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Synthesizing Speech by Decoding Intracortical Neural Activity from Dorsal Motor Cortex

Maitreyee Wairagkar, Leigh R. Hochberg, David M. Brandman, Sergey D. Stavisky

202326 citationsDOI

Abstract

Losing the ability to speak due to brain injury or neurodegenerative diseases such as ALS can be debilitating. Brain-computer interfaces could potentially provide affected individuals a fast and intuitive way to communicate by decoding speech-related neural activity into a computer-synthesized voice. Current intracortical BCIs for communication using handwriting or point-and-click typing are substantially slower than natural speech and do not capture the full expressive range of speech. Recent studies have identified speech features from ECoG and sEEG recordings; however, intelligible speech synthesis has not yet been demonstrated. Our previous work has shown speech-related patterns in intracortical recordings from dorsal (arm/hand) motor cortex that enabled discrete word/phoneme classification. This motivates exploring an intracortical approach for continuous voice synthesis. Here, we present a neural decoding framework to synthesize speech by directly translating neural activity recorded from human motor cortex using intracortical multielectrode arrays into a low-dimensional speech feature space from which voice is synthesized.

Topics & Concepts

Neural decodingComputer scienceSpeech recognitionMotor cortexDecoding methodsAuditory cortexNeurocomputational speech processingBrain–computer interfaceNeuroprostheticsSpeech productionSpeech processingNeural engineeringNeuroscienceElectroencephalographyArtificial intelligenceSpeech perceptionPsychologyPerceptionStimulationTelecommunicationsEEG and Brain-Computer InterfacesAdvanced Memory and Neural ComputingNeural dynamics and brain function