English

Efficient edge-preserving methods for dynamic inverse problems

Numerical Analysis 2021-07-14 v1 Numerical Analysis

Abstract

We consider efficient methods for computing solutions to dynamic inverse problems, where both the quantities of interest and the forward operator (measurement process) may change at different time instances but we want to solve for all the images simultaneously. We are interested in large-scale ill-posed problems that are made more challenging by their dynamic nature and, possibly, by the limited amount of available data per measurement step. To remedy these difficulties, we apply regularization methods that enforce simultaneous regularization in space and time (such as edge enhancement at each time instant and proximity at consecutive time instants) and achieve this with low computational cost and enhanced accuracy. More precisely, we develop iterative methods based on a majorization-minimization (MM) strategy with quadratic tangent majorant, which allows the resulting least squares problem to be solved with a generalized Krylov subspace (GKS) method; the regularization parameter can be defined automatically and efficiently at each iteration. Numerical examples from a wide range of applications, such as limited-angle computerized tomography (CT), space-time image deblurring, and photoacoustic tomography (PAT), illustrate the effectiveness of the described approaches.

Keywords

Cite

@article{arxiv.2107.05727,
  title  = {Efficient edge-preserving methods for dynamic inverse problems},
  author = {Mirjeta Pasha and Arvind K. Saibaba and Silvia Gazzola and Malena I. Espanol and Eric de Sturler},
  journal= {arXiv preprint arXiv:2107.05727},
  year   = {2021}
}

Comments

30 pages, 10 figure, 3 tables