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Classification of Five Emotions from EEG and Eye Movement Signals: Discrimination Ability and Stability over Time

机译:脑电图和眼动信号五种情绪的分类:随着时间的推移辨别能力和稳定性

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This paper explores the discrimination ability and stability of electroencephalogram (EEG) and eye movement signals over time for classifying five emotions: happy, sad, fear, disgust and neutral. We develop a multimodal emotion dataset called SEED-V with 16 subjects. Two classifiers are trained based on the EEG and eye movement signals. Topographic maps are used to depict the neural patterns of EEG signal. The classification result based on EEG, eye movement, and feature level fusion (FLF) reaches the average accuracies of 70.8%, 59.87% and 75.13%, respectively. The experiment result indicates that: a) the EEG and eye movement signals have good discrimination ability for five emotion classification problem; b) the beta and gamma bands of EEG signal have better discrimination ability than the delta, theta and alpha bands; c) the stable neural patterns of different emotions do exist and are common across sessions; and d) the neural pattern of disgust emotion has high gamma response in the frontal area, while fear emotion has low activation at the top of brain in the gamma band.
机译:本文探讨了脑电图(EEG)和眼动信号随时间变化的辨别能力和稳定性,以对五种情绪进行分类:快乐,悲伤,恐惧,厌恶和中性。我们开发了一个包含16个主题的多模式情感数据集,称为SEED-V。根据EEG和眼睛运动信号训练两个分类器。地形图用于描述脑电信号的神经模式。基于脑电图,眼睛运动和特征水平融合(FLF)的分类结果分别达到70.8%,59.87%和75.13%的平均准确度。实验结果表明:a)脑电信号和眼动信号对五种情感分类问题具有良好的识别能力; b)脑电信号的β和γ带比δ,θ和α带具有更好的辨别能力; c)确实存在着不同情绪的稳定神经模式,并且在整个过程中都很常见; d)厌恶情绪的神经模式在额叶区域具有较高的伽马响应,而恐惧情绪在伽马谱带的大脑顶部具有较低的激活。

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