Brain-to-text: Decoding spoken sentences from phone representations in the brain.

TitleBrain-to-text: Decoding spoken sentences from phone representations in the brain.
Publication TypeJournal Article
Year of Publication2015
AuthorsHerff, C, Heger, D, de Pesters, A, Telaar, D, Brunner, P, Schalk, G, Schultz, T
JournalFront. Neurosci.
Date Published05/2015
ISSN1662-6443
Keywordsautomatic speech recognition, brain-computer interface, broadband gamma, ECoG, Electrocorticography, pattern recognition, Speech decoding, speech production
Abstract

It has long been speculated whether communication between humans and machines based on natural speech related cortical activity is possible. Over the past decade, studies have suggested that it is feasible to recognize isolated aspects of speech from neural signals, such as auditory features, phones or one of a few isolated words. However, until now it remained an unsolved challenge to decode continuously spoken speech from the neural substrate associated with speech and language processing. Here, we show for the first time that continuously spoken speech can be decoded into the expressed words from intracranial electrocorticographic (ECoG) recordings. Specifically, we implemented a system, which we call Brain-To-Text that models single phones, employs techniques from automatic speech recognition (ASR), and thereby transforms brain activity while speaking into the corresponding textual representation. Our results demonstrate that our system achieved word error rates as low as 25% and phone error rates below 50%. Additionally, our approach contributes to the current understanding of the neural basis of continuous speech production by identifying those cortical regions that hold substantial information about individual phones. In conclusion, the Brain-To-Text system described in this paper represents an important step towards human-machine communication based on imagined speech.

URLhttp://journal.frontiersin.org/article/10.3389/fneng.2015.00006/abstract
DOI10.3389/fnins.2015.00217
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