Discretization-invariant Bayesian inversion and Besov space priors
Matti Lassas. Eero Saksman, Samuli Siltanen

TL;DR
This paper develops a discretization-invariant Bayesian framework for inverse problems, using Besov space priors, ensuring consistent prior information across discretizations and convergence of the reconstruction.
Contribution
It introduces a systematic method for choosing discretization-invariant priors, including Besov space priors, and demonstrates their application in Bayesian inverse problems.
Findings
Discretization-invariant priors ensure consistent Bayesian inversion results.
Besov space priors, including wavelet-based, are shown to be discretization-invariant.
The approach guarantees convergence of the posterior mean as discretization is refined.
Abstract
Bayesian solution of an inverse problem for indirect measurement is considered, where is a function on a domain of . Here is a smoothing linear operator and is Gaussian white noise. The data is a realization of the random variable , where is a linear, finite dimensional operator related to measurement device. To allow computerized inversion, the unknown is discretized as , where is a finite dimensional projection, leading to the computational measurement model . Bayes formula gives then the posterior distribution in , and the mean is considered as the reconstruction of . We discuss a systematic way of…
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Taxonomy
TopicsSparse and Compressive Sensing Techniques · Numerical methods in inverse problems · Image and Signal Denoising Methods
