Reputation: 2158
I have two images and would like to make it obvious where the differences are. I want to add color to the two images such that a user can clearly spot all the differences within a second or two.
For example, here are two images with a few differences:
leftImage.jpg: | rightImage.jpg: |
---|---|
My current approach to make the differences obvious, is to create a mask (difference between the two images), color it red, and then add it to the images. The goal is to clearly mark all differences with a strong red color. Here is my current code:
import cv2
# load images
image1 = cv2.imread("leftImage.jpg")
image2 = cv2.imread("rightImage.jpg")
# compute difference
difference = cv2.subtract(image1, image2)
# color the mask red
Conv_hsv_Gray = cv2.cvtColor(difference, cv2.COLOR_BGR2GRAY)
ret, mask = cv2.threshold(Conv_hsv_Gray, 0, 255,cv2.THRESH_BINARY_INV |cv2.THRESH_OTSU)
difference[mask != 255] = [0, 0, 255]
# add the red mask to the images to make the differences obvious
image1[mask != 255] = [0, 0, 255]
image2[mask != 255] = [0, 0, 255]
# store images
cv2.imwrite('diffOverImage1.png', image1)
cv2.imwrite('diffOverImage2.png', image1)
cv2.imwrite('diff.png', difference)
diff.png: | diffOverImage1.png | diffOverImage2.png |
---|---|---|
Problem with the current code: The computed mask shows some differences but not all of them (see for example the tiny piece in the upper right corner, or the rope thingy on the blue packet). These differences are shown only very lightly in the computed mask, but they should be clearly red like the other differences.
Input: 2 images with some differences.
Expected Output: 3 images: the two input images but with the differences highlighted (clearly highlighted in a configurable color), and a third image containing only the differences (the mask).
Upvotes: 90
Views: 125121
Reputation: 207345
One great way of quickly identifying differences between two images is using an animated GIF like this:
The process is described and the code is available here. It can be pretty readily adapted to Python. As is, it uses ImageMagick which is installed on most Linux distros and is available for macOS and Windows.
Just for reference, I used this command in Terminal:
flicker_cmp -o result.gif -r x400 a.jpg b.jpg
I suddenly got the urge to add a Python version using Pillow - it produces the same result as above:
#!/usr/bin/env python3
from PIL import Image
# Create a list of frames of the animation
frames = []
frames.append(Image.open('lemons1.jpg'))
frames.append(Image.open('lemons2.jpg'))
# Save result
frames[0].save('anim.gif', save_all=True, append_images=frames[1:], duration=100, loop=0)
Upvotes: 39
Reputation: 46600
Method #1: Structural Similarity Index (SSIM)
To visualize differences between two images, we can take a quantitative approach to determine the exact discrepancies between images using the Structural Similarity Index (SSIM) which was introduced in Image Quality Assessment: From Error Visibility to Structural Similarity. This method is already implemented in the scikit-image library for image processing. You can install scikit-image
with pip install scikit-image
.
Using the skimage.metrics.structural_similarity
function from scikit-image, it returns a score
and a difference image, diff
. The score
represents the structural similarity index between the two input images and can fall between the range [-1,1] with values closer to one representing higher similarity. But since you're only interested in where the two images differ, the diff
image is what we'll focus on. Specifically, the diff
image contains the actual image differences with darker regions having more disparity. Larger areas of disparity are highlighted in black while smaller differences are in gray.
All differences ->
Significant region differences
The gray noisy areas are probably due to .jpg lossy compression. We would obtain a cleaner result if we used a lossless compression image format. The SSIM score after comparing the two images show that they are very similar.
Image Similarity: 91.9887%
Now we filter through the diff
image since we only want to find the large differences between the images. We iterate through each contour, filter using a minimum threshold area to remove the gray noise, and highlight the differences with a bounding box. Here's the result.
