A Silent Speech Decoding System from EEG and EMG with Heterogenous Electrode Configurations

Inoue, Masakazu, Sato, Motoshige, Tomeoka, Kenichi, Nah, Nathania, Hatakeyama, Eri, Arulkumaran, Kai, Horiguchi, Ilya, Sasai, Shuntaro

arXiv.org Artificial Intelligence 

However, data collection is difficult and performed using varying experimental setups, making it nontrivial to collect a large, homogeneous dataset. In this study we introduce neural networks that can handle EEG/EMG with heterogeneous electrode placements and show strong performance in silent speech decoding via multi-task training on large-scale EEG/EMG datasets. We achieve improved word classification accuracy in both healthy participants (95.3%), and a speech-impaired patient (54.5%), substantially outperforming models trained on single-subject data (70.1% and 13.2%). Moreover, our models also show gains in cross-language calibration performance. This increase in accuracy suggests the feasibility of developing practical silent speech decoding systems, particularly for speech-impaired patients.

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