脑电图
无线电频谱
计算机科学
光谱密度
人工智能
支持向量机
模式识别(心理学)
语音识别
时频分析
计算
分类器(UML)
算法
心理学
电信
雷达
精神科
作者
Noppadon Jatupaiboon,Setha Pan-ngum,Pasin Israsena
标识
DOI:10.1109/jcsse.2013.6567313
摘要
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.
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