用于非凸优化的外推即插即用三操作器分割方法及其在图像复原中的应用

IF 2.1 3区 数学 Q3 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE SIAM Journal on Imaging Sciences Pub Date : 2024-06-13 DOI:10.1137/23m1611166
Zhongming Wu, Chaoyan Huang, Tieyong Zeng
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引用次数: 0

摘要

SIAM 影像科学期刊》第 17 卷第 2 期第 1145-1181 页,2024 年 6 月。 摘要.本文研究了三操作器分裂方法(又称戴维斯-殷分裂(DYS)方法)的收敛特性及其在非凸框架内的应用,该方法集成了外推法和即插即用(PnP)去噪器。我们首先提出了一种外推 DYS 方法,以有效解决一类结构非凸优化问题,该问题涉及最小化三个可能非凸函数之和。我们的方法提供了一个包含外推前向后拆分法和外推法道格拉斯-拉赫福德拆分法的算法框架。为了确定所提方法的收敛性,我们根据 Kurdyka-Łojasiewicz 属性,在一些严格的参数条件下对其行为进行了严格分析。此外,我们还介绍了两种具有收敛性保证的外推 PnP-DYS 方法,其中传统的正则化步骤被基于梯度步骤的去噪器所取代。这种去噪器是利用可微神经网络设计的,可以重新表述为特定非凸函数的近端算子。我们在图像去模糊和图像超分辨率问题上进行了大量实验,数值结果显示了外推法的优势,以及基于学习的模型在实现高质量恢复图像方面的卓越性能,该模型结合了 PnP 去噪器。
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Extrapolated Plug-and-Play Three-Operator Splitting Methods for Nonconvex Optimization with Applications to Image Restoration
SIAM Journal on Imaging Sciences, Volume 17, Issue 2, Page 1145-1181, June 2024.
Abstract.This paper investigates the convergence properties and applications of the three-operator splitting method, also known as the Davis–Yin splitting (DYS) method, integrated with extrapolation and plug-and-play (PnP) denoiser within a nonconvex framework. We first propose an extrapolated DYS method to effectively solve a class of structural nonconvex optimization problems that involve minimizing the sum of three possibly nonconvex functions. Our approach provides an algorithmic framework that encompasses both extrapolated forward–backward splitting and extrapolated Douglas–Rachford splitting methods. To establish the convergence of the proposed method, we rigorously analyze its behavior based on the Kurdyka–Łojasiewicz property, subject to some tight parameter conditions. Moreover, we introduce two extrapolated PnP-DYS methods with convergence guarantee, where the traditional regularization step is replaced by a gradient step–based denoiser. This denoiser is designed using a differentiable neural network and can be reformulated as the proximal operator of a specific nonconvex functional. We conduct extensive experiments on image deblurring and image superresolution problems, where our numerical results showcase the advantage of the extrapolation strategy and the superior performance of the learning-based model that incorporates the PnP denoiser in terms of achieving high-quality recovery images.
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来源期刊
SIAM Journal on Imaging Sciences
SIAM Journal on Imaging Sciences COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE-COMPUTER SCIENCE, SOFTWARE ENGINEERING
CiteScore
3.80
自引率
4.80%
发文量
58
审稿时长
>12 weeks
期刊介绍: SIAM Journal on Imaging Sciences (SIIMS) covers all areas of imaging sciences, broadly interpreted. It includes image formation, image processing, image analysis, image interpretation and understanding, imaging-related machine learning, and inverse problems in imaging; leading to applications to diverse areas in science, medicine, engineering, and other fields. The journal’s scope is meant to be broad enough to include areas now organized under the terms image processing, image analysis, computer graphics, computer vision, visual machine learning, and visualization. Formal approaches, at the level of mathematics and/or computations, as well as state-of-the-art practical results, are expected from manuscripts published in SIIMS. SIIMS is mathematically and computationally based, and offers a unique forum to highlight the commonality of methodology, models, and algorithms among diverse application areas of imaging sciences. SIIMS provides a broad authoritative source for fundamental results in imaging sciences, with a unique combination of mathematics and applications. SIIMS covers a broad range of areas, including but not limited to image formation, image processing, image analysis, computer graphics, computer vision, visualization, image understanding, pattern analysis, machine intelligence, remote sensing, geoscience, signal processing, medical and biomedical imaging, and seismic imaging. The fundamental mathematical theories addressing imaging problems covered by SIIMS include, but are not limited to, harmonic analysis, partial differential equations, differential geometry, numerical analysis, information theory, learning, optimization, statistics, and probability. Research papers that innovate both in the fundamentals and in the applications are especially welcome. SIIMS focuses on conceptually new ideas, methods, and fundamentals as applied to all aspects of imaging sciences.
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