Conformalized Generative Bayesian Imaging: An Uncertainty Quantification Framework for Computational Imaging
Journal:
arXiv
Published Date:
Apr 10, 2025
Abstract
Uncertainty quantification plays an important role in achieving trustworthy
and reliable learning-based computational imaging. Recent advances in
generative modeling and Bayesian neural networks have enabled the development
of uncertainty-aware image reconstruction methods. Current generative
model-based methods seek to quantify the inherent (aleatoric) uncertainty on
the underlying image for given measurements by learning to sample from the
posterior distribution of the underlying image. On the other hand, Bayesian
neural network-based approaches aim to quantify the model (epistemic)
uncertainty on the parameters of a deep neural network-based reconstruction
method by approximating the posterior distribution of those parameters.
Unfortunately, an ongoing need for an inversion method that can jointly
quantify complex aleatoric uncertainty and epistemic uncertainty patterns still
persists. In this paper, we present a scalable framework that can quantify both
aleatoric and epistemic uncertainties. The proposed framework accepts an
existing generative model-based posterior sampling method as an input and
introduces an epistemic uncertainty quantification capability through Bayesian
neural networks with latent variables and deep ensembling. Furthermore, by
leveraging the conformal prediction methodology, the proposed framework can be
easily calibrated to ensure rigorous uncertainty quantification. We evaluated
the proposed framework on magnetic resonance imaging, computed tomography, and
image inpainting problems and showed that the epistemic and aleatoric
uncertainty estimates produced by the proposed framework display the
characteristic features of true epistemic and aleatoric uncertainties.
Furthermore, our results demonstrated that the use of conformal prediction on
top of the proposed framework enables marginal coverage guarantees consistent
with frequentist principles.