A modular EEG-based BCI with S4D deep learning classifier achieves 84% offline accuracy and enables real-time control for a tetraplegic user, with 73% success in post-competition validation.
The quantitative extraction and topographic mapping of the abnormal components in the clinical EEG
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Dual-system framework using Mamba-Bi-LSTM classification and SHAP verification on multi-modal epilepsy data reports 98.7% accuracy and 0.992 F1.
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Improving motor imagery decoding methods for an EEG-based mobile brain-computer interface in the context of the 2024 Cybathlon
A modular EEG-based BCI with S4D deep learning classifier achieves 84% offline accuracy and enables real-time control for a tetraplegic user, with 73% success in post-competition validation.