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Two soft-thresholding based iterative algorithms for image deblurring

机译:两种基于软阈值的图像去模糊迭代算法

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摘要

Iterative regularization algorithms, such as the conjugate gradient algorithm for least squares problems (CGLS) and the modified residual norm steepest descent (MRNSD) algorithm, are popular tools for solving large-scale linear systems arising from image deblurring problems. These algorithms, however, are hindered by a semi-convergence behavior, in that the quality of the computed solution first increases and then decreases. In this paper, in order to overcome the semi-convergence behavior, we propose two iterative algorithms based on soft-thresholding for image deblurring problems. One of them combines CGLS with a denoising technique like soft-thresholding at each iteration and another combines MRNSD with soft-thresholding in a similar way. We prove the convergence of MRNSD and soft-thresholding based algorithm. Numerical results show that the proposed algorithms overcome the semi-convergence behavior and the restoration results are slightly better than those of CGLS and MRNSD with their optimal stopping iterations.
机译:迭代正则化算法,例如用于最小二乘问题的共轭梯度算法(CGLS)和改进的残差范数最速下降(MRNSD)算法,是解决由图像去模糊问题引起的大规模线性系统的常用工具。但是,这些算法受到半收敛行为的阻碍,因为计算出的解的质量先增加然后降低。为了克服半收敛性,本文提出了两种基于软阈值的图像去模糊问题迭代算法。其中一个将CGLS与降噪技术(如每次迭代的软阈值)结合在一起,另一个将MRNSD与软阈值的结合方式类似。我们证明了MRNSD和基于软阈值的算法的收敛性。数值结果表明,所提出的算法克服了半收敛性,其最优停止迭代效果比CGLS和MRNSD的恢复效果略好。

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