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Modern Regularization Methods for Inverse Problems

Published version
Peer-reviewed

Type

Article

Change log

Authors

Burger, Martin 

Abstract

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.

Description

Keywords

math.NA, math.NA, 00A69, 35R30, 47A52, 47J30, 49J40, 49N45, 49R05, 65F22, 65J20, 65J22, 65K10, 65K15, 65M32, 65N21, 65R32, 90C26, 94A08

Journal Title

Acta Numerica

Conference Name

Journal ISSN

0962-4929
1474-0508

Volume Title

27

Publisher

Cambridge University Press
Sponsorship
Leverhulme Trust (ECF-2016-611)
Isaac Newton Trust (1608(aj))
Engineering and Physical Sciences Research Council (EP/K032208/1)
Leverhulme Trust Early Career Fellowship ‘Learning from mistakes: a supervised feedback-loop for imaging applications’ Isaac Newton Trust Cantab Capital Institute for the Mathematics of Information ERC Grant EU FP 7 - ERC Consolidator Grant 615216 LifeInverse German Ministry for Science and Education (BMBF) project MED4D EPSRC grant EP/K032208/1