I am bugged by an apparent inconsistency between:
- image resizing functionalities from
keras.preprocessing, which are wrappers around PIL functions
- image resizing functions in TensorFlow's
I am training a deep learning model for a computer vision task with Keras (actually, with
tf.keras, but that doesn't matter here). I then serve the model with TF Serving, which requires me to send images to the model as encoded byte-strings, where they are decoded using
tf.image.decode_png before going through the model graph.
The problem occurs when I resize the images. Resizing with bilinear interpolation (or any other method) gives different results with PIL compared to with
tf.image, to such extent that the classification by the model changes depending on which function I use.
The code below provides a reproducible example.
import numpy as np from PIL import Image from keras.preprocessing.image import load_img, img_to_array import tensorflow as tf # Generate an 'image' with numpy, save as png np.random.seed(42) image = np.random.randint(0, 255, size=(256, 256, 3)).astype(np.uint8) Image.fromarray(image).convert("RGB").save('my_image.png')
Now, let's load the image in two ways. First with the PIL wrappers from Keras, as during the model training, then encoded as a binary string and decoded with TensorFlow functions, as in my model server.
# Using Keras PIL wrappers keras_image = img_to_array(load_img('./my_image.png')) # Using TF functionalities with tf.Session() as sess: with open('./my_image.png', 'rb') as f: tf_image_ = tf.image.decode_png(f.read()) tf_image = sess.run(tf_image_)
So far so good, as both images are exactly the same (apart from the dtype, as Keras has casted the image to float32):
# Assert equality np.array_equal(keras_image, tf_image) > True
Repeating this code with resizing however gives a different result:
# Using Keras PIL wrappers, with resizing keras_image_rs = img_to_array(load_img('./my_image.png', target_size=(224, 224), interpolation='bilinear')) # Using TF functionalities, with resizing with tf.Session() as sess: with open('./my_image.png', 'rb') as f: tf_image_ = tf.image.decode_png(f.read()) # Add and remove dimension # As tf.image.resize_* requires a batch dimension tf_image_ = tf.expand_dims(tf_image_, 0) tf_image_ = tf.image.resize_bilinear(tf_image_, [224, 224], align_corners=True) tf_image_ = tf.squeeze(tf_image_, axis=) tf_image_rs = sess.run(tf_image_) # Assert equality np.array_equal(keras_image_rs, tf_image_rs) > False
The mean absolute difference between the two images is non-negligible:
np.mean(np.abs(keras_image_rs - tf_image_rs)) 7.982703
I played with the
align_corners argument, and tried other available interpolation methods as well. None give the same output as when resizing the image with PIL. This is quite annoying as it gives me a skew between training and testing results. Does anyone have an idea as to what causes this behavior, or on how to fix it?