import tensorflow as tf import numpy as np import glob import cv2 import model import config tab_images=[] tab_labels=[] def complete_dataset(files, value): for image in glob.glob(files): img=cv2.imread(image) img=cv2.resize(img, (config.size, config.size)) tab_images.append(img) tab_labels.append([value]) img=cv2.flip(img, 1) tab_images.append(img) tab_labels.append([value]) img=cv2.flip(img, 0) tab_images.append(img) tab_labels.append([value]) complete_dataset(config.dir_pos+'\\*.png', 1.) complete_dataset(config.dir_neg+'\\*.png', 0.) tab_images=np.array(tab_images, dtype=np.float32)/255 tab_labels=np.array(tab_labels, dtype=np.float32) index=np.random.permutation(len(tab_images)) tab_images=tab_images[index] tab_labels=tab_labels[index] #for i in range(len(tab_images)): # cv2.imshow('Camera', tab_images[i]) # print("Label", tab_labels[i]) # if cv2.waitKey()&0xFF==ord('q'): # quit() model=model.model(config.size, 8) model.compile(optimizer='adam', loss='binary_crossentropy', metrics=['accuracy']) model.fit(tab_images, tab_labels, validation_split=0.05, batch_size=64, epochs=30) model.save('saved_model\\my_model')