A General Non-Lipschitz Joint Regularized Model for Multi-Channel/Modality Image Reconstruction

IF 1.2 Q2 MATHEMATICS, APPLIED CSIAM Transactions on Applied Mathematics Pub Date : 2021-06-01 DOI:10.4208/csiam-am.2020-0029
Yiming Gao & ChunlinWu
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引用次数: 4

Abstract

. Multi-channel/modality image joint reconstruction has gained much re-search interest in recent years. In this paper, we propose to use a nonconvex and non-Lipschitz joint regularizer in a general variational model for joint reconstruction un-der additive measurement noise. This framework has good ability in edge-preserving by sharing common edge features of individual images. We study the lower bound theory for the non-Lipschitz joint reconstruction model in two important cases with Gaussian and impulsive measurement noise, respectively. In addition, we extend pre-vious works to propose an inexact iterative support shrinking algorithm with prox-imal linearization for multi-channel image reconstruction (InISSAPL-MC) and prove that the iterative sequence converges globally to a critical point of the original objective function. In a special case of single channel image restoration, the convergence result improves those in the literature. For numerical implementation, we adopt primal dual method to the inner subproblem. Numerical experiments in color image restoration and two-modality undersampled magnetic resonance imaging (MRI) reconstruction show that the proposed non-Lipschitz joint reconstruction method achieves consider-able improvements in terms of edge preservation for piecewise constant images com-pared to existing methods.
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多通道/模态图像重构的一般非lipschitz联合正则化模型
。多通道/多模态图像联合重建是近年来研究的热点。本文提出在一般变分模型中使用非凸非lipschitz联合正则化器进行加性测量噪声下的联合重构。该框架通过共享单个图像的共同边缘特征,具有良好的边缘保持能力。研究了高斯噪声和脉冲噪声下非lipschitz联合重构模型的下界理论。此外,我们在此基础上提出了一种多通道图像重建的非精确迭代支持收缩算法(InISSAPL-MC),并证明了迭代序列全局收敛到原目标函数的一个临界点。在单通道图像恢复的特殊情况下,收敛结果优于文献。在数值实现上,我们对内子问题采用原始对偶方法。彩色图像恢复和双模态欠采样磁共振成像(MRI)重建的数值实验表明,与现有方法相比,所提出的非lipschitz联合重建方法在分段常数图像的边缘保持方面有较大改进。
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