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SPL
2016

Decomposition of Space-Variant Blur in Image Deconvolution

8 years 17 days ago
Decomposition of Space-Variant Blur in Image Deconvolution
Standard convolution as a model of radiometric degradation is in majority of cases inaccurate as the blur varies in space and we are thus required to work with a computationally demanding space-variant model. Space-variant degradation can be approximately decomposed to a set of standard convolutions. We explain in detail the properties of the space-variant degradation operator and show two possible decomposition models and two approximation approaches. Our target application is space-variant image deconvolution, on which we illustrate theoretical differences between these models. We propose a computationally efficient restoration algorithm that belongs to a category of alternating direction methods of multipliers, which consists of four update steps with closed-form solutions. Depending on the used decomposition, two variations of the algorithm exist with distinct properties. We test the effectiveness of the decomposition models under different levels of approximation on synthetic an...
Filip Sroubek, Jan Kamenický, Yue M. Lu
Added 10 Apr 2016
Updated 10 Apr 2016
Type Journal
Year 2016
Where SPL
Authors Filip Sroubek, Jan Kamenický, Yue M. Lu
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