arXiv Analytics

Sign in

arXiv:2409.01985 [stat.ML]AbstractReferencesReviewsResources

UNSURE: self-supervised learning with Unknown Noise level and Stein's Unbiased Risk Estimate

Julián Tachella, Mike Davies, Laurent Jacques

Published 2024-09-03, updated 2025-01-22Version 3

Recently, many self-supervised learning methods for image reconstruction have been proposed that can learn from noisy data alone, bypassing the need for ground-truth references. Most existing methods cluster around two classes: i) Stein's Unbiased Risk Estimate (SURE) and similar approaches that assume full knowledge of the distribution, and ii) Noise2Self and similar cross-validation methods that require very mild knowledge about the noise distribution. The first class of methods tends to be impractical, as the noise level is often unknown in real-world applications, and the second class is often suboptimal compared to supervised learning. In this paper, we provide a theoretical framework that characterizes this expressivity-robustness trade-off and propose a new approach based on SURE, but unlike the standard SURE, does not require knowledge about the noise level. Throughout a series of experiments, we show that the proposed estimator outperforms other existing self-supervised methods on various imaging inverse problems.

Related articles: Most relevant | Search more
arXiv:2007.16104 [stat.ML] (Published 2020-07-31)
Uncovering the structure of clinical EEG signals with self-supervised learning
arXiv:2106.04619 [stat.ML] (Published 2021-06-08)
Self-Supervised Learning with Data Augmentations Provably Isolates Content from Style
arXiv:2106.08320 [stat.ML] (Published 2021-06-15)
Self-Supervised Learning with Kernel Dependence Maximization