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Image Deblurring with Optimizations Qi Shan Leo Jiaya Jia Aseem Agarwala University of Washington The Chinese University of Hong Kong Adobe Systems, Inc.

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Presentation on theme: "Image Deblurring with Optimizations Qi Shan Leo Jiaya Jia Aseem Agarwala University of Washington The Chinese University of Hong Kong Adobe Systems, Inc."— Presentation transcript:

1 Image Deblurring with Optimizations Qi Shan Leo Jiaya Jia Aseem Agarwala University of Washington The Chinese University of Hong Kong Adobe Systems, Inc.

2 2 The Problem

3 An Example

4 4 Previous Work (1) Hardware solutions: [Raskar et al. 2006] [Ben-Ezra and Nayar 2004] [Levin et al. 2008]

5 5 Previous Work (2) Multi-frame solutions: [Petschnigg et al. 2004] [Jia et al. 2004] [Rav-Acha and Peleg 2005] [Yuan et al. 2007]

6 6 Previous Work (3) Single image solutions: [Jia 2007] [Fergus et al. 2006] [Levin et al. 2007]

7 Most recent work on Single Image Deblurring Qi Shan, Jiaya Jia, and Aseem Agarwala High-Quality Motion Deblurring From a Single Image. SIGGRAPH 2008 Lu Yuan, Jian Sun, Long Quan and Heung-Yeung Shum Progressive Inter-scale and intra-scale Non-blind Image Deconvolution. SIGGRAPH 2008. Joshi, N., Szeliski, R. and Kriegman, D. PSF Estimation using Sharp Edge Prediction, CVPR 2008. A. Levin, Y. Weiss, F. Durand, W. T. Freeman Understanding and evaluating blind deconvolution algorithms. CVPR 2009 Sunghyun Cho and Seungyong Lee, Fast Motion Deblurring. SIGGRAPH ASIA 2009 And many more...

8 Some take home ideas 1. Using hierarchical approaches to estimate kernel in different scales 2. Realize the importance of strong edges 3. Bilateral filtering to suppress ringing artifacts 4. RL deconvolution is good, but we've got better chioces 5. Stronger prior does a better job 6. Deblurring by assuming spatially variant kernel is a good way to go

9 Today's topic How to apply natural image statistics, image local smoothness constraints, and kernel sparsity prior in a MAP process Short discussion on 1. the stability of a non-blind deconvolution process 2. noise resistant non-blind deconvolution and denoising

10 10 Image Global Statistics …

11 11 … Image Global Statistics

12 12 Image Global Statistics

13 13 Image Local Constraint

14 14 Image Local Constraint

15 15 Image Local Constraint

16 16 Image Local Constraint

17 17 exponentially distributed Kernel Statistics

18 18 Combining All constraints Lfn Two-step iterative optimization Optimize L Optimize f

19 19 Idea: separate convolution Optimize L Optimization Process replace with

20 20 Idea: separate convolution Optimize L Optimization Process replace with

21 21 Adding a new constraint to make Removing terms that are not relevant to Updating L An easy quadratic optimization problem with a closed form solution in the frequency domain

22 22 Updating Removing terms that are not relevant to

23 23 each only contains a single variable Ψ i It is then a set of easy single variable optimization problems

24 24 Iteration 0 (initialization)

25 25 Time: about 30 seconds for an 800x600 image Iteration 8 (converge)

26 26 A comparison RL deconvolution

27 27 A comparison Our deconvolution

28 28 Two-step iterative optimization Optimize L Optimize f Optimization with a total variation regularization

29 29 Results

30 30 Results

31 31

32 32

33 33 More results

34 34 More results

35 Today's topic How to apply natural image statistics, image local smoothness constraints, and kernel sparsity prior in a MAP process Short discussion on 1. the stability of a non-blind deconvolution process 2. noise resistant non-blind deconvolution and denoising

36 Stability Considering the simplest case: Wiener Filtering How about if And

37 Stability Thus where is the frequency domain representation of is the variance of the noise Observation: the noise in the blur image is magnified in the deconvolved image. And the Noise Magnification Factor (NMF) is solely determined by the filter

38 Some examples

39 Dense kernels are less stable for deconvolution than sparse ones

40 40 Noise resistant deconvolution and denoising With Jiaya Jia, Singbing Kang and Zenlu Qin In CVPR 2010 Blind and non-blind image deconvolution software is available online and will be updated soon! See you in San Francisco!

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