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Image Inpainting and Demosaicing via Total Variation and Markov Random Field-Based Modeling

机译:通过总变化和基于马尔可夫随机场的建模进行图像修复和去马赛克

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The problem of image reconstruction from incomplete data can be formulated as a linear inverse problem and is usually approached using optimization theory tools. Total variation (TV) regularization has been widely applied in this framework, due to its effectiveness in capturing spatial information and availability of elegant, fast algorithms. In this paper we show that significant improvements can be gained by extending this approach with a Markov Random Field (MRF) model for image gradient magnitudes. We propose a novel method that builds upon the Chambolle's fast projected algorithm designed for solving TV minimization problem. In the Chambolle's algorithm, we incorporate a MRF model which selects only a subset of image gradients to be effectively included in the algorithm iterations. The proposed algorithm is especially effective when a large portion of image data is missing. We also apply the proposed method to demosacking where algorithm shows less sensitivity to the initial choice of the tuning parameter and also for its wide range of values outperformes the method without the MRF model.
机译:从不完整数据重建图像的问题可以表述为线性逆问题,通常可以使用优化理论工具来解决。总变异(TV)正则化已广泛应用于此框架中,这是因为它在捕获空间信息方面的有效性以及优雅,快速的算法的可用性。在本文中,我们表明,通过将马尔可夫随机场(MRF)模型扩展为图像梯度幅度,可以扩展此方法。我们提出一种新颖的方法,该方法建立在为解决电视最小化问题而设计的Chambolle快速投影算法的基础上。在Chambolle的算法中,我们引入了MRF模型,该模型仅选择要有效地包含在算法迭代中的图像梯度子集。当缺少大部分图像数据时,提出的算法特别有效。我们还将提出的方法应用于反人口攻击,其中算法显示出对调整参数的初始选择较不敏感,并且由于其较宽的取值范围,其性能优于没有MRF模型的方法。

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