计算机科学 ›› 2022, Vol. 49 ›› Issue (4): 30-36.doi: 10.11896/jsjkx.210900200
高越, 傅湘玲, 欧阳天雄, 陈松龄, 闫晨巍
GAO Yue, FU Xiang-ling, OUYANG Tian-xiong, CHEN Song-ling, YAN Chen-wei
摘要: 随着人机交互在计算机辅助领域的快速发展,脑电信号已成为情绪识别的主要手段。与此同时,图网络因其对拓扑结构数据的优秀表征能力,逐渐受到研究者们的广泛关注。为进一步提升图网络对多通道脑电信号的表征性能,文中结合脑电信号的稀疏性、不频繁性等多种特性,提出了一种基于时空自适应图卷积神经网络的脑电情绪识别方法(Self-Adaptive Brain Graph Convolutional Network with Spatiotemporal Attention,SABGCN-ST)。该方法通过引入时空注意力机制解决了情绪的稀疏性问题,并根据自适应学习的脑网络拓扑邻接矩阵,挖掘不同位置的电极通道之间的功能连接关系。最终模型基于图卷积操作进行图结构的特征学习,以实现对脑电信号的情绪预测。在DEAP和SEED两个脑电信号公开数据集上开展了大量实验,实验结果证明,SABGCN-ST相比基线模型在准确率上具有显著的优势,平均情绪识别准确率达到84.91%。
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