College of Electronic and Optical Engineering & College of Flexible Electronics, Nanjing University of Posts and Telecommunications, Nanjing, China.
College of Electronic and Optical Engineering & College of Flexible Electronics, Nanjing University of Posts and Telecommunications, Nanjing, China; National and Local Joint Engineering Laboratory of RF Integration and Micro-Assembly Technology, Nanjing, China.
Comput Biol Med. 2023 Sep;163:107126. doi: 10.1016/j.compbiomed.2023.107126. Epub 2023 Jun 2.
Electroencephalography (EEG) emotion recognition is a crucial aspect of human-computer interaction. However, conventional neural networks have limitations in extracting profound EEG emotional features. This paper introduces a novel multi-head residual graph convolutional neural network (MRGCN) model that incorporates complex brain networks and graph convolution networks. The decomposition of multi-band differential entropy (DE) features exposes the temporal intricacy of emotion-linked brain activity, and the combination of short and long-distance brain networks can explore complex topological characteristics. Moreover, the residual-based architecture not only enhances performance but also augments classification stability across subjects. The visualization of brain network connectivity offers a practical technique for investigating emotional regulation mechanisms. The MRGCN model exhibits average classification accuracies of 95.8% and 98.9% for the DEAP and SEED datasets, respectively, highlighting its excellent performance and robustness.
脑电(EEG)情绪识别是人机交互的一个重要方面。然而,传统的神经网络在提取深刻的 EEG 情绪特征方面存在局限性。本文提出了一种新颖的多头残差图卷积神经网络(MRGCN)模型,该模型结合了复杂的脑网络和图卷积网络。多波段差分熵(DE)特征的分解揭示了与情绪相关的脑活动的时间复杂性,而短程和远程脑网络的组合可以探索复杂的拓扑特征。此外,基于残差的架构不仅增强了性能,而且提高了跨受试者的分类稳定性。脑网络连接的可视化为研究情绪调节机制提供了一种实用技术。MRGCN 模型在 DEAP 和 SEED 数据集上的平均分类准确率分别为 95.8%和 98.9%,突出了其出色的性能和鲁棒性。