#include "data.h" #include "list.h" #include "utils.h" #include "image.h" #include #include #include list *get_paths(char *filename) { char *path; FILE *file = fopen(filename, "r"); list *lines = make_list(); while((path=fgetl(file))){ list_insert(lines, path); } fclose(file); return lines; } void fill_truth(char *path, char **labels, int k, double *truth) { int i; memset(truth, 0, k*sizeof(double)); for(i = 0; i < k; ++i){ if(strstr(path, labels[i])){ truth[i] = 1; } } } data load_data_image_paths(char **paths, int n, char **labels, int k) { int i; data d; d.shallow = 0; d.X.rows = n; d.X.vals = calloc(d.X.rows, sizeof(double*)); d.y = make_matrix(n, k); for(i = 0; i < n; ++i){ image im = load_image(paths[i]); d.X.vals[i] = im.data; d.X.cols = im.h*im.w*im.c; fill_truth(paths[i], labels, k, d.y.vals[i]); } return d; } data load_data_image_pathfile(char *filename, char **labels, int k) { list *plist = get_paths(filename); char **paths = (char **)list_to_array(plist); data d = load_data_image_paths(paths, plist->size, labels, k); free_list_contents(plist); free_list(plist); free(paths); return d; } void free_data(data d) { if(!d.shallow){ free_matrix(d.X); free_matrix(d.y); }else{ free(d.X.vals); free(d.y.vals); } } data load_data_image_pathfile_part(char *filename, int part, int total, char **labels, int k) { list *plist = get_paths(filename); char **paths = (char **)list_to_array(plist); int start = part*plist->size/total; int end = (part+1)*plist->size/total; data d = load_data_image_paths(paths+start, end-start, labels, k); free_list_contents(plist); free_list(plist); free(paths); return d; } data load_data_image_pathfile_random(char *filename, int n, char **labels, int k) { int i; list *plist = get_paths(filename); char **paths = (char **)list_to_array(plist); char **random_paths = calloc(n, sizeof(char*)); for(i = 0; i < n; ++i){ int index = rand()%plist->size; random_paths[i] = paths[index]; } data d = load_data_image_paths(random_paths, n, labels, k); free_list_contents(plist); free_list(plist); free(paths); free(random_paths); return d; } data load_categorical_data_csv(char *filename, int target, int k) { data d; d.shallow = 0; matrix X = csv_to_matrix(filename); double *truth_1d = pop_column(&X, target); double **truth = one_hot_encode(truth_1d, X.rows, k); matrix y; y.rows = X.rows; y.cols = k; y.vals = truth; d.X = X; d.y = y; free(truth_1d); return d; } void randomize_data(data d) { int i; for(i = d.X.rows-1; i > 0; --i){ int index = rand()%i; double *swap = d.X.vals[index]; d.X.vals[index] = d.X.vals[i]; d.X.vals[i] = swap; swap = d.y.vals[index]; d.y.vals[index] = d.y.vals[i]; d.y.vals[i] = swap; } } void normalize_data_rows(data d) { int i; for(i = 0; i < d.X.rows; ++i){ normalize_array(d.X.vals[i], d.X.cols); } } data *cv_split_data(data d, int part, int total) { data *split = calloc(2, sizeof(data)); int i; int start = part*d.X.rows/total; int end = (part+1)*d.X.rows/total; data train; data test; train.shallow = test.shallow = 1; test.X.rows = test.y.rows = end-start; train.X.rows = train.y.rows = d.X.rows - (end-start); train.X.cols = test.X.cols = d.X.cols; train.y.cols = test.y.cols = d.y.cols; for(i = 0; i < start; ++i){ train.X.vals[i] = d.X.vals[i]; train.y.vals[i] = d.y.vals[i]; } for(i = start; i < end; ++i){ test.X.vals[i-start] = d.X.vals[i]; test.y.vals[i-start] = d.y.vals[i]; } for(i = end; i < d.X.rows; ++i){ train.X.vals[i-(start-end)] = d.X.vals[i]; train.y.vals[i-(start-end)] = d.y.vals[i]; } split[0] = train; split[1] = test; return split; }