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I had asked this on photo stackexchange but thought it might be relevant here as well, since I want to implement this programatically in my implementation.

I am trying to implement a blur detection algorithm for my imaging pipeline. The blur that I want to detect is both -

1) Camera Shake: Pictures captured using hand which moves/shakes when shutter speed is less.

2) Lens focussing errors - (Depth of Field) issues, like focussing on a incorrect object causing some blur.

3) Motion blur: Fast moving objects in the scene, captured using a not high enough shutter speed. E.g. A moving car a night might show a trail of its headlight/tail light in the image as a blur.

How can one detect this blur and quantify it in some way to make some decision based on that computed 'blur metric'?

What is the theory behind blur detection?

I am looking of good reading material using which I can implement some algorithm for this in C/Matlab.

thank you.


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up vote 27 down vote accepted

Motion blur and camera shake are kind of the same thing when you think about the cause: relative motion of the camera and the object. You mention slow shutter speed -- it is a culprit in both cases.

Focus misses are subjective as they depend on the intent on the photographer. Without knowing what the photographer wanted to focus on, it's impossible to achieve this. And even if you do know what you wanted to focus on, it still wouldn't be trivial.

With that dose of realism aside, let me reassure you that blur detection is actually a very active research field, and there are already a few metrics that you can try out on your images. Here are some that I've used recently:

  • Edge width. Basically, perform edge detection on your image (using Canny or otherwise) and then measure the width of the edges. Blurry images will have wider edges that are more spread out. Sharper images will have thinner edges. Google for "A no-reference perceptual blur metric" by Marziliano -- it's a famous paper that describes this approach well enough for a full implementation. If you're dealing with motion blur, then the edges will be blurred (wide) in the direction of the motion.
  • Presence of fine detail. Have a look at my answer to this question (the edited part).
  • Frequency domain approaches. Taking the histogram of the DCT coefficients of the image (assuming you're working with JPEG) would give you an idea of how much fine detail the image has. This is how you grab the DCT coefficients from a JPEG file directly. If the count for the non-DC terms is low, it is likely that the image is blurry. This is the simplest way -- there are more sophisticated approaches in the frequency domain.

There are more, but I feel that that should be enough to get you started. If you require further info on either of those points, fire up Google Scholar and look around. In particular, check out the references of Marziliano's paper to get an idea about what has been tried in the past.

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thanks for the pointers. It sure has got me started! Would you mind if I ping you back If I have any more queries about implementation of the Marziliano et al, paper, after I have gone through the initial reading of that and other material? If yes, would you leave your email id for me, from my stackoverflow profile page. My email id is there encoded on my profile page. – goldenmean Mar 4 '11 at 10:23
SSIM based detail analysis might need a reference image, which I dont have. I need to do a 'no-reference' blur metric computation. – goldenmean Mar 4 '11 at 12:15
@goldenman read the SSIM-related question more carefully. It's using SSIM in a no-reference scenario (by using iteratively degraded copies of the input image as a reference). – misha Mar 5 '11 at 1:36

Just to add on the focussing errors, these may be detected by comparing the psf of the captured blurry images (wider) with reference ones (sharper). Deconvolution techniques may help correcting them but leaving artificial errors (shadows, rippling, ...). A light field camera can help refocusing to any depth planes since it captures the angular information besides the traditional spatial ones of the scene.

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