Fast Approximations of Shift-Variant Blur

被引:0
作者
Loïc Denis
Eric Thiébaut
Ferréol Soulez
Jean-Marie Becker
Rahul Mourya
机构
[1] Université de Lyon,Laboratoire Hubert Curien
[2] CNRS,Centre de Recherche Astrophysique de Lyon
[3] UMR 5516,undefined
[4] Université de Saint-Etienne,undefined
[5] Jean Monnet,undefined
[6] Université de Lyon,undefined
[7] Université de Lyon 1,undefined
[8] Observatoire de Lyon,undefined
[9] CNRS,undefined
[10] UMR 5574,undefined
[11] Ecole Normale Supérieure de Lyon,undefined
来源
International Journal of Computer Vision | 2015年 / 115卷
关键词
Blur; Deconvolution; Inverse problems; Image restoration; PSF;
D O I
暂无
中图分类号
学科分类号
摘要
Image deblurring is essential in high resolution imaging, e.g., astronomy, microscopy or computational photography. Shift-invariant blur is fully characterized by a single point-spread-function (PSF). Blurring is then modeled by a convolution, leading to efficient algorithms for blur simulation and removal that rely on fast Fourier transforms. However, in many different contexts, blur cannot be considered constant throughout the field-of-view, and thus necessitates to model variations of the PSF with the location. These models must achieve a trade-off between the accuracy that can be reached with their flexibility, and their computational efficiency. Several fast approximations of blur have been proposed in the literature. We give a unified presentation of these methods in the light of matrix decompositions of the blurring operator. We establish the connection between different computational tricks that can be found in the literature and the physical sense of corresponding approximations in terms of equivalent PSFs, physically-based approximations being preferable. We derive an improved approximation that preserves the same desirable low complexity as other fast algorithms while reaching a minimal approximation error. Comparison of theoretical properties and empirical performances of each blur approximation suggests that the proposed general model is preferable for approximation and inversion of a known shift-variant blur.
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页码:253 / 278
页数:25
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