Emotion recognition of EEG signals based on contrastive learning graph convolutional model.

Yiling Zhang, Yuan Liao, Wei Chen, Xiruo Zhang, Liya Huang
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Abstract

Objective.Electroencephalogram (EEG) signals offer invaluable insights into the complexities of emotion generation within the brain. Yet, the variability in EEG signals across individuals presents a formidable obstacle for empirical implementations. Our research addresses these challenges innovatively, focusing on the commonalities within distinct subjects' EEG data.Approach.We introduce a novel approach named Contrastive Learning Graph Convolutional Network (CLGCN). This method captures the distinctive features and crucial channel nodes related to individuals' emotional states. Specifically, CLGCN merges the dual benefits of CL's synchronous multisubject data learning and the GCN's proficiency in deciphering brain connectivity matrices. Understanding multifaceted brain functions and their information interchange processes is realized as CLGCN generates a standardized brain network learning matrix during a dataset's learning process.Main results.Our model underwent rigorous testing on the Database for Emotion Analysis using Physiological Signals (DEAP) and SEED datasets. In the five-fold cross-validation used for dependent subject experimental setting, it achieved an accuracy of 97.13% on the DEAP dataset and surpassed 99% on the SEED and SEED_IV datasets. In the incremental learning experiments with the SEED dataset, merely 5% of the data was sufficient to fine-tune the model, resulting in an accuracy of 92.8% for the new subject. These findings validate the model's efficacy.Significance.This work combines CL with GCN, improving the accuracy of decoding emotional states from EEG signals and offering valuable insights into uncovering the underlying mechanisms of emotional processes in the brain.

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基于对比学习图卷积模型的脑电信号情感识别。
脑电图(EEG)信号为了解大脑情绪产生的复杂性提供了宝贵的信息。然而,不同个体的脑电信号存在差异,这给经验性实施带来了巨大障碍。我们的研究以创新的方式应对了这些挑战,重点关注不同受试者脑电图数据的共性。这种方法能捕捉与个体情绪状态相关的显著特征和关键通道节点。具体来说,CLGCN 融合了对比学习(Contrastive Learning)的多主体同步数据学习和图卷积网络(Graph Convolutional Network)在解读大脑连接矩阵方面的双重优势。在数据集的学习过程中,CLGCN 会生成标准化的大脑网络学习矩阵,从而实现对多方面大脑功能及其信息交换过程的理解。我们的模型大大简化了新受试者的再训练过程,只需要初始样本量的 5%进行微调,就能达到 92.8% 的惊人准确率。此外,我们的模型还在 DEAP 和 SEED 数据集上进行了广泛测试,证明了我们模型的有效性。
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