Development of a ternary hybrid fNIRS-EEG brain–computer interface based on imagined speech

There is increasing interest in developing intuitive brain-computer interfaces (BCIs) to differentiate intuitive mental tasks such as imagined speech. Both electroencephalography (EEG) and function...

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