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Jun 18th, 2018
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  1. from keras.models import Model
  2. from keras.layers import Input, Dense, Dropout, Flatten, Conv2D, MaxPooling2D, BatchNormalization
  3. from keras.callbacks import ModelCheckpoint, EarlyStopping, TensorBoard
  4. from PIL import Image
  5. import numpy as np
  6. import csv
  7.  
  8.  
  9. in1 = Input((60, 200, 3))
  10.  
  11. print("Reading training data...")
  12. traincsv = open('./data/56_imitate_train_set/len_train.csv', 'r', encoding = 'utf8')
  13.  
  14. '''
  15. for row in csv.reader(traincsv):
  16. tmp = [np.array(Image.open("./data/56_imitate_train_set/" + '{0:05}'.format(int(row[0])) + ".jpg"))/255.0]
  17.  
  18. train_data = np.stack(tmp)
  19. '''
  20.  
  21.  
  22. train_data = np.stack([np.array(Image.open("./data/56_imitate_train_set/" + '{0:05}'.format(int(row[0])) + ".jpg"))/255.0 for row in csv.reader(traincsv)])
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