Exact Evaluation of the Accuracy of Diffusion Models for Inverse Problems with Gaussian Data Distributions
Journal:
arXiv
Published Date:
Jul 9, 2025
Abstract
Used as priors for Bayesian inverse problems, diffusion models have recently
attracted considerable attention in the literature. Their flexibility and high
variance enable them to generate multiple solutions for a given task, such as
inpainting, super-resolution, and deblurring. However, several unresolved
questions remain about how well they perform. In this article, we investigate
the accuracy of these models when applied to a Gaussian data distribution for
deblurring. Within this constrained context, we are able to precisely analyze
the discrepancy between the theoretical resolution of inverse problems and
their resolution obtained using diffusion models by computing the exact
Wasserstein distance between the distribution of the diffusion model sampler
and the ideal distribution of solutions to the inverse problem. Our findings
allow for the comparison of different algorithms from the literature.