4.6 Article

Bayesian Imaging with Data-Driven Priors Encoded by Neural Networks*

Journal

SIAM JOURNAL ON IMAGING SCIENCES
Volume 15, Issue 2, Pages 892-924

Publisher

SIAM PUBLICATIONS
DOI: 10.1137/21M1406313

Keywords

mathematical imaging; inverse problems; Bayesian inference; Markov chain Monte Carlo methods; machine learning

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This paper proposes a new methodology for Bayesian inference in imaging inverse problems using data-driven priors. The methodology learns the prior distribution from training data using generative models and provides rigorous underpinning for Bayesian estimators and uncertainty quantification analyses. The paper also introduces a model misspecification test and a method to identify the dimension of the latent space from training data. Experimental results show the effectiveness of the proposed approach and compare it with other data-driven regularization methods.
This paper proposes a new methodology for performing Bayesian inference in imaging inverse prob-lems where the prior knowledge is available in the form of training data. Following the manifold hypothesis, we adopt a data-driven prior that is supported on a submanifold of the ambient space, which we can learn from the training data using a generative model, such as a variational autoencoder or generative adversarial network. We establish the existence and well-posedness of the associated posterior distribution and posterior moments under easily verifiable conditions, providing a rigorous underpinning for Bayesian estimators and uncertainty quantification analyses. Bayesian computa-tion is performed using a parallel tempered version of the pCN algorithm on the manifold, which is shown to be ergodic and robust to the nonconvex nature of these data-driven models. In addition to point estimators and uncertainty quantification analyses, we derive a model misspecification test to automatically detect situations where the data-driven prior is unreliable, and we explain how to identify the dimension of the latent space directly from the training data. The proposed approach is illustrated with a range of experiments with the MNIST dataset and is compared with some vari-ational and message passing image reconstruction approaches from the state of the art that also use data-driven regularization. A model accuracy analysis suggests that the Bayesian probabilities reported by the proposed data-driven models are also accurate under a frequentist definition of prob-ability, suggesting that the learnt prior is close to the true marginal distribution of the unknown image.

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