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Enabling Unsupervised Training of Deep EEG Denoisers With Intelligent Partitioning

About

Denoising wearable electroencephalogram (EEG) is inherently challenging since neural activity is not only subtle but also inseparable from spectrally overlapping noise artifacts. Classical signal processing methods, relying on fixed or heuristic rules, cannot handle the time-varying pervasive artifacts in wearable EEGs. Deep learning methods, on the other hand, show promise in decomposition-free EEG denoising using highly expressive neural networks, but the training requires artifact-free EEG, which is inherently unobtainable. To address this, we propose Intelligent Partitioning for Self-supervised Denoising (iPSD). Our method eliminates the need for clean references by learning to partition an input EEG segment into independent noisy realizations with the same underlying signal. This enables self-supervision of deep learning denoisers, even in zero-shot settings where only a single EEG segment to be denoised is available. We validate iPSD through extensive experiments, including validations on wearable EEG from in-ear sensors. The results show that iPSD achieves state-of-the-art performance, most notably under extremely low signal-to-noise ratios (down to -10 dB) and challenging artifacts (e.g., EMG), with spectral fidelity orders of magnitude higher than competitive baselines.

Qiyu Rao, Haozhe Tian, Homayoun Hamedmoghadam, Danilo Mandic• 2026

Related benchmarks

TaskDatasetResultRank
EEG DenoisingCHB-MIT EEG contaminated with WGN (test)
SNR5.78
18
EEG DenoisingCHB-MIT EEG contaminated with EMG (test)
SNR5.95
18
EEG DenoisingEEG WGN noise, 0 dB Input SNR
SNR5.78
9
EEG DenoisingEEG EMG noise, 0 dB Input SNR
SNR5.95
9
EEG DenoisingEEG EMG noise, -5 dB Input SNR
SNR3.63
9
EEG DenoisingEEG WGN noise, -5 dB Input SNR
SNR (dB)3.97
9
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