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Poster Session 1 · Wednesday, December 3, 2025 11:00 AM → 2:00 PM
#715

Rethinking Gradient Step Denoiser: Towards Truly Pseudo-Contractive Operator

NeurIPS Project Page Slides Poster OpenReview

Abstract

Learning pseudo-contractive denoisers is a fundamental challenge in the theoretical analysis of Plug-and-Play (PnP) methods and the Regularization by Denoising (RED) framework. While spectral methods attempt to address this challenge using the power iteration method, they fail to guarantee the truly pseudo-contractive property and suffer from high computational complexity.
In this work, we rethinkgradient step (GS) denoisers and establish a theoretical connection between GS denoisers and pseudo-contractive operators. We show that GS denoisers, with the gradients of convex potential functions parameterized by input convex neural networks (ICNNs), can achieve truly pseudo-contractive properties.
Furthermore, we integrate the learned truly pseudo-contractive denoiser into the RED-PRO (REDvia fixed-point projection) model, definitely ensuring convergence in terms of both iterative sequences and objective functions.
Extensive numerical experiments confirm that the learned GS denoiser satisfies the truly pseudo-contractive property and, when integrated into RED-PRO, provides a favorable trade-off between interpretability and empirical performance on inverse problems.
Poster