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A soft double regularization approach to parametric blind image deconvolution

机译:参数盲图像反卷积的软双正则化方法

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This paper proposes a blind image deconvolution scheme based on soft integration of parametric blur structures. Conventional blind image deconvolution methods encounter a difficult dilemma of either imposing stringent and inflexible preconditions on the problem formulation or experiencing poor restoration results due to lack of information. This paper attempts to address this issue by assessing the relevance of parametric blur information, and incorporating the knowledge into the parametric double regularization (PDR) scheme. The PDR method assumes that the actual blur satisfies up to a certain degree of parametric structure, as there are many well-known parametric blurs in practical applications. Further, it can be tailored flexibly to include other blur types if some prior parametric knowledge of the blur is available. A manifold soft parametric modeling technique is proposed to generate the blur manifolds, and estimate the fuzzy blur structure. The PDR scheme involves the development of the meaningful cost function, the estimation of blur support and structure, and the optimization of the cost function. Experimental results show that it is effective in restoring degraded images under different environments.
机译:本文提出了一种基于参数模糊结构软积分的盲图像反卷积方案。常规的盲图像反卷积方法遇到困难的难题,要么在问题表述上施加严格和不灵活的前提条件,要么由于缺乏信息而遇到较差的恢复结果。本文试图通过评估参数模糊信息的相关性,并将知识纳入参数双重正则化(PDR)方案来解决此问题。 PDR方法假定实际模糊满足某种程度的参数结构,因为在实际应用中存在许多众所周知的参数模糊。此外,如果可获得一些模糊的先验参数知识,则可以灵活地定制它以包括其他模糊类型。提出了一种流形软参数建模技术来生成模糊流形,并估计模糊模糊结构。 PDR方案涉及有意义的成本函数的开发,模糊支持和结构的估计以及成本函数的优化。实验结果表明,该方法可有效恢复不同环境下的退化图像。

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