Plug-and-Play Posterior Sampling for Blind Inverse Problems
Journal:
arXiv
Published Date:
May 28, 2025
Abstract
We introduce Blind Plug-and-Play Diffusion Models (Blind-PnPDM) as a novel
framework for solving blind inverse problems where both the target image and
the measurement operator are unknown. Unlike conventional methods that rely on
explicit priors or separate parameter estimation, our approach performs
posterior sampling by recasting the problem into an alternating Gaussian
denoising scheme. We leverage two diffusion models as learned priors: one to
capture the distribution of the target image and another to characterize the
parameters of the measurement operator. This PnP integration of diffusion
models ensures flexibility and ease of adaptation. Our experiments on blind
image deblurring show that Blind-PnPDM outperforms state-of-the-art methods in
terms of both quantitative metrics and visual fidelity. Our results highlight
the effectiveness of treating blind inverse problems as a sequence of denoising
subproblems while harnessing the expressive power of diffusion-based priors.