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The Ethereal
Learning Affine-Equivariant Proximal Operators
April 16, 2026 ยท Grace Period ยท ๐ ICASSP 2026
Authors
Oriel Savir, Zhenghan Fang, Jeremias Sulam
arXiv ID
2604.15556
Category
cs.LG: Machine Learning
Cross-listed
cs.CV
Citations
0
Venue
ICASSP 2026
Abstract
Proximal operators are fundamental across many applications in signal processing and machine learning, including solving ill-posed inverse problems. Recent work has introduced Learned Proximal Networks (LPNs), providing parametric functions that compute exact proximals for data-driven and potentially non-convex regularizers. However, in many settings it is important to include additional structure to these regularizers--and their corresponding proximals--such as shift and scale equivariance. In this work, we show how to obtain learned functions parametrized by neural networks that provably compute exact proximal operators while being equivariant to shifts and scaling, which we dub Affine-Equivariant Learned Proximal Networks (AE-LPNs). We demonstrate our results on synthetic, constructive examples, and then on real data via denoising in out-of-distribution settings. Our equivariant learned proximals enhance robustness to noise distributions and affine shifts far beyond training distributions, improving the practical utility of learned proximal operators
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