I have an RGB image, call it
img, represented as a double array with size (100,200,3)
I have a binary mask (call it
mask), that's a logical array with size (100,200).
I want to know the mean pixel value for the masked region. I also want to know the complete (3x3) covariance matrix for pixel values in the region.
Now, if this were a single channel (as opposed to 3 channel) image, I could simply do:
It's straight forward to do a similar operation in a loop for each channel, pulling out the values, then building up a large 3xN matrix (where N is the number of "trues" in
mask and finally, operating on that matrix with mean and cov. Curious if there's a way to do it without a loop. I'm not seeing it.