I'm doing image comparisons and calculating diff's and have noticed that element-wise subtraction only seems to work when I read the data in as a numpy array with dtype='int64' and not with dtype='uint8'. I'd like to switch to 'unit8' for image visualization reasons.

image1 = np.array(plt.imread('fixed_image.jpg'), dtype='int64')[:, :, 0:3]
image2 = np.array(plt.imread('fixed_image_2.jpg'), dtype='int64')[:, :, 0:3]
diff = image1-image2

In the code above, diff is only calculated correctly with dtype int64 and not with dtype uint8. Why is that?

  • You can solve this by doing diff = (image1-image2).astype('uint8') – Jonas Adler Jul 16 '17 at 0:02
  • Compare c-c[::-1] for some range of numbers, such as np.arange(0,256) for the 2 dtypes. – hpaulj Jul 16 '17 at 0:17

uint8 means "8 bit unsigned integer" and only has valid values in 0-255. This is because 256 distinct values is the maximum amount that can be represented using 8 bits of data. If you add two uint8 images together, you'll very likely overflow 255 somewhere. For example:

>>> np.uint8(130) + np.uint8(131)

Similarly, if you subtract two images, you'll very likely get negative numbers - which get wrapped around to the high end of the range again:

>>> np.uint8(130) - np.uint8(131)

If you need to add or subtract images like this, you'll want to work with a dtype that won't underflow/overflow as easily (e.g. int64 or float), then normalize and convert back to uint8 as the last step.

|improve this answer|||||

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.