I would like my keras model to resize the input image using cv2 or similar.

I have seen the use of ImageGenerator, but I would prefer to write my own generator and simply resize the image in the first layer with keras.layers.core.Lambda.

How would I do this?

If you are using tensorflow backend then you can use tf.image.resize_images() function to resize the images in Lambda layer.

Here is a small example to demonstrate the same:

import numpy as np
import scipy.ndimage
import matplotlib.pyplot as plt

from keras.layers import Lambda, Input
from keras.models import Model
from keras.backend import tf as ktf

# 3 channel images of arbitrary shape
inp = Input(shape=(None, None, 3))
    out = Lambda(lambda image: ktf.image.resize_images(image, (128, 128)))(inp)
except :
    # if you have older version of tensorflow
    out = Lambda(lambda image: ktf.image.resize_images(image, 128, 128))(inp)

model = Model(input=inp, output=out)

X = scipy.ndimage.imread('test.jpg')

out = model.predict(X[np.newaxis, ...])

fig, Axes = plt.subplots(nrows=1, ncols=2)

  • I've run into the same problem as before. At prediction time, I get an error that ktf is not found. I applied the same import statement in my prediction script of course. I also changed to a full path as keras.backend.tf and still NameError: name keras is not defined – Sam Hammamy Feb 16 '17 at 16:26
  • @SamHammamy It seems the environment where you are running the predict script don't have keras. Try importing only keras and see. If it works see which backend its using. Also instead of getting tf from keras backend, you can use import tensorflow as tf and use the same. – indraforyou Feb 16 '17 at 17:14
  • Of course it has keras. I ran the prediction by resizing in the generator for weeks. It is however a Raspberry Pi board and I installed TensorFlow on it from a custom pip wheel I found online. As I said it works fine if I resize in the generator. I also found this solution which I need to investigate today gist.github.com/bzamecnik/a33052ec46ee7efeb217856d98a4fb5f – Sam Hammamy Feb 16 '17 at 20:08
  • I could get this to work either model.add(Lambda(lambda image: K.resize_images(image, 240./64, 340./64, 'tf'))) I get a resource exhausted error during training even with only 32 images in a batch – Sam Hammamy Feb 16 '17 at 20:26
  • There are few things which you can do.. train on system. when you have a good set of weights use it to run on the embedded system.. this will decrease the memory requirement on the embedded system by the batch size. 2nd use theano backend.. tensorflow is more memory hungry. – indraforyou Feb 17 '17 at 1:21

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