Classification of Human Emotions using EEG-based Causal Connectivity Patterns

J. S. Ramakrishna, N. Sinha, Hariharan Ramasangu
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引用次数: 3

Abstract

Electroencephalography (EEG) signals, recorded from different channels, are used to study human brain activity in the context of emotion recognition and seizure detection. Most of the existing emotion recognition methods have focused on EEG characteristics at an electrode level and not on connectivity patterns. Causal connectivity refers to the understanding of the causal relationship between the channels. In this work, we have developed an emotion recognition model using EEG-based causal connectivity patterns. Granger causality is used to find the causal relationship of the EEG signals from different channels. The quantification of causal configurations between the channels is carried out using Transfer Entropy. The obtained Transfer Entropy values are used as features for the classification of emotions. The performance of the proposed method is validated using a publicly available SEED-IV dataset. The proposed technique achieves an average subject-specific classification accuracy of 90 % (using 18 channel signals). The proposed method achieves an improvement of 1 % over state-of-the-art techniques based on correlation using 62 channel signals and an improvement of 17 % compared to methods that use only 18 channel signals.
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基于脑电图因果连接模式的人类情绪分类
从不同通道记录的脑电图(EEG)信号用于研究人类大脑在情绪识别和癫痫发作检测方面的活动。现有的大多数情绪识别方法都集中在电极水平的脑电特征上,而不是连接模式。因果连通性是指对渠道之间因果关系的理解。在这项工作中,我们利用基于脑电图的因果联系模式开发了一种情绪识别模型。采用格兰杰因果关系来寻找不同通道的脑电信号之间的因果关系。利用传递熵对信道间的因果配置进行量化。得到的传递熵值被用作情绪分类的特征。使用公开可用的SEED-IV数据集验证了所提出方法的性能。所提出的技术实现了特定主题的平均分类准确率为90%(使用18通道信号)。所提出的方法与基于使用62通道信号的相关性的最先进技术相比实现了1%的改进,与仅使用18通道信号的方法相比实现了17%的改进。
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