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Silent EEG-Speech Recognition Using Convolutional and Recurrent Neural Network with 85% Accuracy of 9 Words Classification

In this work, we focus on silent speech recognition in electroencephalography (EEG) data of healthy individuals to advance brain–computer interface (BCI) development to include people with neurodegeneration and movement and communication difficulties in society. Our dataset was recorded from 270 hea...

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Autores principales: Vorontsova, Darya, Menshikov, Ivan, Zubov, Aleksandr, Orlov, Kirill, Rikunov, Peter, Zvereva, Ekaterina, Flitman, Lev, Lanikin, Anton, Sokolova, Anna, Markov, Sergey, Bernadotte, Alexandra
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8541074/
https://www.ncbi.nlm.nih.gov/pubmed/34695956
http://dx.doi.org/10.3390/s21206744
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author Vorontsova, Darya
Menshikov, Ivan
Zubov, Aleksandr
Orlov, Kirill
Rikunov, Peter
Zvereva, Ekaterina
Flitman, Lev
Lanikin, Anton
Sokolova, Anna
Markov, Sergey
Bernadotte, Alexandra
author_facet Vorontsova, Darya
Menshikov, Ivan
Zubov, Aleksandr
Orlov, Kirill
Rikunov, Peter
Zvereva, Ekaterina
Flitman, Lev
Lanikin, Anton
Sokolova, Anna
Markov, Sergey
Bernadotte, Alexandra
author_sort Vorontsova, Darya
collection PubMed
description In this work, we focus on silent speech recognition in electroencephalography (EEG) data of healthy individuals to advance brain–computer interface (BCI) development to include people with neurodegeneration and movement and communication difficulties in society. Our dataset was recorded from 270 healthy subjects during silent speech of eight different Russia words (commands): ‘forward’, ‘backward’, ‘up’, ‘down’, ‘help’, ‘take’, ‘stop’, and ‘release’, and one pseudoword. We began by demonstrating that silent word distributions can be very close statistically and that there are words describing directed movements that share similar patterns of brain activity. However, after training one individual, we achieved 85% accuracy performing 9 words (including pseudoword) classification and 88% accuracy on binary classification on average. We show that a smaller dataset collected on one participant allows for building a more accurate classifier for a given subject than a larger dataset collected on a group of people. At the same time, we show that the learning outcomes on a limited sample of EEG-data are transferable to the general population. Thus, we demonstrate the possibility of using selected command-words to create an EEG-based input device for people on whom the neural network classifier has not been trained, which is particularly important for people with disabilities.
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spelling pubmed-85410742021-10-24 Silent EEG-Speech Recognition Using Convolutional and Recurrent Neural Network with 85% Accuracy of 9 Words Classification Vorontsova, Darya Menshikov, Ivan Zubov, Aleksandr Orlov, Kirill Rikunov, Peter Zvereva, Ekaterina Flitman, Lev Lanikin, Anton Sokolova, Anna Markov, Sergey Bernadotte, Alexandra Sensors (Basel) Article In this work, we focus on silent speech recognition in electroencephalography (EEG) data of healthy individuals to advance brain–computer interface (BCI) development to include people with neurodegeneration and movement and communication difficulties in society. Our dataset was recorded from 270 healthy subjects during silent speech of eight different Russia words (commands): ‘forward’, ‘backward’, ‘up’, ‘down’, ‘help’, ‘take’, ‘stop’, and ‘release’, and one pseudoword. We began by demonstrating that silent word distributions can be very close statistically and that there are words describing directed movements that share similar patterns of brain activity. However, after training one individual, we achieved 85% accuracy performing 9 words (including pseudoword) classification and 88% accuracy on binary classification on average. We show that a smaller dataset collected on one participant allows for building a more accurate classifier for a given subject than a larger dataset collected on a group of people. At the same time, we show that the learning outcomes on a limited sample of EEG-data are transferable to the general population. Thus, we demonstrate the possibility of using selected command-words to create an EEG-based input device for people on whom the neural network classifier has not been trained, which is particularly important for people with disabilities. MDPI 2021-10-11 /pmc/articles/PMC8541074/ /pubmed/34695956 http://dx.doi.org/10.3390/s21206744 Text en © 2021 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Vorontsova, Darya
Menshikov, Ivan
Zubov, Aleksandr
Orlov, Kirill
Rikunov, Peter
Zvereva, Ekaterina
Flitman, Lev
Lanikin, Anton
Sokolova, Anna
Markov, Sergey
Bernadotte, Alexandra
Silent EEG-Speech Recognition Using Convolutional and Recurrent Neural Network with 85% Accuracy of 9 Words Classification
title Silent EEG-Speech Recognition Using Convolutional and Recurrent Neural Network with 85% Accuracy of 9 Words Classification
title_full Silent EEG-Speech Recognition Using Convolutional and Recurrent Neural Network with 85% Accuracy of 9 Words Classification
title_fullStr Silent EEG-Speech Recognition Using Convolutional and Recurrent Neural Network with 85% Accuracy of 9 Words Classification
title_full_unstemmed Silent EEG-Speech Recognition Using Convolutional and Recurrent Neural Network with 85% Accuracy of 9 Words Classification
title_short Silent EEG-Speech Recognition Using Convolutional and Recurrent Neural Network with 85% Accuracy of 9 Words Classification
title_sort silent eeg-speech recognition using convolutional and recurrent neural network with 85% accuracy of 9 words classification
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8541074/
https://www.ncbi.nlm.nih.gov/pubmed/34695956
http://dx.doi.org/10.3390/s21206744
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