#include "opencv2/core/core.hpp" #include "opencv2/ml/ml.hpp" #include #include #include using namespace std; using namespace cv; using namespace cv::ml; static void help() { printf("\nThe sample demonstrates how to train Random Trees classifier\n" "(or Boosting classifier, or MLP, or Knearest, or Nbayes, or Support Vector Machines - see main()) using the provided dataset.\n" "\n" "We use the sample database letter-recognition.data\n" "from UCI Repository, here is the link:\n" "\n" "Newman, D.J. & Hettich, S. & Blake, C.L. & Merz, C.J. (1998).\n" "UCI Repository of machine learning databases\n" "[http://www.ics.uci.edu/~mlearn/MLRepository.html].\n" "Irvine, CA: University of California, Department of Information and Computer Science.\n" "\n" "The dataset consists of 20000 feature vectors along with the\n" "responses - capital latin letters A..Z.\n" "The first 16000 (10000 for boosting)) samples are used for training\n" "and the remaining 4000 (10000 for boosting) - to test the classifier.\n" "======================================================\n"); printf("\nThis is letter recognition sample.\n" "The usage: letter_recog [-data ] \\\n" " [-save ] \\\n" " [-load ] \\\n" " [-boost|-mlp|-knearest|-nbayes|-svm] # to use boost/mlp/knearest/SVM classifier instead of default Random Trees\n" ); } // This function reads data and responses from the file static bool read_num_class_data( const string& filename, int var_count, Mat* _data, Mat* _responses ) { const int M = 1024; char buf[M+2]; Mat el_ptr(1, var_count, CV_32F); int i; vector responses; _data->release(); _responses->release(); FILE* f = fopen( filename.c_str(), "rt" ); if( !f ) { cout << "Could not read the database " << filename << endl; return false; } for(;;) { char* ptr; if( !fgets( buf, M, f ) || !strchr( buf, ',' ) ) break; responses.push_back((int)buf[0]); ptr = buf+2; for( i = 0; i < var_count; i++ ) { int n = 0; sscanf( ptr, "%f%n", &el_ptr.at(i), &n ); ptr += n + 1; } if( i < var_count ) break; _data->push_back(el_ptr); } fclose(f); Mat(responses).copyTo(*_responses); cout << "The database " << filename << " is loaded.\n"; return true; } template static Ptr load_classifier(const string& filename_to_load) { // load classifier from the specified file Ptr model = StatModel::load( filename_to_load ); if( model.empty() ) cout << "Could not read the classifier " << filename_to_load << endl; else cout << "The classifier " << filename_to_load << " is loaded.\n"; return model; } static Ptr prepare_train_data(const Mat& data, const Mat& responses, int ntrain_samples) { Mat sample_idx = Mat::zeros( 1, data.rows, CV_8U ); Mat train_samples = sample_idx.colRange(0, ntrain_samples); train_samples.setTo(Scalar::all(1)); int nvars = data.cols; Mat var_type( nvars + 1, 1, CV_8U ); var_type.setTo(Scalar::all(VAR_ORDERED)); var_type.at(nvars) = VAR_CATEGORICAL; return TrainData::create(data, ROW_SAMPLE, responses, noArray(), sample_idx, noArray(), var_type); } inline TermCriteria TC(int iters, double eps) { return TermCriteria(TermCriteria::MAX_ITER + (eps > 0 ? TermCriteria::EPS : 0), iters, eps); } static void test_and_save_classifier(const Ptr& model, const Mat& data, const Mat& responses, int ntrain_samples, int rdelta, const string& filename_to_save) { int i, nsamples_all = data.rows; double train_hr = 0, test_hr = 0; // compute prediction error on train and test data for( i = 0; i < nsamples_all; i++ ) { Mat sample = data.row(i); float r = model->predict( sample ); r = std::abs(r + rdelta - responses.at(i)) <= FLT_EPSILON ? 1.f : 0.f; if( i < ntrain_samples ) train_hr += r; else test_hr += r; } test_hr /= nsamples_all - ntrain_samples; train_hr = ntrain_samples > 0 ? train_hr/ntrain_samples : 1.; printf( "Recognition rate: train = %.1f%%, test = %.1f%%\n", train_hr*100., test_hr*100. ); if( !filename_to_save.empty() ) { model->save( filename_to_save ); } } static bool build_rtrees_classifier( const string& data_filename, const string& filename_to_save, const string& filename_to_load ) { Mat data; Mat responses; bool ok = read_num_class_data( data_filename, 16, &data, &responses ); if( !ok ) return ok; Ptr model; int nsamples_all = data.rows; int ntrain_samples = (int)(nsamples_all*0.8); // Create or load Random Trees classifier if( !filename_to_load.empty() ) { model = load_classifier(filename_to_load); if( model.empty() ) return false; ntrain_samples = 0; } else { // create classifier by using and cout << "Training the classifier ...