Comparison of Human Emotion Classification on Single-Channel and Multi-Channel EEG using Gate Recurrent Unit Algorithm

Yuri Pamungkas, Ulfi Widya Astuti
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Abstract

The use of EEG to recognize human emotions has become a notable trend and breakthrough today. EEG-based emotion recognition is a form of research that uses biomedical signals to distinguish a person's psychological condition (without directly paying attention to changes in facial gestures and attitudes). However, there are many studies related to emotion recognition whose classification accuracy is still low and needs to be improved. Therefore, we propose an EEG-based recognition of positive and negative emotions in this study using the Gate Recurrent Unit (GRU) algorithm. EEG data were taken from 38 participants with four recording channels (FP1, FP2, F7, and F8). In EEG recording, a video was played to stimulate the participants' emotions (positive and negative). Then, the EEG data is processed by filtering, artefact removal, frequency band decomposition, feature extraction, and emotion classification based on signal features. Several classification scenarios (such as by varying the activation function of the classifier and the number of EEG channels) are carried out to obtain an optimal level of accuracy. Based on the emotion classification results (using the Softmax activation function) on multi-channel EEG, the accuracy values reached 98.85% (for training) and 91.45% (for testing).
基于门递归单元算法的单通道与多通道脑电情感分类比较
利用脑电图识别人类情感已成为当今一个显著的趋势和突破。基于脑电图的情绪识别是一种利用生物医学信号来区分一个人的心理状况的研究形式(不直接关注面部手势和态度的变化)。然而,目前有很多关于情绪识别的研究,其分类准确率仍然很低,有待提高。因此,我们在本研究中提出了一种基于脑电图的积极和消极情绪识别方法,使用门循环单元(GRU)算法。采用FP1、FP2、F7、F8四个记录通道采集38例受试者的脑电数据。在脑电图记录中,播放一段视频来刺激参与者的情绪(积极和消极)。然后,对脑电数据进行滤波、去伪影、频带分解、特征提取、基于信号特征的情绪分类等处理。为了获得最佳的准确率,进行了几种分类场景(例如通过改变分类器的激活函数和EEG通道的数量)。基于多通道EEG的情绪分类结果(使用Softmax激活函数),准确率达到98.85%(训练)和91.45%(测试)。
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