Personalized Continual EEG Decoding: Retaining and Transferring Knowledge
Dan Li, Hye-Bin Shin, Kang Yin, Seong-Whan Lee

TL;DR
This paper introduces PCED, a framework for continual EEG decoding that reduces inter-subject variability, prevents catastrophic forgetting, and efficiently manages memory, enabling personalized brain-computer interfaces without extensive retraining.
Contribution
The paper proposes a novel continual EEG decoding method combining Euclidean Alignment and exemplar replay with reservoir sampling for effective lifelong learning.
Findings
PCED achieves balanced knowledge retention and classification accuracy.
The framework effectively reduces inter-subject variability in EEG signals.
Experiments demonstrate PCED's efficiency on the OpenBMI dataset with 54 subjects.
Abstract
The significant inter-subject variability in electroen-cephalogram (EEG) signals often results in substantial changes to neural network weights as data distributions shift. This variability frequently causes catastrophic forgetting in continual EEG decoding tasks, where previously acquired knowledge is overwritten as new subjects are introduced. While retraining the entire dataset for each new subject can mitigate forgetting, this approach imposes significant computational costs, rendering it impractical for real-world applications. Therefore, an ideal brain-computer interface (BCI) model should incrementally learn new information without requiring complete retraining, thereby reducing computational overhead. Existing EEG decoding meth-ods typically rely on large, centralized source-domain datasets for pre-training to improve model generalization. However, in practical scenarios, data…
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Taxonomy
TopicsEEG and Brain-Computer Interfaces · Neural Networks and Applications