\n"; Ptr tdata = prepare_train_data(data, responses, ntrain_samples); model = StatModel::train(tdata, RTrees::Params(10,10,0,false,15,Mat(),true,4,TC(100,0.01f))); cout << endl; } test_and_save_classifier(model, data, responses, ntrain_samples, 0, filename_to_save); cout << "Number of trees: " << model->getRoots().size() << endl; // Print variable importance Mat var_importance = model->getVarImportance(); if( !var_importance.empty() ) { double rt_imp_sum = sum( var_importance )[0]; printf("var#\timportance (in %%):\n"); int i, n = (int)var_importance.total(); for( i = 0; i < n; i++ ) printf( "%-2d\t%-4.1f\n", i, 100.f*var_importance.at(i)/rt_imp_sum); } return true; } static bool build_boost_classifier( const string& data_filename, const string& filename_to_save, const string& filename_to_load ) { const int class_count = 26; Mat data; Mat responses; Mat weak_responses; bool ok = read_num_class_data( data_filename, 16, &data, &responses ); if( !ok ) return ok; int i, j, k; Ptr model; int nsamples_all = data.rows; int ntrain_samples = (int)(nsamples_all*0.5); int var_count = data.cols; // Create or load Boosted Tree classifier if( !filename_to_load.empty() ) { model = load_classifier(filename_to_load); if( model.empty() ) return false; ntrain_samples = 0; } else { // !!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!! // // As currently boosted tree classifier in MLL can only be trained // for 2-class problems, we transform the training database by // "unrolling" each training sample as many times as the number of // classes (26) that we have. // // !!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!! Mat new_data( ntrain_samples*class_count, var_count + 1, CV_32F ); Mat new_responses( ntrain_samples*class_count, 1, CV_32S ); // 1. unroll the database type mask printf( "Unrolling the database...\n"); for( i = 0; i < ntrain_samples; i++ ) { const float* data_row = data.ptr(i); for( j = 0; j < class_count; j++ ) { float* new_data_row = (float*)new_data.ptr(i*class_count+j); memcpy(new_data_row, data_row, var_count*sizeof(data_row[0])); new_data_row[var_count] = (float)j; new_responses.at(i*class_count + j) = responses.at(i) == j+'A'; } } Mat var_type( 1, var_count + 2, CV_8U ); var_type.setTo(Scalar::all(VAR_ORDERED)); var_type.at(var_count) = var_type.at(var_count+1) = VAR_CATEGORICAL; Ptr tdata = TrainData::create(new_data, ROW_SAMPLE, new_responses, noArray(), noArray(), noArray(), var_type); vector priors(2); priors[0] = 1; priors[1] = 26; cout << "Training the classifier (may take a few minutes)...\n"; model = StatModel::train(tdata, Boost::Params(Boost::GENTLE, 100, 0.95, 5, false, Mat(priors) )); cout << endl; } Mat temp_sample( 1, var_count + 1, CV_32F ); float* tptr = temp_sample.ptr(); // compute prediction error on train and test data double train_hr = 0, test_hr = 0; for( i = 0; i < nsamples_all; i++ ) { int best_class = 0; double max_sum = -DBL_MAX; const float* ptr = data.ptr(i); for( k = 0; k < var_count; k++ ) tptr[k] = ptr[k]; for( j = 0; j < class_count; j++ ) { tptr[var_count] = (float)j; float s = model->predict( temp_sample, noArray(), StatModel::RAW_OUTPUT ); if( max_sum < s ) { max_sum = s; best_class = j + 'A'; } } double r = std::abs(best_class - responses.at(i)) < FLT_EPSILON ? 1 : 0; if( i < ntrain_samples ) train_hr += r; else test_hr += r; } test_hr /= nsamples_all-ntrain_samples; train_hr = ntrain_samples > 0 ? train_hr/ntrain_samples : 1.; printf( "Recognition rate: train = %.1f%%, test = %.1f%%\n", train_hr*100., test_hr*100. ); cout << "Number of trees: " << model->getRoots().size() << endl; // Save classifier to file if needed if( !filename_to_save.empty() ) model->save( filename_to_save ); return true; } static bool build_mlp_classifier( const string& data_filename, const string& filename_to_save, const string& filename_to_load ) { const int class_count = 26; Mat data; Mat responses; bool ok = read_num_class_data( data_filename, 16, &data, &responses ); if( !ok ) return ok; Ptr model; int nsamples_all = data.rows; int ntrain_samples = (int)(nsamples_all*0.8); // Create or load MLP classifier if( !filename_to_load.empty() ) { model = load_classifier(filename_to_load); if( model.empty() ) return false; ntrain_samples = 0; } else { // !!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!! // // MLP does not support categorical variables by explicitly. // So, instead of the output class label, we will use // a binary vector of components for training and, // therefore, MLP will give us a vector of "probabilities" at the // prediction stage // // !!