Author:
Bao Guangcheng,Yang Kai,Tong Li,Shu Jun,Zhang Rongkai,Wang Linyuan,Yan Bin,Zeng Ying
Abstract
Electroencephalography (EEG)-based emotion computing has become one of the research hotspots of human-computer interaction (HCI). However, it is difficult to effectively learn the interactions between brain regions in emotional states by using traditional convolutional neural networks because there is information transmission between neurons, which constitutes the brain network structure. In this paper, we proposed a novel model combining graph convolutional network and convolutional neural network, namely MDGCN-SRCNN, aiming to fully extract features of channel connectivity in different receptive fields and deep layer abstract features to distinguish different emotions. Particularly, we add style-based recalibration module to CNN to extract deep layer features, which can better select features that are highly related to emotion. We conducted two individual experiments on SEED data set and SEED-IV data set, respectively, and the experiments proved the effectiveness of MDGCN-SRCNN model. The recognition accuracy on SEED and SEED-IV is 95.08 and 85.52%, respectively. Our model has better performance than other state-of-art methods. In addition, by visualizing the distribution of different layers features, we prove that the combination of shallow layer and deep layer features can effectively improve the recognition performance. Finally, we verified the important brain regions and the connection relationships between channels for emotion generation by analyzing the connection weights between channels after model learning.
Subject
Artificial Intelligence,Biomedical Engineering
Reference46 articles.
1. Human motions and emotions recognition inspired by LMA qualities;Ajili;Vis. Comput.,2019
2. Emotion estimation from EEG signals during listening to Quran using PSD features;Alsolamy;7th International Conference on Computer Science and Information Technology (CSIT),2016
3. Two-level domain adaptation neural network for EEG-based emotion recognition;Bao;Front. Hum. Neurosci.,2021
4. Appraisal theories: how cognition shapes affect into emotion;Clore,2008
5. Convolutional neural networks on graphs with fast localized spectral filtering;Defferrard,2016
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