ВЫЧИСЛИТЕЛЬНЫЕ СИСТЕМЫ И СЕТИ
ОБРАБОТКА ИНФОРМАЦИИ И АНАЛИЗ ДАННЫХ
А. В. Осипов, А. Е. Сапожников, Е. С. Плешакова, С. Т. Гатауллин "Методы машинного обучения для распознавания эмоционального состояния абонента телекоммуникационных систем"
ИНТЕЛЛЕКТУАЛЬНЫЕ СИСТЕМЫ И ТЕХНОЛОГИИ
МАТЕМАТИЧЕСКИЕ ОСНОВЫ ИНФОРМАЦИОННЫХ ТЕХНОЛОГИЙ
А. В. Осипов, А. Е. Сапожников, Е. С. Плешакова, С. Т. Гатауллин "Методы машинного обучения для распознавания эмоционального состояния абонента телекоммуникационных систем"
Аннотация. 

В статье описывается модификация капсульной нейросети, использующая оконное преобразование Фурье (WFT)-2D-CapsNet, которая позволила по графику фотоплетизмограммы (ФПГ) с точностью 82% выявить состояние паники-ступора, не позволяющее человеку принимать логически обоснованные решения. При синхронизации смарт-браслета со смартфоном метод позволяет в режиме реального времени отслеживать подобные состояния, что позволяет реагировать на звонок телефонного мошенника при разговоре с абонентом.

Ключевые слова: 

робототехника, искусственный интеллект, нейронные сети, инженерия, CapsNet, смарт-браслет, фотоплетизмограмма, эмоциональное состояние.

Стр.23-35.

DOI 10.14357/20718632240103 

EDN IRVBHY
 
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