I've noticed some strange behaviour in
preprocess_input, a function used to preprocess images to normalise values correctly for the specific pre-trained network you are using.
After several hours of debugging, it appears that when a tensor is used as an input, the input tensor is unmodified, and it returns the processed input as a new tensor:
tensor = tf.ones(3)*100 print(tensor) tensor2 = tf.keras.applications.mobilenet_v2.preprocess_input (tensor) print(tensor) print(tensor2)
tf.Tensor([100. 100. 100.], shape=(3,), dtype=float32) tf.Tensor([100. 100. 100.], shape=(3,), dtype=float32) tf.Tensor([-0.21568626 -0.21568626 -0.21568626], shape=(3,), dtype=float32)
However when doing the exact same thing but with a numpy array as input, apart from returning the processed version as a new array, the original array is changed to be the same as the new array:
array = np.ones(3)*100 print(array) array2 = tf.keras.applications.mobilenet_v2.preprocess_input (array) print(array) print(array2) array+=1 print(array) print(array2)
[100. 100. 100.] [-0.21568627 -0.21568627 -0.21568627] # <== input has changed!!! [-0.21568627 -0.21568627 -0.21568627] [0.78431373 0.78431373 0.78431373] [0.78431373 0.78431373 0.78431373] # <== further changes to input change output
- Why is behaviour not uniform?
- Why is it considered beneficial for the original array to be changed?
- Why does preprocess_input both return the new values and also modify in-place - isn't it usually one or the other, doing both is confusing...