cv::Mat readCSV(const string & filename, int datatype) { // read CSV data CvMLData mlData; int err = mlData.read_csv(filename.c_str()); if (err != 0) { cerr << "error: failed to load " << filename << endl; exit(-1); } // convert data to matrix cv::Mat values(mlData.get_values()); cv::Mat data; values.convertTo(data, datatype); // display info cout << "filename: " << filename << endl; cout << "size: " << data.rows << " " << data.cols << endl; // display first lines cv::Mat subData(data, cv::Rect(0, 0, data.cols, 3)); displayMat(subData); cout << " ..." << endl; return data; }
int main() { // load codebook cout << "load codebook ... ..." << endl; string cbpath = "data/cluster/clst.npy"; CvMLData mlData; mlData.read_csv(cbpath.c_str()); Mat codebook(mlData.get_values()); // load flann cout << "build flann ... ... " << endl; string flannpath = "data/cache/flann.index"; cv::flann::IndexParams *indexParams; cv::flann::Index *flannIndex; if (exists(flannpath)) { indexParams = new cv::flann::SavedIndexParams(flannpath); flannIndex = new cv::flann::Index(codebook, *indexParams); } else { indexParams = new cv::flann::AutotunedIndexParams(); flannIndex = new cv::flann::Index(codebook, *indexParams); flannIndex->save(flannpath); } // create the inverted index vector<string> siftpaths = readlines("data/featlist"); string savepath = "data/cache/ivindex.txt"; if (!exists(savepath)) { cerr << "index file doesn't exist ... ..." << endl; exit(-1); } IvIndex ivindex(savepath, codebook, siftpaths.size()); // prepare the context and sockets zmq::context_t context(1); zmq::socket_t socket(context, ZMQ_REP); socket.bind("tcp://*:5555"); cout << "start to receive request ... ..." << endl; // query while (true) { // Wait for next request from client string recvStr = s_recv(socket); // ???? transform recvStr ukbench00000.th.jpg to data/Images/ukbench00000.jpg.sift char path[128]; sprintf(path, "data/Images/ukbench%s.jpg.sift", recvStr.substr(7, 5).c_str()); cout << "process request: " << recvStr << endl; vector<size_t> ret = ivindex.score(path, 15, flannIndex); sleep(1); // Send reply back to client string reply; for (auto x: ret) { reply += to_string(x) + " "; } s_send(socket, reply); } delete indexParams; indexParams = nullptr; delete flannIndex; flannIndex = nullptr; return 0; }
int main() { const int train_sample_count = 300; bool is_regression = false; const char* filename = "data/waveform.data"; int response_idx = 21; CvMLData data; CvTrainTestSplit spl( train_sample_count ); if(data.read_csv(filename) != 0) { printf("couldn't read %s\n", filename); exit(0); } data.set_response_idx(response_idx); data.change_var_type(response_idx, CV_VAR_CATEGORICAL); data.set_train_test_split( &spl ); const CvMat* values = data.get_values(); const CvMat* response = data.get_responses(); const CvMat* missing = data.get_missing(); const CvMat* var_types = data.get_var_types(); const CvMat* train_sidx = data.get_train_sample_idx(); const CvMat* var_idx = data.get_var_idx(); CvMat*response_map; CvMat*ordered_response = cv_preprocess_categories(response, var_idx, response->rows, &response_map, NULL); int num_classes = response_map->cols; CvDTree dtree; printf("======DTREE=====\n"); CvDTreeParams cvd_params( 10, 1, 0, false, 16, 0, false, false, 0); dtree.train( &data, cvd_params); print_result( dtree.calc_error( &data, CV_TRAIN_ERROR), dtree.calc_error( &data, CV_TEST_ERROR ), dtree.get_var_importance() ); #if 0 /* boosted trees are only implemented for two classes */ printf("======BOOST=====\n"); CvBoost boost; boost.train( &data, CvBoostParams(CvBoost::DISCRETE, 100, 0.95, 2, false, 0)); print_result( boost.calc_error( &data, CV_TRAIN_ERROR ), boost.calc_error( &data, CV_TEST_ERROR), 0 ); #endif printf("======RTREES=====\n"); CvRTrees rtrees; rtrees.train( &data, CvRTParams( 10, 2, 0, false, 16, 0, true, 0, 100, 0, CV_TERMCRIT_ITER )); print_result( rtrees.calc_error( &data, CV_TRAIN_ERROR), rtrees.calc_error( &data, CV_TEST_ERROR ), rtrees.get_var_importance() ); printf("======ERTREES=====\n"); CvERTrees ertrees; ertrees.train( &data, CvRTParams( 10, 2, 0, false, 16, 0, true, 0, 100, 0, CV_TERMCRIT_ITER )); print_result( ertrees.calc_error( &data, CV_TRAIN_ERROR), ertrees.calc_error( &data, CV_TEST_ERROR ), ertrees.get_var_importance() ); printf("======GBTREES=====\n"); CvGBTrees gbtrees; CvGBTreesParams gbparams; gbparams.loss_function_type = CvGBTrees::DEVIANCE_LOSS; // classification, not regression gbtrees.train( &data, gbparams); //gbt_print_error(&gbtrees, values, response, response_idx, train_sidx); print_result( gbtrees.calc_error( &data, CV_TRAIN_ERROR), gbtrees.calc_error( &data, CV_TEST_ERROR ), 0); printf("======KNEAREST=====\n"); CvKNearest knearest; //bool CvKNearest::train( const Mat& _train_data, const Mat& _responses, // const Mat& _sample_idx, bool _is_regression, // int _max_k, bool _update_base ) bool is_classifier = var_types->data.ptr[var_types->cols-1] == CV_VAR_CATEGORICAL; assert(is_classifier); int max_k = 10; knearest.train(values, response, train_sidx, is_regression, max_k, false); CvMat* new_response = cvCreateMat(response->rows, 1, values->type); //print_types(); //const CvMat* train_sidx = data.get_train_sample_idx(); knearest.find_nearest(values, max_k, new_response, 0, 0, 0); print_result(knearest_calc_error(values, response, new_response, train_sidx, is_regression, CV_TRAIN_ERROR), knearest_calc_error(values, response, new_response, train_sidx, is_regression, CV_TEST_ERROR), 0); printf("======== RBF SVM =======\n"); //printf("indexes: %d / %d, responses: %d\n", train_sidx->cols, var_idx->cols, values->rows); CvMySVM svm1; CvSVMParams params1 = CvSVMParams(CvSVM::C_SVC, CvSVM::RBF, /*degree*/0, /*gamma*/1, /*coef0*/0, /*C*/1, /*nu*/0, /*p*/0, /*class_weights*/0, cvTermCriteria(CV_TERMCRIT_ITER+CV_TERMCRIT_EPS, 1000, FLT_EPSILON)); //svm1.train(values, response, train_sidx, var_idx, params1); svm1.train_auto(values, response, var_idx, train_sidx, params1); svm_print_error(&svm1, values, response, response_idx, train_sidx); printf("======== Linear SVM =======\n"); CvMySVM svm2; CvSVMParams params2 = CvSVMParams(CvSVM::C_SVC, CvSVM::LINEAR, /*degree*/0, /*gamma*/1, /*coef0*/0, /*C*/1, /*nu*/0, /*p*/0, /*class_weights*/0, cvTermCriteria(CV_TERMCRIT_ITER+CV_TERMCRIT_EPS, 1000, FLT_EPSILON)); //svm2.train(values, response, train_sidx, var_idx, params2); svm2.train_auto(values, response, var_idx, train_sidx, params2); svm_print_error(&svm2, values, response, response_idx, train_sidx); printf("======NEURONAL NETWORK=====\n"); int num_layers = 3; CvMat layers = cvMat(1, num_layers, CV_32SC1, calloc(1, sizeof(double)*num_layers*1)); cvmSetI(&layers, 0, 0, values->cols-1); cvmSetI(&layers, 0, 1, num_classes); cvmSetI(&layers, 0, 2, num_classes); CvANN_MLP ann(&layers, CvANN_MLP::SIGMOID_SYM, 0.0, 0.0); CvANN_MLP_TrainParams ann_params; //ann_params.train_method = CvANN_MLP_TrainParams::BACKPROP; CvMat ann_response = cvmat_make_boolean_class_columns(response, num_classes); CvMat values2 = cvmat_remove_column(values, response_idx); ann.train(&values2, &ann_response, NULL, train_sidx, ann_params, 0x0000); //ann.train(values, &ann_response, NULL, train_sidx, ann_params, 0x0000); ann_print_error(&ann, values, num_classes, &ann_response, response, response_idx, train_sidx); #if 0 /* slow */ printf("======== Polygonal SVM =======\n"); //printf("indexes: %d / %d, responses: %d\n", train_sidx->cols, var_idx->cols, values->rows); CvMySVM svm3; CvSVMParams params3 = CvSVMParams(CvSVM::C_SVC, CvSVM::POLY, /*degree*/2, /*gamma*/1, /*coef0*/0, /*C*/1, /*nu*/0, /*p*/0, /*class_weights*/0, cvTermCriteria(CV_TERMCRIT_ITER+CV_TERMCRIT_EPS, 1000, FLT_EPSILON)); //svm3.train(values, response, train_sidx, var_idx, params3); svm3.train_auto(values, response, var_idx, train_sidx, params3); svm_print_error(&svm3, values, response, response_idx, train_sidx); #endif return 0; }