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Exploiting Multiple EEG Data Domains with Adversarial Learning

Signal Processing 2022-04-19 v1 Cryptography and Security Machine Learning

Abstract

Electroencephalography (EEG) is shown to be a valuable data source for evaluating subjects' mental states. However, the interpretation of multi-modal EEG signals is challenging, as they suffer from poor signal-to-noise-ratio, are highly subject-dependent, and are bound to the equipment and experimental setup used, (i.e. domain). This leads to machine learning models often suffer from poor generalization ability, where they perform significantly worse on real-world data than on the exploited training data. Recent research heavily focuses on cross-subject and cross-session transfer learning frameworks to reduce domain calibration efforts for EEG signals. We argue that multi-source learning via learning domain-invariant representations from multiple data-sources is a viable alternative, as the available data from different EEG data-source domains (e.g., subjects, sessions, experimental setups) grow massively. We propose an adversarial inference approach to learn data-source invariant representations in this context, enabling multi-source learning for EEG-based brain-computer interfaces. We unify EEG recordings from different source domains (i.e., emotion recognition datasets SEED, SEED-IV, DEAP, DREAMER), and demonstrate the feasibility of our invariant representation learning approach in suppressing data-source-relevant information leakage by 35% while still achieving stable EEG-based emotion classification performance.

Keywords

Cite

@article{arxiv.2204.07777,
  title  = {Exploiting Multiple EEG Data Domains with Adversarial Learning},
  author = {David Bethge and Philipp Hallgarten and Ozan Özdenizci and Ralf Mikut and Albrecht Schmidt and Tobias Grosse-Puppendahl},
  journal= {arXiv preprint arXiv:2204.07777},
  year   = {2022}
}

Comments

5 pages, 3 figures, IEEE EMBC 2022 full paper

R2 v1 2026-06-24T10:49:50.868Z