Find the difference between images
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Dear, masters in matlab & neural networks, sorry for my English. Please, advise me if it is real to develop neural network that will compare two images(original and its compressed version) and return the distortion level between them? If 'yes', what kind of network should be used? May be, someone has examples?
2 Kommentare
Image Analyst
am 27 Mär. 2012
To be clear, you mean with the compressed version once it's been decompressed.
Walter Roberson
am 27 Mär. 2012
Rotated? Translated? Cropped? Resized? Or _exact_ size and image position matches?
Antworten (5)
Geoff
am 27 Mär. 2012
Why wouldn't you just subtract one from the other and use some statistics like mean, variance, etc?
0 Kommentare
Image Analyst
am 27 Mär. 2012
PSNR http://en.wikipedia.org/wiki/PSNR is often (usually?) used for that. You might also look at Stuctural Similarity (SSIM) http://en.wikipedia.org/wiki/Structural_similarity
0 Kommentare
Greg Heath
am 4 Apr. 2012
You said that you have found a reference but have no access.
An obvious way to begin is either obtain access to the reference or obtain access to one of the authors.
To use a neural net you have to train it with typical examples of input-output vector pairs.
From what I've read so far your input is a 64-dimensional input vector obtained from columnizing an 8x8 window of a difference image and your output is a scalar measure of similarity.
The enigma here is how to calculate the MOS to use for training.
Once that is defined, you don't need the network.
Or am I missing something?
Hope this helps.
P.S. Use windows with odd numbers of pixels per edge so that the middle of the window is at a pixel location.
belka0011
am 28 Mär. 2012
9 Kommentare
Image Analyst
am 31 Mär. 2012
And what shortcomings do the current methods have that your method will overcome?
Walter Roberson
am 1 Apr. 2012
http://citeseerx.ist.psu.edu/viewdoc/download?doi=10.1.1.5.6925&rep=rep1&type=pdf
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