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!! Mat train_data = data.rowRange(0, ntrain_samples); Mat train_responses = Mat::zeros( ntrain_samples, class_count, CV_32F ); // 1. unroll the responses cout << "Unrolling the responses...\n"; for( int i = 0; i < ntrain_samples; i++ ) { int cls_label = responses.at(i) - 'A'; train_responses.at(i, cls_label) = 1.f; } // 2. train classifier int layer_sz[] = { data.cols, 100, 100, class_count }; int nlayers = (int)(sizeof(layer_sz)/sizeof(layer_sz[0])); Mat layer_sizes( 1, nlayers, CV_32S, layer_sz ); #if 1 int method = ANN_MLP::Params::BACKPROP; double method_param = 0.001; int max_iter = 300; #else int method = ANN_MLP::Params::RPROP; double method_param = 0.1; int max_iter = 1000; #endif Ptr tdata = TrainData::create(train_data, ROW_SAMPLE, train_responses); cout << "Training the classifier (may take a few minutes)...\n"; model = StatModel::train(tdata, ANN_MLP::Params(layer_sizes, ANN_MLP::SIGMOID_SYM, 0, 0, TC(max_iter,0), method, method_param)); cout << endl; } test_and_save_classifier(model, data, responses, ntrain_samples, 'A', filename_to_save); return true; } static bool build_knearest_classifier( const string& data_filename, int K ) { Mat data; Mat responses; bool ok = read_num_class_data( data_filename, 16, &data, &responses ); if( !ok ) return ok; Ptr model; int nsamples_all = data.rows; int ntrain_samples = (int)(nsamples_all*0.8); // create classifier by using and cout << "Training the classifier ...\n"; Ptr tdata = prepare_train_data(data, responses, ntrain_samples); model = StatModel::train(tdata, KNearest::Params(K, true)); cout << endl; test_and_save_classifier(model, data, responses, ntrain_samples, 0, string()); return true; } static bool build_nbayes_classifier( const string& data_filename ) { Mat data; Mat responses; bool ok = read_num_class_data( data_filename, 16, &data, &responses ); if( !ok ) return ok; Ptr model; int nsamples_all = data.rows; int ntrain_samples = (int)(nsamples_all*0.8); // create classifier by using and cout << "Training the classifier ...\n"; Ptr tdata = prepare_train_data(data, responses, ntrain_samples); model = StatModel::train(tdata, NormalBayesClassifier::Params()); cout << endl; test_and_save_classifier(model, data, responses, ntrain_samples, 0, string()); return true; } static bool build_svm_classifier( const string& data_filename, const string& filename_to_save, const string& filename_to_load ) { Mat data; Mat responses; bool ok = read_num_class_data( data_filename, 16, &data, &responses ); if( !ok ) return ok; Ptr model; int nsamples_all = data.rows; int ntrain_samples = (int)(nsamples_all*0.8); // Create or load Random Trees classifier if( !filename_to_load.empty() ) { model = load_classifier(filename_to_load); if( model.empty() ) return false; ntrain_samples = 0; } else { // create classifier by using and cout << "Training the classifier ...\n"; Ptr tdata = prepare_train_data(data, responses, ntrain_samples); SVM::Params params; params.svmType = SVM::C_SVC; params.kernelType = SVM::LINEAR; params.C = 1; model = StatModel::train(tdata, params); cout << endl; } test_and_save_classifier(model, data, responses, ntrain_samples, 0, filename_to_save); return true; } int main( int argc, char *argv[] ) { string filename_to_save = ""; string filename_to_load = ""; string data_filename = "../data/letter-recognition.data"; int method = 0; int i; for( i = 1; i < argc; i++ ) { if( strcmp(argv[i],"-data") == 0 ) // flag "-data letter_recognition.xml" { i++; data_filename = argv[i]; } else if( strcmp(argv[i],"-save") == 0 ) // flag "-save filename.xml" { i++; filename_to_save = argv[i]; } else if( strcmp(argv[i],"-load") == 0) // flag "-load filename.xml" { i++; filename_to_load = argv[i]; } else if( strcmp(argv[i],"-boost") == 0) { method = 1; } else if( strcmp(argv[i],"-mlp") == 0 ) { method = 2; } else if( strcmp(argv[i], "-knearest") == 0 || strcmp(argv[i], "-knn") == 0 ) { method = 3; } else if( strcmp(argv[i], "-nbayes") == 0) { method = 4; } else if( strcmp(argv[i], "-svm") == 0) { method = 5; } else break; } if( i < argc || (method == 0 ? build_rtrees_classifier( data_filename, filename_to_save, filename_to_load ) : method == 1 ? build_boost_classifier( data_filename, filename_to_save, filename_to_load ) : method == 2 ? build_mlp_classifier( data_filename, filename_to_save, filename_to_load ) : method == 3 ? build_knearest_classifier( data_filename, 10 ) : method == 4 ? build_nbayes_classifier( data_filename) : method == 5 ? build_svm_classifier( data_filename, filename_to_save, filename_to_load ): -1) < 0) { help(); } return 0; }