Lin Xuefen, Chen Jielin, Ma Weifeng, Tang Wei, Wang Yuchen
School of Information and Electronic Engineering, Zhejiang University of Science and Technology, Hangzhou 310023, PR China.
School of Information and Electronic Engineering, Zhejiang University of Science and Technology, Hangzhou 310023, PR China.
Comput Methods Programs Biomed. 2023 Apr;231:107380. doi: 10.1016/j.cmpb.2023.107380. Epub 2023 Feb 1.
Emotion classification tasks based on electroencephalography (EEG) are an essential part of artificial intelligence, with promising applications in healthcare areas such as autism research and emotion detection in pregnant women. However, the complex data acquisition environment provides a variable number of EEG channels, which interferes with the model to simulate the process of information transfer in the human brain. Therefore, this paper proposes an improved graph convolution model with dynamic channel selection.
The proposed model combines the advantages of 1D convolution and graph convolution to capture the intra- and inter-channel EEG features, respectively. We add functional connectivity in the graph structure that helps to simulate the relationship between brain regions further. In addition, an adjustable scale of channel selection can be performed based on the attention distribution in the graph structure.
We conducted various experiments on the DEAP-Twente, DEAP-Geneva, and SEED datasets and achieved average accuracies of 90.74%, 91%, and 90.22%, respectively, which exceeded most existing models. Meanwhile, with only 20% of the EEG channels retained, the models achieved average accuracies of 82.78%, 84%, and 83.93% on the above three datasets, respectively.
The experimental results show that the proposed model can achieve effective emotion classification in complex dataset environments. Also, the proposed channel selection method is informative for reducing the cost of affective computing.
基于脑电图(EEG)的情感分类任务是人工智能的重要组成部分,在自闭症研究和孕妇情绪检测等医疗保健领域有着广阔的应用前景。然而,复杂的数据采集环境提供了数量可变的EEG通道,这干扰了模型对人脑信息传递过程的模拟。因此,本文提出了一种具有动态通道选择的改进图卷积模型。
所提出的模型结合了一维卷积和图卷积的优点,分别捕捉通道内和通道间的EEG特征。我们在图结构中添加功能连接,有助于进一步模拟脑区之间的关系。此外,可以根据图结构中的注意力分布执行可调整的通道选择尺度。
我们在DEAP - 特温特、DEAP - 日内瓦和SEED数据集上进行了各种实验,分别取得了90.74%、91%和90.22%的平均准确率,超过了大多数现有模型。同时,在仅保留EEG通道的20%的情况下,模型在上述三个数据集上分别取得了82.78%、84%和83.93%的平均准确率。
实验结果表明,所提出的模型能够在复杂数据集环境中实现有效的情感分类。此外,所提出的通道选择方法对于降低情感计算成本具有参考价值。