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Enhancing Bayesian Estimators for Removing Camera Shake
Authors:C Wang  Y Yue  F Dong  Y Tao  X Ma  G Clapworthy  X Ye
Affiliation:1. The Department of Computer Science and Technology, University of Bedfordshire, , Luton, UK;2. The State Key Lab of CAD and CG, Zhejiang University, , Zhejiang, China;3. The School of Computer Science, University of Lincoln, , Lincoln, UK
Abstract:The aim of removing camera shake is to estimate a sharp version x from a shaken image y when the blur kernel k is unknown. Recent research on this topic evolved through two paradigms called urn:x-wiley:01677055:cgf12074:equation:cgf12074-math-0001 and urn:x-wiley:01677055:cgf12074:equation:cgf12074-math-0002. urn:x-wiley:01677055:cgf12074:equation:cgf12074-math-0003 only solves for k by marginalizing the image prior, while urn:x-wiley:01677055:cgf12074:equation:cgf12074-math-0004 recovers both x and k by selecting the mode of the posterior distribution. This paper first systematically analyses the latent limitations of these two estimators through Bayesian analysis. We explain the reason why it is so difficult for image statistics to solve the previously reported urn:x-wiley:01677055:cgf12074:equation:cgf12074-math-0005 failure. Then we show that the leading urn:x-wiley:01677055:cgf12074:equation:cgf12074-math-0006 methods, which depend on efficient prediction of large step edges, are not robust to natural images due to the diversity of edges. urn:x-wiley:01677055:cgf12074:equation:cgf12074-math-0007, although much more robust to diverse edges, is constrained by two factors: the prior variation over different images, and the ratio between image size and kernel size. To overcome these limitations, we introduce an inter‐scale prior prediction scheme and a principled mechanism for integrating the sharpening filter into urn:x-wiley:01677055:cgf12074:equation:cgf12074-math-0008. Both qualitative results and extensive quantitative comparisons demonstrate that our algorithm outperforms state‐of‐the‐art methods.
Keywords:blind deconvolution  Bayesian estimator  image deblurring  I  3  7 [Computer Graphics]: Image Processing and Computer Vision  I  4  3 [Enhancement]: Sharpening and Deblurring
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