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A nonstationary accelerating alternating direction method for frame-based Poissonian image deblurring

机译:基于框架的泊松图像去纹理的非营养性加速方向方法

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摘要

Poissonian image deblurring problem has been an attractive research subject in many areas of imaging science and engineering. In order to obtain accurate restorations, one has to run several times to manually select a good value of a regularization parameter in many models. In this paper, we first propose an optimization model by combining a new data-fitting term with a frame-based analysis regularizer and a nonnegative constraint. A discrepancy principle based nonstationary accelerating alternating direction method, called DP-NAADM, is then proposed to solve the optimization model, without estimating the regularization parameter. Numerical results show that DP-NAADM provides competitive restoration results compared to the well-known Poisson image deconvolution by augmented Lagrangian method called PIDAL. Also, DP-NAADM provides better restorations in terms of both accuracy and visual quality than the discrepancy principle based PIDAL method. (C) 2018 Elsevier B.V. All rights reserved.
机译:Poissonian Image Deblurring问题在成像科学和工程的许多领域是一个有吸引力的研究主题。 为了获得准确的修复程序,必须在许多模型中运行几次以手动选择正则化参数的良好值。 在本文中,我们首先通过将新的数据拟合术语与基于帧的分析规范器和非负约束组合来提出优化模型。 然后提出了一种被称为DP-NaAdm的基于差异的基于非持股的交替方向方法,以解决优化模型,而无需估计正则化参数。 数值结果表明,与众所周知的拉格朗日方法称为Pidal的众所周知的拉格朗日方法,DP-Naadm提供竞争恢复结果。 此外,DP-NAADM在比基于差异原理的阳散方法方面提供更好的修复方法。 (c)2018年elestvier b.v.保留所有权利。

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