一种基于混合先验的通用稀疏图像反卷积算法

S. Xiao
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引用次数: 0

摘要

与传统的稀疏表示方法相比,过完全稀疏表示更适合于图像反卷积。然而,使用过完全稀疏表示的图像反卷积算法很少。此外,在现有的算法中,通常使用特定的稀疏图像反卷积算法,对应于某种稀疏表示方法,通常不适合其他方法。因此,在本文中,我们开发了一种通用的稀疏图像反卷积算法,该算法可以根据不同的应用将各种稀疏表示方法结合到图像反卷积中。我们提出了贝叶斯框架的算法,其中原始图像首先使用混合模型建模。然后用伽玛分布描述模型参数的统计特征。基于原始图像和模型参数的先验分布,采用证据分析法估计最优原始图像。实验结果表明,与现有算法相比,该算法具有较高的效率和竞争力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A hybrid prior based general sparse image deconvolution algorithm
Compared with traditional sparse representation methods, overcomplete sparse representation is more suitable for image deconvolution. However, there have been few image deconvolution algorithms using overcomplete sparse representation. Further, among existing algorithms, a specific sparse image deconvolution algorithm corresponding to a certain sparse representation method is commonly used, which usually does not suit other methods. Therefore, in this paper, we develop a general sparse image deconvolution algorithm that can incorporate various sparse representation methods into image deconvolution depending on the applications. We propose the Bayesian framework for the presented algorithm, in which the original image is firstly modeled using a hybrid model. The statistical characteristics of the model parameters are then described using Gamma distribution. Based on the prior distributions of the original image and model parameters, we use evidence analysis method to estimate the optimal original image. The experimental results demonstrate the efficiency and competitive performance of the proposed algorithm compared with state-of-the-art algorithms.
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