26

This question already has an answer here:

I want to convert a gray-scale image with shape (height,width) to a 3 channels image with shape (height,width,nchannels). The work is done with a for-loop, but there must be a neat way. Here is a piece code in program, can someone give a hint. please advice.

 30         if img.shape == (height,width): # if img is grayscale, expand
 31             print "convert 1-channel image to ", nchannels, " image."
 32             new_img = np.zeros((height,width,nchannels))
 33             for ch in range(nchannels):
 34                 for xx in range(height):
 35                     for yy in range(width):
 36                         new_img[xx,yy,ch] = img[xx,yy]
 37             img = new_img

marked as duplicate by Divakar numpy Oct 19 '16 at 13:04

This question has been asked before and already has an answer. If those answers do not fully address your question, please ask a new question.

  • 1
    What is the question here? If you just want to change the dimensions, it's a simple reshape-operation. If you want to recreate colors it's not possible without some model / assumptions. Your grayscale image has no color-information and everything you can do is guessing colors (which might be simple and bad and more complex and not that bad; there are no limits). – sascha Oct 18 '16 at 23:38
  • @sascha I want to copy the gray scale image 3 times, so it agrees with the color image shape, then my program can treat the images as the same. But I want to have a better implementation without for-loop – Dylan Oct 18 '16 at 23:44
57

You can use np.stack to accomplish this much more concisely:

img = np.array([[1, 2], [3, 4]])
stacked_img = np.stack((img,)*3, axis=-1)
print(stacked_img)
 # array([[[1, 1, 1],
 #         [2, 2, 2]],
 #        [[3, 3, 3],
 #         [4, 4, 4]]])
  • I think that OP expects [ [[1 1 1][2 2 2]] [[3 3 3][4 4 4]] ] – furas Oct 18 '16 at 23:57
  • 1
    @furas Yep! using axis=-1 achieves this (making 3 channels) – liamzebedee Oct 18 '17 at 0:44
  • The above code gets a shape of (w,h,1,3) which is wrong (Py 3.6) I instead needed stacked_img = np.squeeze(np.stack((rescaled,) * 3, -1)) to get it back to (w,h,3) – Richard Keene Jul 26 '18 at 21:06

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