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I want to detect how blur an image is, may be It can be called "blur extend". I find an useful paper for this:

I use OpenCV and do through all steps from this paper, but the result is not same as result from this paper?

May be my program does not work well? Or someone can give me any advise for detecting "blur extend".

Thank you.

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up vote 2 down vote accepted

You can detect a blurring image with using next algorithm:

  1. Convert the image into gray format.
  2. Calculate maximal absolut second derivative from the gray image (for every point):

    d[x,y] = max(abs(2*d[x,y] - d[x,y+1] -d[x,y-1]), abs(2*d[x,y] - d[x+1,y] -d[x-1,y]));

  3. Calculate histogram of this estimated image (maximal absolut second derivative).

  4. Find upper quantile (0,999) of this histogram.

  5. If this value less then threshold (about 25% from image dynamic range), then image is blurred.

  6. If you want estimate blur value, that perform steps 2-5 for reduced image.

You can write these algorithms on their own or use one from the implementation of Simd Library.

  • Simd::BgrToGray or Simd::BgraToGray (for step 1).
  • Simd::AbsSecondDerivativeHistogram (for steps 2-5).
  • Simd::ReduceGray2x2 (for step 6).
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Thank you. But about step 6, do you mean, If I want to estimate the blur value (so called "blur extend"), I can perform step 2-4 in reduced image and result of 4 is what I want? – pars Oct 18 '13 at 18:16
What would you do for estimating the blur / sharpness level per pixel? – Drazick Jun 6 '14 at 6:17
It is a great approach, but care because this technique is scene dependent ! – Flayn Aug 19 '15 at 15:45

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