I would like to add two 3D numpy arrays (RGB image arrays) with a 2D mask generated by some algorithms on a greyscale image. What is the best way to do this?
As an example of what I am trying to do:
from PIL import Image, ImageChops, ImageOps import numpy as np img1=Image.open('./foo.jpg') img2=Image.open('./bar.jpg') img1Grey=ImageOps.grayscale(img1) img2Grey=ImageOps.grayscale(img2) # Some processing for example: diff=ImageChops.difference(img1Grey,img2Grey) mask=np.ma.masked_array(img1,diff>1) img1Array=np.asarray(im1) img2Array=np.asarray(im2) imgResult=img1Array+img2Array[mask]
I was thinking:
1) break up the RGB image and do each color separately
2) duplicate the mask into a 3D array
or is there a more pythonic way to do this?
Thanks in advance!