ОРИГИНАЛЬНОЕ ИССЛЕДОВАНИЕ

Высокоскоростной коммуникационный интерфейс мозг-компьютер на основе кодированных зрительных вызванных потенциалов

Р. К. Григорян1, Д. Б. Филатов1,2, А. Я. Каплан2
Информация об авторах

1 Биологический факультет, Московский государственный университет имени М. В. Ломоносова, Москва, Россия

2 Механико-математический факультет, Московский государственный университет имени М. В. Ломоносова, Москва, Россия

Для корреспонденции: Рафаэль Каренович Григорян
ул. Ленинские горы, д. 1, стр. 12, г. Москва, 119234; moc.liamg@oib.hparrg

Информация о статье

Вклад авторов в работу: Р. К. Григорян — планирование и проведение эксперимента, обработка данных, подготовка статьи; Д. Б. Филатов — планирование эксперимента, разработка программного обеспечения (ПО), подготовка статьи; А. Я. Каплан — постановка задачи, планирование эксперимента, руководство проведением исследования, подготовка статьи.

Статья получена: 29.07.2018 Статья принята к печати: 24.03.2019 Опубликовано online: 05.04.2019
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