反问题的现代正则化方法

IF 16.3 1区 数学 Q1 MATHEMATICS Acta Numerica Pub Date : 2018-01-30 DOI:10.1017/S0962492918000016
M. Benning, M. Burger
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引用次数: 249

摘要

正则化方法是求解逆问题的关键工具。它们用于引入先验知识,并允许对不适定(伪)逆进行稳健近似。在过去的二十年里,人们的兴趣已经从线性正则化方法转移到非线性正则化方法,甚至是线性逆问题。本文的目的是对这种向现代非线性正则化方法的转变提供一个合理全面的概述,包括它们的分析、应用和未来研究的问题。特别是,我们将讨论由它们衍生的变分方法和技术,因为它们最近引起了人们的兴趣,并与其他领域联系在一起,如图像处理和压缩传感。我们进一步指出了与统计逆问题、多尺度分解和学习理论相关的发展。
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Modern regularization methods for inverse problems
Regularization methods are a key tool in the solution of inverse problems. They are used to introduce prior knowledge and allow a robust approximation of ill-posed (pseudo-) inverses. In the last two decades interest has shifted from linear to nonlinear regularization methods, even for linear inverse problems. The aim of this paper is to provide a reasonably comprehensive overview of this shift towards modern nonlinear regularization methods, including their analysis, applications and issues for future research. In particular we will discuss variational methods and techniques derived from them, since they have attracted much recent interest and link to other fields, such as image processing and compressed sensing. We further point to developments related to statistical inverse problems, multiscale decompositions and learning theory.
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来源期刊
Acta Numerica
Acta Numerica MATHEMATICS-
CiteScore
26.00
自引率
0.70%
发文量
7
期刊介绍: Acta Numerica stands as the preeminent mathematics journal, ranking highest in both Impact Factor and MCQ metrics. This annual journal features a collection of review articles that showcase survey papers authored by prominent researchers in numerical analysis, scientific computing, and computational mathematics. These papers deliver comprehensive overviews of recent advances, offering state-of-the-art techniques and analyses. Encompassing the entirety of numerical analysis, the articles are crafted in an accessible style, catering to researchers at all levels and serving as valuable teaching aids for advanced instruction. The broad subject areas covered include computational methods in linear algebra, optimization, ordinary and partial differential equations, approximation theory, stochastic analysis, nonlinear dynamical systems, as well as the application of computational techniques in science and engineering. Acta Numerica also delves into the mathematical theory underpinning numerical methods, making it a versatile and authoritative resource in the field of mathematics.
期刊最新文献
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