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Blind Deblurring Based on L0Norm from Salient Edges
作者姓名:LIU Yu  LIU Xiu-ping  WU Xiao-xu  ZHAO Guo-hui
基金项目:Partially Supported by National Natural Science Foundation of China (No.61173102).
摘    要:Motion deblurring is a basic problem in the field of image processing and analysis. This paper proposes a new method of single image blind deblurring which can be significant to kernel estimation and non-blind deconvolution. Experiments show that the details of the image destroy the structure of the kernel, especially when the blur kernel is large. So we extract the image structure with salient edges by the method based on RTV. In addition, the traditional method for motion blur kernel estimation based on sparse priors is conducive to gain a sparse blur kernel. But these priors do not ensure the continuity of blur kernel and sometimes induce noisy estimated results. Therefore we propose the kernel refinement method based on L0 to overcome the above shortcomings. In terms of non-blind deconvolution we adopt the L1/L2 regularization term. Compared with the traditional method, the method based on L1/L2 norm has better adaptability to image structure, and the constructed energy functional can better describe the sharp image. For this model, an effective algorithm is presented based on alternating minimization algorithm.

关 键 词:模糊算法  图像处理  范数  图像结构  盲解卷积  运动模糊  传统方法  最小化算法

Blind Deblurring Based on L0 Norm from Salient Edges
LIU Yu,LIU Xiu-ping,WU Xiao-xu,ZHAO Guo-hui.Blind Deblurring Based on L0 Norm from Salient Edges[J].CADDM,2013(2):1-8.
Authors:LIU Yu  LIU  Xiu-ping WU  Xiao-xu ZHAO  Guo-hui
Affiliation:School of Mathematical Sciences, Dalian University of Technology, Dalian 116023, China.
Abstract:Motion deblurring is a basic problem in the field of image processing and analysis. This paper proposes a new method of single image blind deblurring which can be significant to kernel estimation and non-blind deconvolution. Experiments show that the details of the image destroy the structure of the kernel, especially when the blur kernel is large. So we extract the image structure with salient edges by the method based on RTV. In addition, the traditional method for motion blur kernel estimation based on sparse priors is conducive to gain a sparse blur kernel. But these priors do not ensure the continuity of blur kernel and sometimes induce noisy estimated results. Therefore we propose the kernel refinement method based on L0 to overcome the above shortcomings. In terms of non-blind deconvolution we adopt the L1 /L2 regularization term. Compared with the traditional method, the method based on L1 /L2 norm has better adaptability to image structure, and the constructed energy functional can better describe the sharp image. For this model, an effective algorithm is presented based on alternating minimization algorithm.
Keywords:image deblurring  kernel estimation  blind deconvolution  L0 norm  L 1/L2 norm
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