EEG-based Emotion Recognition using Graph Attention Network with Dual-Branch Attention Module.

Cheng Li, Sio Hang Pun, Jia Wen Li, Fei Chen
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引用次数: 0

Abstract

EEG reveals human brain activities for emotion and becomes an important aspect of affective computing. In this study, we developed a novel approach, namely DAM-GAT, which incorporated a dual-branch attention module (DAM) into a graph attention network (GAT) for EEG-based emotion recognition. This method used the GAT to capture the local features of emotional EEG signals. To enhance the important EEG features for emotion recognition, the proposed method also included a DAM that calculated weights considering both channel and frequency information. Additionally, the relationship between EEG channels was determined using the phase-locking value (PLV) connectivity of corresponding EEG signals. Based on the SEED datasets, the proposed approach provided an accuracy of up to 94.63% for emotion recognition, demonstrating its impressive performance compared with other existing methods.

基于脑电图的双分支注意模块图注意网络情感识别。
脑电图揭示了人类大脑的情绪活动,成为情感计算的一个重要方面。在这项研究中,我们开发了一种新的方法,即DAM-GAT,该方法将双分支注意模块(DAM)纳入到基于脑电图的图注意网络(GAT)中。该方法利用GAT捕捉情绪脑电信号的局部特征。为了增强重要的脑电特征以进行情绪识别,该方法还包括一个考虑信道和频率信息计算权重的DAM。此外,利用脑电信号的锁相值(PLV)连通性确定脑电信号通道之间的关系。基于SEED数据集,该方法的情绪识别准确率高达94.63%,与其他现有方法相比表现出令人印象深刻的性能。
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