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首页> 外文期刊>International Journal of Integrated Engineering >Classification of Human Emotions from EEG Signals using Statistical Features and Neural Network
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Classification of Human Emotions from EEG Signals using Statistical Features and Neural Network

机译:使用统计特征和神经网络对脑电信号中的人类情绪进行分类

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摘要

A statistical based system for human emotions classification by using electroencephalogram (EEG) is proposed in this paper. The data used in this study is acquired using EEG and the emotions are elicited from six human subjects under the effect of emotion stimuli. This paper also proposed an emotion stimulation experiment using visual stimuli. From the EEG data, a total of six statistical features are computed and back-propagation neural network is applied for the classification of human emotions. In the experiment of classifying five types of emotions: Anger, Sad, Surprise, Happy, and Neutral. As result the overall classification rate as high as 95% is achieved.
机译:提出了一种基于统计的脑电图情感分类系统。本研究中使用的数据是通过脑电图获得的,并且在情感刺激的作用下从六个人类受试者中诱发了情感。本文还提出了使用视觉刺激的情绪刺激实验。从EEG数据中,总共计算出六个统计特征,并将反向传播神经网络应用于人类情绪的分类。在对五种类型的情绪进行分类的实验中:愤怒,悲伤,惊奇,快乐和中立。结果实现了高达95%的总体分类率。

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