Bi-l0-l2-Norm Regularization for Blind Motion Deblurring
Abstract
In blind motion deblurring, leading methods today tend towards highly non-convex approximations of the l0-norm, especially in the image regularization term. In this paper, we propose a simple, effective and fast approach for the estimation of the motion blur-kernel, through a bi-l0-l2-norm regularization imposed on both the intermediate sharp image and the blur-kernel. Compared with existing methods, the proposed regularization is shown to be more effective and robust, leading to a more accurate motion blur-kernel and a better final restored image. A fast numerical scheme is deployed for alternatingly computing the sharp image and the blur-kernel, by coupling the operator splitting and augmented Lagrangian methods. Experimental results on both a benchmark image dataset and real-world motion blurred images show that the proposed approach is highly competitive with state-of-the- art methods in both deblurring effectiveness and computational efficiency.
Keywords
Cite
@article{arxiv.1408.4712,
title = {Bi-l0-l2-Norm Regularization for Blind Motion Deblurring},
author = {Wen-Ze Shao and Hai-Bo Li and Michael Elad},
journal= {arXiv preprint arXiv:1408.4712},
year = {2015}
}
Comments
32 pages, 16 figures