English

MAP Estimators for Piecewise Continuous Inversion

Numerical Analysis 2016-09-13 v2 Probability

Abstract

We study the inverse problem of estimating a field uu from data comprising a finite set of nonlinear functionals of uu, subject to additive noise; we denote this observed data by yy. Our interest is in the reconstruction of piecewise continuous fields in which the discontinuity set is described by a finite number of geometric parameters. Natural applications include groundwater flow and electrical impedance tomography. We take a Bayesian approach, placing a prior distribution on uu and determining the conditional distribution on uu given the data yy. It is then natural to study maximum a posterior (MAP) estimators. Recently (Dashti et al 2013) it has been shown that MAP estimators can be characterised as minimisers of a generalised Onsager-Machlup functional, in the case where the prior measure is a Gaussian random field. We extend this theory to a more general class of prior distributions which allows for piecewise continuous fields. Specifically, the prior field is assumed to be piecewise Gaussian with random interfaces between the different Gaussians defined by a finite number of parameters. We also make connections with recent work on MAP estimators for linear problems and possibly non-Gaussian priors (Helin, Burger 2015) which employs the notion of Fomin derivative. In showing applicability of our theory we focus on the groundwater flow and EIT models, though the theory holds more generally. Numerical experiments are implemented for the groundwater flow model, demonstrating the feasibility of determining MAP estimators for these piecewise continuous models, but also that the geometric formulation can lead to multiple nearby (local) MAP estimators. We relate these MAP estimators to the behaviour of output from MCMC samples of the posterior, obtained using a state-of-the-art function space Metropolis-Hastings method.

Keywords

Cite

@article{arxiv.1509.03136,
  title  = {MAP Estimators for Piecewise Continuous Inversion},
  author = {Matthew M. Dunlop and Andrew M. Stuart},
  journal= {arXiv preprint arXiv:1509.03136},
  year   = {2016}
}

Comments

53 pages, 21 figures

R2 v1 2026-06-22T10:53:41.388Z