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Inverse problems with Poisson data: statistical regularization theory, applications and algorithms

期刊

INVERSE PROBLEMS
卷 32, 期 9, 页码 -

出版社

IOP PUBLISHING LTD
DOI: 10.1088/0266-5611/32/9/093001

关键词

Poisson process; inverse problem; regularization theory; positron emission tomography; phase retrieval; splitting algorithms

资金

  1. German Research Foundation DFG [CRC 755, A07, C02, C09]

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Inverse problems with Poisson data arise in many photonic imaging modalities in medicine, engineering and astronomy. The design of regularization methods and estimators for such problems has been studied intensively over the last two decades. In this review we give an overview of statistical regularization theory for such problems, the most important applications, and the most widely used algorithms. The focus is on variational regularization methods in the form of penalized maximum likelihood estimators, which can be analyzed in a general setup. Complementing a number of recent convergence rate results we will establish consistency results. Moreover, we discuss estimators based on a wavelet-vaguelette decomposition of the (necessarily linear) forward operator. As most prominent applications we briefly introduce Positron emission tomography, inverse problems in fluorescence microscopy, and phase retrieval problems. The computation of a penalized maximum likelihood estimator involves the solution of a (typically convex) minimization problem. We also review several efficient algorithms which have been proposed for such problems over the last five years.

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