>();
_labels           276 modules/ml/src/kdtree.cpp                         OutputArray _dist, OutputArray _labels) const
_labels           411 modules/ml/src/kdtree.cpp     if( _neighbors.needed() || _labels.needed() )
_labels           412 modules/ml/src/kdtree.cpp         getPoints(Mat(K, 1, CV_32S, idx), _neighbors, _labels);
_labels           421 modules/ml/src/kdtree.cpp                             OutputArray _labels ) const
_labels           470 modules/ml/src/kdtree.cpp     getPoints( idx, _neighbors, _labels );
_labels           474 modules/ml/src/kdtree.cpp void KDTree::getPoints(InputArray _idx, OutputArray _pts, OutputArray _labels) const
_labels           487 modules/ml/src/kdtree.cpp         _labels.release();
_labels           497 modules/ml/src/kdtree.cpp     if(_labels.needed())
_labels           499 modules/ml/src/kdtree.cpp         _labels.create(nidx, 1, CV_32S, -1, true);
_labels           500 modules/ml/src/kdtree.cpp         labelsmat = _labels.getMat();
_labels            60 modules/ml/src/kdtree.hpp     CV_WRAP KDTree(InputArray points, InputArray _labels,
_labels           110 modules/ml/src/lr.cpp     double compute_cost(const Mat& _data, const Mat& _labels, const Mat& _init_theta);
_labels           111 modules/ml/src/lr.cpp     Mat compute_batch_gradient(const Mat& _data, const Mat& _labels, const Mat& _init_theta);
_labels           112 modules/ml/src/lr.cpp     Mat compute_mini_batch_gradient(const Mat& _data, const Mat& _labels, const Mat& _init_theta);
_labels           307 modules/ml/src/lr.cpp double LogisticRegressionImpl::compute_cost(const Mat& _data, const Mat& _labels, const Mat& _init_theta)
_labels           344 modules/ml/src/lr.cpp     multiply(d_a, _labels, d_a);
_labels           348 modules/ml/src/lr.cpp     multiply(d_b, 1-_labels, d_b);
_labels           356 modules/ml/src/lr.cpp Mat LogisticRegressionImpl::compute_batch_gradient(const Mat& _data, const Mat& _labels, const Mat& _init_theta)
_labels           387 modules/ml/src/lr.cpp         ccost = compute_cost(_data, _labels, theta_p);
_labels           394 modules/ml/src/lr.cpp         pcal_b = calc_sigmoid((_data*theta_p) - _labels);
_labels           400 modules/ml/src/lr.cpp         pcal_a = calc_sigmoid(_data*theta_p) - _labels;
_labels           425 modules/ml/src/lr.cpp Mat LogisticRegressionImpl::compute_mini_batch_gradient(const Mat& _data, const Mat& _labels, const Mat& _init_theta)
_labels           462 modules/ml/src/lr.cpp             labels_l = _labels(Range(j,j+size_b),Range::all());
_labels           467 modules/ml/src/lr.cpp             labels_l = _labels(Range(j, _labels.rows),Range::all());