To visualize the exact differences, we fill the contours onto a mask and on the original image.
from skimage.metrics import structural_similarity
import cv2
import numpy as np
# Load images
before = cv2.imread('left.jpg')
after = cv2.imread('right.jpg')
# Convert images to grayscale
before_gray = cv2.cvtColor(before, cv2.COLOR_BGR2GRAY)
after_gray = cv2.cvtColor(after, cv2.COLOR_BGR2GRAY)
# Compute SSIM between the two images
(score, diff) = structural_similarity(before_gray, after_gray, full=True)
print("Image Similarity: {:.4f}%".format(score * 100))
# The diff image contains the actual image differences between the two images
# and is represented as a floating point data type in the range [0,1]
# so we must convert the array to 8-bit unsigned integers in the range
# [0,255] before we can use it with OpenCV
diff = (diff * 255).astype("uint8")
diff_box = cv2.merge([diff, diff, diff])
# Threshold the difference image, followed by finding contours to
# obtain the regions of the two input images that differ
thresh = cv2.threshold(diff, 0, 255, cv2.THRESH_BINARY_INV | cv2.THRESH_OTSU)[1]
contours = cv2.findContours(thresh, cv2.RETR_EXTERNAL, cv2.CHAIN_APPROX_SIMPLE)
contours = contours[0] if len(contours) == 2 else contours[1]
mask = np.zeros(before.shape, dtype='uint8')
filled_after = after.copy()
for c in contours:
area = cv2.contourArea(c)
if area > 40:
x,y,w,h = cv2.boundingRect(c)
cv2.rectangle(before, (x, y), (x + w, y + h), (36,255,12), 2)
cv2.rectangle(after, (x, y), (x + w, y + h), (36,255,12), 2)
cv2.rectangle(diff_box, (x, y), (x + w, y + h), (36,255,12), 2)
cv2.drawContours(mask, [c], 0, (255,255,255), -1)
cv2.drawContours(filled_after, [c], 0, (0,255,0), -1)
cv2.imshow('before', before)
cv2.imshow('after', after)
cv2.imshow('diff', diff)
cv2.imshow('diff_box', diff_box)
cv2.imshow('mask', mask)
cv2.imshow('filled after', filled_after)
cv2.waitKey()
Limitations: Although this method works very well, there are some important limitations. The two input images must have the same size/dimensions and also suffers from a few problems including scaling, translations, rotations, and distortions. SSIM also does not perform very well on blurry or noisy images. For images that do not have the same dimensions, we must switch from identifying pixel-similarity to object-similarity using deep-learning feature models instead of comparing individual pixel values. See checking images for similarity with OpenCV using Dense Vector Representations for scale-invariant and transformation indifferent images.
Note: scikit-image version used is 0.18.1
.
Method #2: cv2.absdiff
For completeness, OpenCV provides a very simple built-in method using cv2.absdiff
but the results are not as good as SSIM and also does not calculate a similarity score between the two images. This method only generates a difference image.
The results are very washed and still suffers from the same limitations. Although this method is much simpler, the recommendation is to use SSIM.
import cv2
# Load images as grayscale
image1 = cv2.imread("left.jpg", 0)
image2 = cv2.imread("right.jpg", 0)
# Calculate the per-element absolute difference between
# two arrays or between an array and a scalar
diff = 255 - cv2.absdiff(image1, image2)
cv2.imshow('diff', diff)
cv2.waitKey()
Upvotes: 125
Reputation: 53089
If you are willing to use Imagemagick, then you can use its compare tool. Since your images are JPG, they will show differences due to the compression of each. So I add -fuzz 15% to allow a 15% tolerance in the difference without showing that. The result will show red (by default) where the images are different. But the color can be changed.
Linux comes with Imagemagick. Versions are also available for Mac OSX and Windows.
There is also Python Wand, which uses Imagemagick.
compare -metric rmse -fuzz 25% left.jpg right.jpg diff.png
An alternate method is to use a lower fuzz value and use morphologic processing to remove the noise and fill in a little.
The uses convert and first copies the left image and whitens it. Then copies the left image again and fills it with red. Then copies the left image and does a difference operation with the right using a lower fuzz value of 10%. This will leave more noise in the image, but give better representations of the true regions. So I use morphologic smoothing to remove the noise. Finally, I use the last image as a mask to composite red over the whitened left image.
convert left.jpg \
\( -clone 0 -fill white -colorize 50% \) \
\( -clone 0 -fill red -colorize 100 \) \
\( -clone 0 right.jpg -compose difference -composite -threshold 10% -morphology smooth diamond:1 \) \
-delete 0 \
-compose over -composite \
result.png
Upvotes: 17
Reputation: 381
Let say in the image1 the point image1[x,y] = [10,10,200]. In the different matrix, the different[x,y] = [0,0,255]. After "+" computing, the new value is [10,10,455], this will not work because of the R value is over 255.
I suggest you could try
image1[mask != 255] = [0, 0, 255]
image2[mask != 255] = [0, 0, 255]
Upvotes: 5