以MFDFA为特征提取器的基于EEG的情绪识别系统

Sananda Paul, A. Mazumder, Poulami Ghosh, D. Tibarewala, G. Vimalarani
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引用次数: 34

摘要

情绪是由神经/激素系统控制的主观和客观因素之间复杂的相互作用,导致感觉的唤起和产生认知过程,激活生理变化,如行为。利用脑电图信号可以正确地进行情绪识别。脑电图(EEG)是大脑中数以亿计的神经元活动的直接反映。不同的情绪状态在不同的大脑区域产生不同的脑电图信号。因此,脑电图为识别潜在情绪信息提供了可靠的技术。本文提出了一种从脑电图信号中识别用户情绪的新方法。以音频信号作为刺激,诱发被试的积极情绪和消极情绪。对8名健康受试者,利用脑电信号放大器的7个通道采集脑电信号。结果表明,大脑的额叶、颞叶和顶叶区域与积极情绪识别有关,而在消极情绪识别时,额叶和顶叶区域被激活。在对原始脑电信号进行适当的信号处理后,采用多重分形去趋势波动分析(MFDFA)方法对脑电信号各通道进行全频段特征提取。我们引入了一种有效的分类器——支持向量机(SVM),将与各种情绪状态相关的脑电特征空间进行分类。接下来,我们将支持向量机(SVM)与其他各种方法进行比较,如线性判别分析(LDA),二次判别分析(QDA)和K最近邻(KNN)。支持向量机在整个频带上对积极情绪的平均分类准确率为84.50%,而QDA的平均分类准确率为76.50%,LDA为75.25%,KNN为69.625%;对消极情绪的平均分类准确率为82.50%,QDA为72.375%,LDA为65.125%,KNN为70.50%。
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 system using MFDFA as feature extractor
Emotion is a complex set of interactions among subjective and objective factors governed by neural/hormonal systems resulting in the arousal of feelings and generate cognitive processes, activate physiological changes such as behavior. Emotion recognition can be correctly done by EEG signals. Electroencephalogram (EEG) is the direct reflection of the activities of hundreds and millions of neurons residing within the brain. Different emotion states create distinct EEG signals in different brain regions. Therefore EEG provides reliable technique to identify the underlying emotion information. This paper proposes a novel approach to recognize users emotions from electroencephalogram (EEG) signals. Audio signals are used as stimuli to elicit positive and negative emotions of subjects. For eight healthy subjects, EEG signals are acquired using seven channels of an EEG amplifier. The result reveal that frontal, temporal and parietal regions of the brain are relevant to positive emotion recognition and frontal and parietal regions are activated in case of negative emotion identification. After proper signal processing of the raw EEG, for the whole frequency bands the features are extracted from each channel of the EEG signals by Multifractral Detrended Fluctuation Analysis (MFDFA) method. We introduce an effective classifier named Support Vector Machine (SVM) to categorize the EEG feature space related to various emotional states into their respective classes. Next, we compare Support Vector Machine (SVM) with various other methods like Linear Discriminant Analysis (LDA), Quadratic Discriminant Analysis (QDA) and K Nearest Neighbor (KNN). The average classification accuracy of SVM for positive emotions on the whole frequency bands is 84.50%, while the accuracy of QDA is 76.50% and with LDA 75.25% and KNN is only 69.625% whereas, for negative emotions it is 82.50%, while for QDA is 72.375% and with LDA 65.125% and KNN is only 70.50%.
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