I'm trying to add channel because of below error

ValueError: could not broadcast input array from shape (48,48) into shape (48,48,1)


img = cv2.imread(f,0)
resized = cv2.resize(img, (48,48), interpolation = cv2.INTER_AREA)
(48, 48)

But I need a channel image like (48,48,1).

How can I solve this?

  • 2
    Reshape your array? img = img.reshape(48,48,1)
    – DavidG
    Mar 12 '18 at 14:27
y = np.expand_dims(x, axis=-1)  # Equivalent to x[:,:,np.newaxis]

As the function says, it will add an extra dimension as the new Last Channel


  • axis will be -1 instead of 1
  • 2
    this is incorrect, it returns shape (48, 1, 48). Did you mean axis=-1 ? Jul 8 '19 at 13:06
  • Yep; we need to adjust it! thnx
    – Aditya
    Jul 8 '19 at 16:14

You can do this by using split and merge operations:

First, split your 2-channel image into two arrays using split. Then, create the array which gives you the third channel, separately. Finally, merge the three arrays to get one 3-channel Mat.

This is an example:

c1,c2 = cv2.split(img)
merged = cv2.merge((c1,c2,arr))

Where img is your 2-channel image, arr is the array containing the channel to add, and the merged image contains the three channels merged.


Another workaround might be creating a placeholder and populating it.

ph = np.ones((resized.shape[0], resized.shape[1], 1), dtype='uint8')
ph[:,:,0] = resized

Modifying Aditya's answer:

y = np.expand_dims(x, axis=1)

axis = 1 will insert new dimension at the beginning, so you could simply change the value of the axis to be = 3. It worked for me.


very easy! on your interactive shell, just do

>>> y = image.resize(48, 48, 1)

>>> y.shape

>>> (48, 48, 1)

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