RECOGNITION OF SILENTLY SPOKEN WORD FROM EEG SIGNALS USING DENSE ATTENTION NETWORK (DAN).
Sahil Datta, Akuha Aondoakaa, Jorunn Jo Holmberg, Elena Antonova
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In this paper, we propose a method for recognizing silently spoken words from electroencephalogram (EEG) signals using a Dense Attention Network (DAN). The proposed network learns features from the EEG data by applying the self-attention mechanism on temporal, spectral, and spatial (electrodes) dimensions. We examined the effectiveness of the proposed network in extracting spatio-spectro-temporal information from EEG signals and provide a network for recognition of silently spoken words. The DAN achieved a recognition rate of 80.7% in leave-trials-out (LTO) and 75.1% in leave-subject-out (LSO) cross validation methods. In a direct comparison with other methods, our proposed network outperformed other existing techniques in recognition of silently spoken words.