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@ -11,6 +11,48 @@ using namespace cv; |
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using namespace std; |
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void get_svm_detector(const SVM& svm, vector< float > & hog_detector ) |
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{ |
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// get the number of variables
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const int var_all = svm.get_var_count(); |
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// get the number of support vectors
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const int sv_total = svm.get_support_vector_count(); |
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// get the decision function
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const CvSVMDecisionFunc* decision_func = svm.get_decision_function(); |
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// get the support vectors
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const float** sv = &(svm.get_support_vector(0));
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CV_Assert( var_all > 0 && |
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sv_total > 0 && |
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decision_func != 0 && |
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decision_func->alpha != 0 && |
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decision_func->sv_count == sv_total ); |
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float svi = 0.f; |
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hog_detector.clear(); //clear stuff in vector.
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hog_detector.reserve( var_all + 1 ); //reserve place for memory efficiency.
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/**
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* hog_detector^i = \sum_j support_vector_j^i * \alpha_j |
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* hog_detector^dim = -\rho |
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*/ |
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for( int i = 0 ; i < var_all ; ++i ) |
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{ |
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svi = 0.f; |
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for( int j = 0 ; j < sv_total ; ++j ) |
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{ |
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if( decision_func->sv_index != NULL ) // sometime the sv_index isn't store on YML/XML.
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svi += (float)( sv[decision_func->sv_index[j]][i] * decision_func->alpha[ j ] ); |
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else |
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svi += (float)( sv[j][i] * decision_func->alpha[ j ] ); |
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} |
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hog_detector.push_back( svi ); |
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} |
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hog_detector.push_back( (float)-decision_func->rho ); |
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} |
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/*
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* Convert training/testing set to be used by OpenCV Machine Learning algorithms. |
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* TrainData is a matrix of size (#samples x max(#cols,#rows) per samples), in 32FC1. |
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@ -322,7 +364,7 @@ void test_it( const Size & size ) |
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Scalar reference( 0, 255, 0 ); |
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Scalar trained( 0, 0, 255 ); |
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Mat img, draw; |
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SVM svm; |
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MySVM svm; |
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HOGDescriptor hog; |
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HOGDescriptor my_hog; |
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my_hog.winSize = size; |
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@ -333,7 +375,7 @@ void test_it( const Size & size ) |
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svm.load( "my_people_detector.yml" ); |
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// Set the trained svm to my_hog
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vector< float > hog_detector; |
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svm.get_svm_detector( hog_detector ); |
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get_svm_detector( svm, hog_detector ); |
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my_hog.setSVMDetector( hog_detector ); |
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// Set the people detector.
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hog.setSVMDetector( hog.getDefaultPeopleDetector() ); |
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