MAP Estimators for Piecewise Continuous Inversion
Matthew M. Dunlop, Andrew M. Stuart

TL;DR
This paper develops a theoretical framework for MAP estimators in inverse problems involving piecewise continuous fields, extending existing Gaussian prior models to more general priors, with applications demonstrated in groundwater flow and electrical impedance tomography.
Contribution
It extends the theory of MAP estimators to piecewise Gaussian priors with geometric parameters, broadening applicability beyond Gaussian models.
Findings
Numerical experiments show feasibility of MAP estimation for piecewise models.
Multiple local MAP estimators can exist due to geometric complexity.
MAP estimators relate to MCMC posterior samples in practical scenarios.
Abstract
We study the inverse problem of estimating a field from data comprising a finite set of nonlinear functionals of , subject to additive noise; we denote this observed data by . 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 and determining the conditional distribution on given the data . 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…
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