基于质量度量的迭代去模糊算法停止准则

F. Kerouh, A. Serir
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引用次数: 5

摘要

盲图像去模糊算法(BIDA)是用于解决病态逆问题的图像恢复算法的一个子集,在低信噪比情况下可能具有挑战性。这些迭代方法通常对反卷积过程施加一定的正则化,以约束问题并减小解空间的大小。在本文中,我们提出了一种新的停止准则,用于迭代去模糊算法,基于我们之前发表的无参考模糊图像质量度量。提出的停止准则的基本原理是通过估计提醒模糊量来控制反卷积过程。为了进行测试,考虑了两种迭代去模糊算法。Lucy Richardson[1,2]和Shock Filters方法[3,4]。本文提出的自适应方法已在实时数据库(Gblur)的模糊图像上进行了测试。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A quality measure based stopping criterion for iterative deblurring algorithms
Blind image deblurring algorithms (BIDA) constitute a subset of image restoration algorithms used to solve ill-posed inverse problems, which can be challenging in low SNR situations. Those iterative methods usually impose some regularization upon the deconvolution process in order to constrain the problem and reduce the size of solution space. In this paper, we propose to use a new stopping criterion for iterative deblurring algorithms based on our previously published no reference blur image quality measure. The rationale behind the proposed stopping criterion is to control the deconvolution process by estimating the reminding blur quantity. For test, two iterative deblurring algorithms are considered. The Lucy Richardson [1,2] and the Shock Filters methods [3,4]. The proposed adaptive approach has been tested on blurred images from LIVE database (Gblur).
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