Publication | Closed Access
Transformer-Based Estimation of Spoken Sentences Using Electrocorticography
21
Citations
16
References
2022
Year
Speech SciencesNeurolinguisticsNeuromodulation TherapiesBraincomputer InterfaceInvasive Brain–machine InterfacesSocial SciencesSpeech RecognitionTransformer-based EstimationRobust Speech RecognitionCognitive ElectrophysiologyNeurologyHealth SciencesClinical LanguageNeuroimagingEpilepsy PatientsNeural InterfaceSpeech CommunicationBrain-computer InterfaceSpeech TechnologyInvasive ElectrocorticogramSpeech AnalysisNeuroengineeringComputational NeuroscienceEeg Signal ProcessingSpeech ProcessingNeuroscienceBrain ElectrophysiologySpeech PerceptionLinguistics
Invasive brain–machine interfaces (BMIs) are a promising neurotechnological venture for achieving direct speech communication from a human brain, but it faces many challenges. In this paper, we measured the invasive electrocorticogram (ECoG) signals from seven participating epilepsy patients as they spoke a sentence consisting of multiple phrases. A Transformer encoder was incorporated into a "sequence-to-sequence" model to decode spoken sentences from the ECoG. The decoding test revealed that the use of the Transformer model achieved a minimum phrase error rate (PER) of 16.4%, and the median (±standard deviation) across seven participants was 31.3% (±10.0%). Moreover, the proposed model with the Transformer achieved significantly better decoding accuracy than a conventional long short-term memory model.
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