基于脑电图的小波特征情感识别

Zhengjie Zhou, Huiping Jiang, Xiaoyuan Song
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引用次数: 8

摘要

本文描述了一项旨在识别和发现脑电图信号与人类情绪之间关系的研究项目。脑电图信号被用来对三种情绪进行分类,积极、中性和消极。首先,进行文献研究,建立适合的情绪识别方法。其次,利用四阶小波对原始EEG数据进行特征提取,并将其放入不同核函数的SVM分类器中;结果表明,线性核支持向量机比其他核函数具有更高的平均测试精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
EEG-based emotion recognition using wavelet features
This paper described a research project conducted to recognize to finding the relationship between EEG signals and Human emotions. EEG signals are used to classify three kinds of emotions, positive, neuter and negative. Firstly, literature research has been performed to establish a suitable approach for emotion recognition. Secondly, we extracted features from original EEG data using 4-order wavelet and put them in SVM classifier with different kernel functions. The result shows that an SVM with linear kernel has higher average test accuracy than other kernel function.
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