open access publication

Article, 2024

A Bayesian approach for consistent reconstruction of inclusions

Inverse Problems, ISSN 1361-6420, 0266-5611, Volume 40, 4, Page 045004, 10.1088/1361-6420/ad2531

Contributors

Afkham, Babak Maboudi 0000-0003-3203-8874 [1] Knudsen, Kim 0000-0002-4875-3074 [1] Rasmussen, Aksel Kaastrup 0000-0002-7206-6282 (Corresponding author) [1] Tarvainen, Tanja 0000-0002-7919-4033 [2]

Affiliations

  1. [1] Technical University of Denmark
  2. [NORA names: DTU Technical University of Denmark; University; Denmark; Europe, EU; Nordic; OECD];
  3. [2] University of Eastern Finland
  4. [NORA names: Finland; Europe, EU; Nordic; OECD]

Abstract

This paper considers a Bayesian approach for inclusion detection in nonlinear inverse problems using two known and popular push-forward prior distributions: the star-shaped and level set prior distributions. We analyze the convergence of the corresponding posterior distributions in a small measurement noise limit. The methodology is general; it works for priors arising from any Hölder continuous transformation of Gaussian random fields and is applicable to a range of inverse problems. The level set and star-shaped prior distributions are examples of push-forward priors under Hölder continuous transformations that take advantage of the structure of inclusion detection problems. We show that the corresponding posterior mean converges to the ground truth in a proper probabilistic sense. Numerical tests on a two-dimensional quantitative photoacoustic tomography problem showcase the approach. The results highlight the convergence properties of the posterior distributions and the ability of the methodology to detect inclusions with sufficiently regular boundaries.

Keywords

Bayesian approach, Gaussian random fields, ability, approach, boundaries, continuous transformation, convergence, convergence properties, detect inclusions, detection, detection problem, distribution, field, holder, inclusion, inclusion detection, inverse problem, levels, limitations, mean, measurements, methodology, noise limit, nonlinear inverse problem, numerical tests, posterior distribution, posterior mean, prior distribution, priors, probabilistic sense, problem, properties, random field, reconstruction, reconstruction of inclusions, results, sensing, star-shaped, structure, test, tomography problem, transformation

Funders

  • Engineering and Physical Sciences Research Council
  • European Research Council
  • Academy of Finland
  • European Commission
  • The Velux Foundations

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