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Fast Algorithms for l1 Norm/Mixed l1 and l2 Norms for Image Restoration

机译:l1范数/ l1和l2范数混合的图像恢复快速算法

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摘要

Image restoration problems are often solved by finding the minimizer of a suitable objective function. Usually this function consists of a data-fitting term and a regularization term. For the least squares solution, both the data-fitting and the regularization terms are in the l2 norm. In this paper, we consider the least absolute deviation (LAD) solution and the least mixed norm (LMN) solution. For the LAD solution, both the data-fitting and the regularization terms are in the l1 norm. For the LMN solution, the regularization term is in the l1 norm but the data-fitting term is in the l2 norm. The LAD and the LMN solutions are formulated as the solutions of a linear and a quadratic programming problems respectively, and solved by interior point methods. At each iteration of the interior point method, a structured linear system must be solved. The preconditioned conjugate gradient method with factor-ized sparse inverse preconditioners is employed to such structured inner systems. Experimental results are used to demonstrate the effectiveness of our approach. We also show the quality of the restored images using the minimization of l1 norm/mixed l1 and l2 norms is better than that using l2 norm approach.
机译:图像恢复问题通常通过找到合适目标函数的极小值来解决。通常,此函数由数据拟合项和正则项组成。对于最小二乘解,数据拟合和正则化项均在l2范数中。在本文中,我们考虑了最小绝对偏差(LAD)解和最小混合范数(LMN)解。对于LAD解决方案,数据拟合和正则化项均在l1规范中。对于LMN解决方案,正则项在l1范数中,而数据拟合项在l2范数中。 LAD和LMN解决方案分别制定为线性和二次规划问题的解决方案,并通过内点法求解。在内部点方法的每次迭代中,都必须解决结构化线性系统。带有因子化稀疏逆预处理器的预处理共轭梯度方法用于这种结构化内部系统。实验结果用于证明我们方法的有效性。我们还显示,使用l1范数/ l1和l2范数混合的最小化,还原图像的质量要好于使用l2范数方法。

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