So I have a set of data which I am able to convert to form separate numpy arrays of R, G, B bands. Now I need to combine them to form an RGB image.

I tried 'Image' to do the job but it requires 'mode' to be attributed.

I tried to do a trick. I would use Image.fromarray() to take the array to image but it attains 'F' mode by default when Image.merge requires 'L' mode images to merge. If I would declare the attribute of array in fromarray() to 'L' at first place, all the R G B images become distorted.

But, if I save the images and then open them and then merge, it works fine. Image reads the image with 'L' mode.

Now I have two issues.

First, I dont think it is an elegant way of doing the work. So if anyone knows the better way of doing it, please tell

Secondly, Image.SAVE is not working properly. Following are the errors I face:

In [7]: Image.SAVE(imagefile, 'JPEG')

TypeError                                 Traceback (most recent call last)

/media/New Volume/Documents/My own works/ISAC/SAMPLES/<ipython console> in <module>()

TypeError: 'dict' object is not callable

Please suggest solutions.

And please mind that the image is around 4000x4000 size array.

5 Answers 5

rgb = np.dstack((r,g,b))  # stacks 3 h x w arrays -> h x w x 3

To also convert floats 0 .. 1 to uint8 s,

rgb_uint8 = (np.dstack((r,g,b)) * 255.999) .astype(np.uint8)  # right, Janna, not 256

I don't really understand your question but here is an example of something similar I've done recently that seems like it might help:

# r, g, and b are 512x512 float arrays with values >= 0 and < 1.
from PIL import Image
import numpy as np
rgbArray = np.zeros((512,512,3), 'uint8')
rgbArray[..., 0] = r*256
rgbArray[..., 1] = g*256
rgbArray[..., 2] = b*256
img = Image.fromarray(rgbArray)

I hope that helps

  • 15
    @IshanTomar - you may wish to accept that answer if it was helpful.
    – Bach
    May 22, 2014 at 8:39
  • If you want to save the array as an image it should be "toimage"
    – icypy
    Nov 28, 2015 at 23:25
  • 6
    @IshanTomar you really should accept the most helpful answers, that's an important part of what keeps StackOverflow ticking Oct 26, 2018 at 12:28
  • 1
    what does the three dots(...) mean?
    – Lei Yang
    Jun 29, 2020 at 1:13
  • 2
    @LeiYang it means to slice all of the previous dimensions. See this: python-reference.readthedocs.io/en/latest/docs/brackets/…
    – Josh Bone
    Sep 24, 2021 at 21:35
rgb = np.dstack((r,g,b))  # stacks 3 h x w arrays -> h x w x 3

This code doesnt create 3d array if you pass 3 channels. 2 channels remain.


Convert the numpy arrays to uint8 before passing them to Image.fromarray

Eg. if you have floats in the range [0..1]:

r = Image.fromarray(numpy.uint8(r_array*255.999))

Your distortion i believe is caused by the way you are splitting your original image into its individual bands and then resizing it again before putting it into merge;

image=Image.open("your image")

print(image.size) #size is inverted i.e columns first rows second eg: 500,250

#convert to array

# reshape 
reshaper=arr_r.reshape(250,500) #size flipped so it reshapes correctly

imr=Image.fromarray(reshaper,mode=None) # mode I


this works well !


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.