Created
October 14, 2010 15:20
-
-
Save astanin/626356 to your computer and use it in GitHub Desktop.
Compare two aligned images of the same size
This file contains bidirectional Unicode text that may be interpreted or compiled differently than what appears below. To review, open the file in an editor that reveals hidden Unicode characters.
Learn more about bidirectional Unicode characters
#!/usr/bin/env python | |
"""Compare two aligned images of the same size. | |
Usage: python compare.py first-image second-image | |
""" | |
import sys | |
from scipy.misc import imread | |
from scipy.linalg import norm | |
from scipy import sum, average | |
def main(): | |
file1, file2 = sys.argv[1:1+2] | |
# read images as 2D arrays (convert to grayscale for simplicity) | |
img1 = to_grayscale(imread(file1).astype(float)) | |
img2 = to_grayscale(imread(file2).astype(float)) | |
# compare | |
n_m, n_0 = compare_images(img1, img2) | |
print "Manhattan norm:", n_m, "/ per pixel:", n_m/img1.size | |
print "Zero norm:", n_0, "/ per pixel:", n_0*1.0/img1.size | |
def compare_images(img1, img2): | |
# normalize to compensate for exposure difference | |
img1 = normalize(img1) | |
img2 = normalize(img2) | |
# calculate the difference and its norms | |
diff = img1 - img2 # elementwise for scipy arrays | |
m_norm = sum(abs(diff)) # Manhattan norm | |
z_norm = norm(diff.ravel(), 0) # Zero norm | |
return (m_norm, z_norm) | |
def to_grayscale(arr): | |
"If arr is a color image (3D array), convert it to grayscale (2D array)." | |
if len(arr.shape) == 3: | |
return average(arr, -1) # average over the last axis (color channels) | |
else: | |
return arr | |
def normalize(arr): | |
rng = arr.max()-arr.min() | |
amin = arr.min() | |
return (arr-amin)*255/rng | |
if __name__ == "__main__": | |
main() |
Sign up for free
to join this conversation on GitHub.
Already have an account?
Sign in to comment
Hello, I've got this after running the python code can you please explain to me what i can infer from this?
please I'm really in need of this....
(tfgpu) mllab@admin-HP:~/Desktop/VinayV/darknet/image comparision$ python3 compare.py equirectangular.png equirectangular1.png
Manhattan norm: 189937836.75 / per pixel: 90.5694183111
Zero norm: 2090691.0 / per pixel: 0.996919155121