Non-stationary multi-layered Gaussian priors for Bayesian inversion

Author:

Emzir MuhammadORCID,Lasanen Sari,Purisha ZenithORCID,Roininen LassiORCID,Särkkä Simo

Abstract

Abstract In this article, we study Bayesian inverse problems with multi-layered Gaussian priors. The aim of the multi-layered hierarchical prior is to provide enough complexity structure to allow for both smoothing and edge-preserving properties at the same time. We first describe the conditionally Gaussian layers in terms of a system of stochastic partial differential equations. We then build the computational inference method using a finite-dimensional Galerkin method. We show that the proposed approximation has a convergence-in-probability property to the solution of the original multi-layered model. We then carry out Bayesian inference using the preconditioned Crank–Nicolson algorithm which is modified to work with multi-layered Gaussian fields. We show via numerical experiments in signal deconvolution and computerized x-ray tomography problems that the proposed method can offer both smoothing and edge preservation at the same time.

Funder

Academy of Finland

Publisher

IOP Publishing

Subject

Applied Mathematics,Computer Science Applications,Mathematical Physics,Signal Processing,Theoretical Computer Science

Reference67 articles.

1. A case study competition among methods for analyzing large spatial data;Heaton;J. Agric. Biol. Environ. Stat.,2018

2. Nonstationary covariance functions for Gaussian process regression;Paciorek,2004

3. Does non-stationary spatial data always require non-stationary random fields?;Fuglstad;Spat. Stat.,2015

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