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Study of Electroencephalographic Signal Regularity for Automatic Emotion Recognition

机译:自动情绪识别脑电图信号规律研究

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Nowadays, emotional intelligence plays a key role in improving human-machine interaction (HMI). The main objective of HMI is to fill the gap between human emotional states and the reaction of a computer in accordance with this feeling. However, there is a lack of mathematical emotional models to implement affective computing systems into real applications. Consequently, this paper explores the properties of the nonlinear methodology based on Quadratic Sample Entropy (QSE) for the recognition of different emotional subspaces. Precisely, 665 segments of 32-channel electroencephalographic recordings from 32 subjects elicited with different emotional stimuli have been analyzed to validate the proposed model. Results conclude that QSE is a promising feature to be taken into account. Indeed, this metric has reported a discriminant ability around 72% using a support vector machine classifier. This result is comparable with the outcomes reported by other more complex methodologies which use multi-parametric analysis.
机译:如今,情绪智力在改善人机互动(HMI)方面发挥着关键作用。 HMI的主要目标是填补人类情绪状态之间的差距以及根据这种感觉的计算机反应。然而,缺乏数学情绪模型,以将情感计算系统实施到真实应用中。因此,本文基于二次样本熵(QSE)探讨非线性方法的特性,以识别不同情绪子空间。精确地,已经分析了来自32个受试者的32个通道脑电图记录的665个段,以验证所提出的模型。结果得出结论,QSE是要考虑的有希望的功能。实际上,使用支持向量机分类器,该度量报告了判别能力约为72%。该结果与其他使用多参数分析的其他更复杂的方法报告的结果相当。

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