English

Scalable Plug-and-Play ADMM with Convergence Guarantees

Machine Learning 2021-01-25 v2 Optimization and Control Machine Learning

Abstract

Plug-and-play priors (PnP) is a broadly applicable methodology for solving inverse problems by exploiting statistical priors specified as denoisers. Recent work has reported the state-of-the-art performance of PnP algorithms using pre-trained deep neural nets as denoisers in a number of imaging applications. However, current PnP algorithms are impractical in large-scale settings due to their heavy computational and memory requirements. This work addresses this issue by proposing an incremental variant of the widely used PnP-ADMM algorithm, making it scalable to large-scale datasets. We theoretically analyze the convergence of the algorithm under a set of explicit assumptions, extending recent theoretical results in the area. Additionally, we show the effectiveness of our algorithm with nonsmooth data-fidelity terms and deep neural net priors, its fast convergence compared to existing PnP algorithms, and its scalability in terms of speed and memory.

Keywords

Cite

@article{arxiv.2006.03224,
  title  = {Scalable Plug-and-Play ADMM with Convergence Guarantees},
  author = {Yu Sun and Zihui Wu and Xiaojian Xu and Brendt Wohlberg and Ulugbek S. Kamilov},
  journal= {arXiv preprint arXiv:2006.03224},
  year   = {2021}
}

Comments

First three authors contribute equally and are listed in alphabetical order

R2 v1 2026-06-23T16:04:34.132Z