Litcius/Paper detail

Scalable Plug-and-Play ADMM With Convergence Guarantees

Yu Sun, Zihui Wu, Xiaojian Xu, Brendt Wohlberg, Ulugbek S. Kamilov

2021IEEE Transactions on Computational Imaging90 citationsDOIOpen Access PDF

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 problems involving a large number measurements. 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.

Topics & Concepts

ScalabilityComputer scienceConvergence (economics)Prior probabilityFidelitySet (abstract data type)Inverse problemAlgorithmPlug and playMathematical optimizationTheoretical computer scienceArtificial intelligenceMathematicsBayesian probabilityTelecommunicationsEconomicsMathematical analysisEconomic growthProgramming languageOperating systemDatabaseSparse and Compressive Sensing TechniquesPhotoacoustic and Ultrasonic ImagingMedical Imaging Techniques and Applications