Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

Towards Multi-Source Domain Generalization for Sleep Staging with Noisy Labels

About

Automatic sleep staging is a multimodal learning problem involving heterogeneous physiological signals such as EEG and EOG, which often suffer from domain shifts across institutions, devices, and populations. In practice, these data are also affected by noisy annotations, yet label-noise-robust multi-source domain generalization remains underexplored. We present the first benchmark for Noisy Labels in Multi-Source Domain-Generalized Sleep Staging (NL-DGSS) and show that existing noisy-label learning methods degrade substantially when domain shifts and label noise coexist. To address this challenge, we propose FF-TRUST, a domain-invariant multimodal sleep staging framework with Joint Time-Frequency Early Learning Regularization (JTF-ELR). By jointly exploiting temporal and spectral consistency together with confidence-diversity regularization, FF-TRUST improves robustness under noisy supervision. Experiments on five public datasets demonstrate consistent state-of-the-art performance under diverse symmetric and asymmetric noise settings. The benchmark and code will be made publicly available at https://github.com/KNWang970918/FF-TRUST.git.

Kening Wang, Di Wen, Yufan Chen, Ruiping Liu, Junwei Zheng, Jiale Wei, Kailun Yang, Rainer Stiefelhagen, Kunyu Peng• 2026

Related benchmarks

TaskDatasetResultRank
Sleep StagingSleep-EDFx (Target Domain I)
Accuracy77.3
56
Sleep StagingHMC Target Domain II
Accuracy73.5
20
Sleep StagingISRUC (Target Domain III)
Accuracy78.02
20
Sleep StagingSHHS Target Domain IV
Accuracy76.03
20
Sleep StagingP Target Domain V 2018
Accuracy74.66
20
Sleep StagingAverage (Sleep-EDFx, HMC, ISRUC, SHHS, P2018)
Accuracy73.39
13
Showing 6 of 6 rows

Other info

Follow for update