import random import tensorflow as tf import csv import numpy as np import cv2 import model fichier='ISIC2018_Task3_Training_GroundTruth/ISIC2018_Task3_Training_GroundTruth.csv' dir_images='ISIC2018_Task3_Training_Input/' tab_images=[] tab_labels=[] def rotateImage(image, angle): image_center=tuple(np.array(image.shape[1::-1])/2) rot_mat=cv2.getRotationMatrix2D(image_center, angle, 1.0) result=cv2.warpAffine(image, rot_mat, image.shape[1::-1], flags=cv2.INTER_LINEAR) return result with open(fichier, newline='') as csvfile: lignes=csv.reader(csvfile, delimiter=',') next(lignes, None) for ligne in lignes: label=np.array(ligne[1:], dtype=np.float32) img=cv2.imread(dir_images+ligne[0]+'.jpg') if img is None: print("Image absente", dir_images+ligne[0]+'.jpg') quit() img=cv2.resize(img, (100, 75)) tab_labels.append(label) tab_images.append(img) if label[1]: continue flag=0 for angle in range(0, 360, 30): img_r=rotateImage(img, angle) if label[2] or label[3] or label[5] or label[6]: tab_labels.append(label) i=cv2.flip(img_r, 0) tab_images.append(i) if not flag%3 and (label[0] or label[4]): tab_labels.append(label) i=cv2.flip(img_r, 0) tab_images.append(i) flag+=1 if label[2] or label[3] or label[5] or label[6]: tab_labels.append(label) i=cv2.flip(img_r, 1) tab_images.append(i) if label[5] or label[6]: tab_labels.append(label) i=cv2.flip(img_r, -1) tab_images.append(i) tab_labels=np.array(tab_labels, dtype=np.float32) tab_images=np.array(tab_images, dtype=np.float32)/255 indices=np.random.permutation(len(tab_labels)) tab_labels=tab_labels[indices] tab_images=tab_images[indices] print("SOMME", np.sum(tab_labels, axis=0)) model=model.model(7, 8) optimizer=tf.keras.optimizers.Adam(learning_rate=1E-4) model.compile(optimizer=optimizer, loss='categorical_crossentropy', metrics=['accuracy']) model.fit(tab_images, tab_labels, validation_split=0.05, batch_size=16, epochs=30) model.save('my_model/')