Emotion classification using minimal EEG channels and frequency bands

N. Jatupaiboon, S. Pan-Ngum, P. Israsena
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引用次数: 121

Abstract

In this research we propose to use EEG signal to classify two emotions (i.e., positive and negative) elicited by pictures. With power spectrum features, the accuracy rate of SVM classifier is about 85.41%. Considering each pair of channels and different frequency bands, it shows that frontal pairs of channels give a better result than the other area and high frequency bands give a better result than low frequency bands. Furthermore, we can reduce number of pairs of channels from 7 to 5 with almost the same accuracy and can cut low frequency bands in order to save computation time. All of these are beneficial to the development of emotion classification system using minimal EEG channels in real-time.
基于最小脑电信号通道和频带的情绪分类
在本研究中,我们提出利用脑电图信号对图片引发的两种情绪(即积极情绪和消极情绪)进行分类。结合功率谱特征,SVM分类器的准确率约为85.41%。考虑到每对信道和不同频段,表明正面信道对的效果优于其他区域,高频段的效果优于低频段。此外,我们可以在几乎相同的精度下将信道对数量从7对减少到5对,并且可以切割低频段以节省计算时间。这些都有利于基于最小脑电信号通道的实时情绪分类系统的开发。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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