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Two images

Hi, so I have to make a script (doesn't matter what programming language, but i'll use Java here for example), a script that compares two black and white images and tells which one is blurred the most.

So I have to make a function like this:

function int getImageBlurPercentage()
    ArrayList<Integer> ColorList = new ArrayList<Integer>();

    //Part 1: fill ColorList with color values (0=black, 255=white)

    go through Y axis
        go through X axis
            ColorList -> add colorValue of each pixel; [ie: 0 to 255]

    //Part 2: process (This is the part where I need help !)

    int lastColor = 0;

    for(int color : ColorList)
        // Something has to be done here
        // To compare pixel by pixel
        // and get noise result or difference result
        // and convert it to a percentage (0% - 100%)
        // This is where I need your help !

So this is where I need your help guys, I don't really know how to handle this. I think this needs some math formulas which I suck at.

I would appreciate it if someone helps or gives a hint that could lead me to the right path. Thank you.

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FFT and compare the highest frequencies? This will work if there's no noise added after blurring. – Jan Dvorak Dec 27 '12 at 5:31
FFT and compare all frequencies (weighted)? This should be reliable. – Jan Dvorak Dec 27 '12 at 5:32
@JanDvorak I don't know what that means, could you give examples please ? – Reacen Dec 27 '12 at 5:33
FFT = Fast Fourier Transform. The Fourier transform transform data from the spatial domain to the frequency domain. – Jan Dvorak Dec 27 '12 at 5:34
Then integrate the amount of gradient: foreach x,y sum += (2 * p[x][y] - p[x-1][y] - p[x][y-1]). That's as simple as can get. – Jan Dvorak Dec 27 '12 at 5:42

When you blur an image (let's say you use Gaussian blur), you actually doing some "averaging" on the pixels of the image, which means you make your edges "smoother".

So to check if one image has "smoother" edges then other, you can look on the Gradients of the image like Jan Dvorak suggested, but don't forget to normalize it by the amount of pixels in the image (otherwise larger images will get larger results).

If you want to check two entirely different images, the test will be much more complex, because different scenes naturally has different smoothness

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