English

Stochastic Generative Plug-and-Play Priors

Computer Vision and Pattern Recognition 2026-04-07 v1 Machine Learning Image and Video Processing

Abstract

Plug-and-play (PnP) methods are widely used for solving imaging inverse problems by incorporating a denoiser into optimization algorithms. Score-based diffusion models (SBDMs) have recently demonstrated strong generative performance through a denoiser trained across a wide range of noise levels. Despite their shared reliance on denoisers, it remains unclear how to systematically use SBDMs as priors within the PnP framework without relying on reverse diffusion sampling. In this paper, we establish a score-based interpretation of PnP that justifies using pretrained SBDMs directly within PnP algorithms. Building on this connection, we introduce a stochastic generative PnP (SGPnP) framework that injects noise to better leverage the expressive generative SBDM priors, thereby improving robustness in severely ill-posed inverse problems. We provide a new theory showing that this noise injection induces optimization on a Gaussian-smoothed objective and promotes escape from strict saddle points. Experiments on challenging inverse tasks, such as multi-coil MRI reconstruction and large-mask natural image inpainting, demonstrate consistent improvement over conventional PnP methods and achieve performance competitive with diffusion-based solvers.

Keywords

Cite

@article{arxiv.2604.03603,
  title  = {Stochastic Generative Plug-and-Play Priors},
  author = {Chicago Y. Park and Edward P. Chandler and Yuyang Hu and Michael T. McCann and Cristina Garcia-Cardona and Brendt Wohlberg and Ulugbek S. Kamilov},
  journal= {arXiv preprint arXiv:2604.03603},
  year   = {2026}
}
R2 v1 2026-07-01T11:53:42.047Z