Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free.

I have two sets of images, {H} and {L}. {H} consists of 512x512 images. {L} consists of all of the images in {H}, but scaled down to 32x32-128x128 and with compression artifacts from lossy compression.

What would be the best way of matching images in {H} to their closest match in {L} using OpenCV?

share|improve this question

3 Answers 3

up vote 1 down vote accepted

Another, although maybe much slower approach is to do Clustering by Compression (Arxviv.org, PDF) and maybe use the JPEG coefficients as the model data to be compared instead of the uncompressed image data compressed by some other method of compression. Also see articles related to the first paper from Google Scholar.

Clustering by compression basically means compressing a file X using the (statistical) model from file Y and compare to the size to just compressing X with it’s own model’s data.

Here is some background about the idea of using different statistical models for compression. JPEG compression uses Huffman coding or Arithmetic coding to compress the DC coefficient tables.

Yet another option, which may be much faster if the smaller images are not just downsampled and/or cropped versions, is to use the SIFT or SURF algorithms as suggested by Wajih.

share|improve this answer

I have 15 years of experience doing image processing, and usually when I have to precisely align two almost same (but maybe slightly different) image layers in Photoshop, I set the top layer’s blending mode to be Exclusion (ie. XOR). This makes the image all black, when all the pixels are precisely the same values.

You could do something similar with OpenCV.

Make sure you downsample the larger image to match the dimensions of the smaller image with the same interpolation as the thumbnail has been scaled down with. This can be Nearest Neighbor ie. pick every nth pixel in a grid (rounded to whole pixels or pixel boundaries) or Bicubic (one pixel is calculated form interpolated between a 4*n pixels) type. Nearest Neighbour is obviously faster...

Then make a histogram and calculate some statistics or even an FFT of the difference.

share|improve this answer
With statistics I meant take a median of the difference (black image) or from the histogram of the difference. –  peterhil Jun 2 '11 at 21:17

Well its an open issue to some extent. If you need to match the images based of the fact there will be no affine, perspective transformations, rotational transformations, then what you do is simple make a consistent scale for both sets and perform a one to one match by doing, say a correlation match. If you know a thing or two on image processing or computer vision, you could try using advance things like SURF,SIFT, or Gist etc to match the images. Really depends on what you is your need. And this would become a more difficult task by the way.

share|improve this answer
At the moment, I'm just making a histogram of HSV space and taking the pairs with the highest correlations. I wonder if there's a better way to do it because accuracy starts off well (80%) but gets worse (<30%) as the resolution decreases. There's not much colour difference in the images. –  Dmi Jun 2 '11 at 19:21
I would not agree on that method, you HSV space would give you color information, what you need, if understand you correctly, is edge information. For this you would need take correlation of the two images based on some window size and finally after a full scan, then tell whether the images match or not. –  user349026 Jun 2 '11 at 19:24
Hence, why I'm looking for a better method. I'll take a look at SURF, I think it's in one of the OpenCV samples. –  Dmi Jun 2 '11 at 19:27
yes Dmi, its in OpenCV samples, you will have plenty of examples over the internet and you should be able get a reasonable estimation of similarity. –  user349026 Jun 2 '11 at 19:28

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.