Bayesian imaging using Plug & Play priors: when Langevin meets Tweedie
R\'emi Laumont, Valentin de Bortoli, Andr\'es Almansa, Julie Delon,, Alain Durmus, Marcelo Pereyra

TL;DR
This paper develops theoretically grounded, convergent algorithms for Bayesian imaging using Plug & Play priors, integrating Langevin and Tweedie methods for improved inference and uncertainty quantification.
Contribution
It introduces two new algorithms, PnP-ULA and PnP-SGD, with proven convergence guarantees for Bayesian inference in imaging, addressing prior limitations in PnP methods.
Findings
Algorithms demonstrate effective image deblurring, inpainting, and denoising.
They enable uncertainty visualization and quantification.
Theoretical guarantees support their convergence and Bayesian model validity.
Abstract
Since the seminal work of Venkatakrishnan et al. in 2013, Plug & Play (PnP) methods have become ubiquitous in Bayesian imaging. These methods derive Minimum Mean Square Error (MMSE) or Maximum A Posteriori (MAP) estimators for inverse problems in imaging by combining an explicit likelihood function with a prior that is implicitly defined by an image denoising algorithm. The PnP algorithms proposed in the literature mainly differ in the iterative schemes they use for optimisation or for sampling. In the case of optimisation schemes, some recent works guarantee the convergence to a fixed point, albeit not necessarily a MAP estimate. In the case of sampling schemes, to the best of our knowledge, there is no known proof of convergence. There also remain important open questions regarding whether the underlying Bayesian models and estimators are well defined, well-posed, and have the basic…
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