Recognizing the feelings of human beings plays a critical role in our daily communication. Neuroscience has demonstrated that different emotion states present different degrees of activation in different brain regions, EEG frequency bands and temporal stamps. In this paper, we propose a novel structure to explore the informative EEG features for emotion recognition. The proposed module, denoted by PST-Attention, consists of Positional, Spectral and Temporal Attention modules to explore more discriminative EEG features. Specifically, the Positional Attention module is to capture the activate regions stimulated by different emotions in the spatial dimension. The Spectral and Temporal Attention modules assign the weights of different frequency bands and temporal slices respectively. Our method is adaptive as well as efficient which can be fit into 3D Convolutional Neural Networks (3D-CNN) as a plug-in module. We conduct experiments on two real-world datasets. 3D-CNN combined with our module achieves promising results and demonstrate that the PST-Attention is able to capture stable patterns for emotion recognition from EEG.
翻译:神经科学显示,不同的情感状态在不同大脑区域、EEG频带和时间戳上呈现不同程度的活化。在本文中,我们提出一个新的结构,探索信息丰富的EEEG特征,以引起情感认知。拟议的模块由PST-atention所著称,由定位、光谱和时间关注模块组成,以探索更具歧视性的EEG特征。具体地说,定位关注模块旨在捕捉空间层面不同情感所刺激的激活区域。光谱和时间关注模块分别分配不同频带和时间切片的重量。我们的方法既适应又高效,可以作为插座模块纳入3D-CNN(3D-CNN),我们在两个真实世界数据集上进行实验。3D-CNN与我们的模块相结合,取得了有希望的结果,并表明PST-关注能够捕捉到来自EEG的情感识别稳定模式。