I am creating a code which will tell me how similar two letters are to each other. For this, I decided to go with HuMoments concept in OpenCV.

Given are the images that I have

Co.jpg C0.jpg

A.jpg A.jpg

Colorado.jpg Colorado.jpg

I am reading the images using:

im5 = cv2.imread("images/C0.jpg",cv2.IMREAD_GRAYSCALE)
im7 = cv2.imread("images/Colorado.jpg",cv2.IMREAD_GRAYSCALE)
im9 = cv2.imread("images/A.jpg",cv2.IMREAD_GRAYSCALE)

I am using cv2.matchShapes attribute to match:

m6 = cv2.matchShapes(im5, im7, cv2.CONTOURS_MATCH_I2,0)
m8 = cv2.matchShapes(im5, im9, cv2.CONTOURS_MATCH_I2,0)

Finally I am printing the output:

print("C0.png and Colorado.png : {}".format(m6))
print("C0.png and A.jpg : {}".format(m8))

Here the value closest to zero (0) means perfect match

My output:

$ python3 shapeMatcher.py 
Shape Distances Between 
C0.png and Colorado.png : 0.10518804385516889
C0.png and A.jpg : 0.0034705987357361856

C0 and Colorado are mismatches which is displayed correctly. The one thing that's baffling me is how is C0.jpg and A.jpg a close match? Am I missing something, what's an alternate way to get a mismatch between C0 and A? Please note value closer to zero means closest match.


According to the documentation, cv2.matchShapes requires contours as input, not images.

This tutorial has an example usage:

import cv2
import numpy as np

img1 = cv2.imread('star.jpg',0)
img2 = cv2.imread('star2.jpg',0)

ret, thresh = cv2.threshold(img1, 127, 255,0)
ret, thresh2 = cv2.threshold(img2, 127, 255,0)
contours,hierarchy = cv2.findContours(thresh,2,1)
cnt1 = contours[0]
contours,hierarchy = cv2.findContours(thresh2,2,1)
cnt2 = contours[0]

ret = cv2.matchShapes(cnt1,cnt2,1,0.0)
print ret

(Note that findContours syntax changed from OpenCV 2 to OpenCV 3.)

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