def get_dataset(dataset_path='Data/Train_Data'):
# Getting all data from data path:
try:
X = np.load('Data/npy_train_data/X.npy')
Y = np.load('Data/npy_train_data/Y.npy')
except:
inputs_path = dataset_path+'/input'
images = listdir(inputs_path) # Geting images
X = []
Y = []
for img in images:
img_path = inputs_path+'/'+img
x_img = get_img(img_path).astype('float32').reshape(64, 64, 3)
x_img /= 255.
y_img = get_img(img_path.replace('input/', 'mask/mask_')).astype('float32').reshape(64, 64, 1)
y_img /= 255.
X.append(x_img)
Y.append(y_img)
X = np.array(X)
Y = np.array(Y)
# Create dateset:
if not os.path.exists('Data/npy_train_data/'):
os.makedirs('Data/npy_train_data/')
np.save('Data/npy_train_data/X.npy', X)
np.save('Data/npy_train_data/Y.npy', Y)
X, X_test, Y, Y_test = train_test_split(X, Y, test_size=0.1, random_state=42)
return X, X_test, Y, Y_test
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