IEEE Trans Neural Syst Rehabil Eng. 2023;31:1952-1962. doi: 10.1109/TNSRE.2023.3263570. Epub 2023 Apr 11.
Emotion plays crucial roles in human life. Recently, emotion classification from electroencephalogram (EEG) signal has attracted attention by researchers due to the rapid development of brain computer interface (BCI) techniques and machine learning algorithms. However, recent studies on emotion classification show resource utilization because they use the fully-supervised learning methods. Therefore, in this study, we applied the self-supervised learning methods to improve the efficiency of resources usage. We employed a self-supervised approach to train deep multi-task convolutional neural network (CNN) for EEG-based emotion classification. First, six signal transformations were performed on unlabeled EEG data to construct the pretext task. Second, a multi-task CNN was used to perform signal transformation recognition on the transformed signals together with the original signals. After the signal transformation recognition network was trained, the convolutional layer network was frozen and the fully connected layer was reconstructed as emotion recognition network. Finally, the EEG data with affective labels were used to train the emotion recognition network to clarify the emotion. In this paper, we conduct extensive experiments from the data scaling perspective using the SEED, DEAP affective dataset. Results showed that the self-supervised learning methods can learn the internal representation of data and save computation time compared to the fully-supervised learning methods. In conclusion, our study suggests that the self-supervised machine learning model can improve the performance of emotion classification compared to the conventional fully supervised model.
情绪在人类生活中起着至关重要的作用。由于脑机接口 (BCI) 技术和机器学习算法的快速发展,最近从脑电图 (EEG) 信号中进行情绪分类的研究引起了研究人员的关注。然而,最近的情绪分类研究表明,由于它们使用全监督学习方法,因此存在资源利用率的问题。因此,在这项研究中,我们应用了自监督学习方法来提高资源使用效率。我们采用自监督方法来训练基于 EEG 的情绪分类的深度多任务卷积神经网络 (CNN)。首先,对未标记的 EEG 数据执行了六种信号变换,以构建预训练任务。其次,使用多任务 CNN 对变换后的信号以及原始信号进行信号变换识别。信号变换识别网络训练完成后,冻结卷积层网络,重建全连接层作为情绪识别网络。最后,使用带有情感标签的 EEG 数据来训练情绪识别网络以明确情绪。在本文中,我们从数据扩展的角度进行了广泛的实验,使用了 SEED 和 DEAP 情感数据集。结果表明,与全监督学习方法相比,自监督学习方法可以学习数据的内部表示并节省计算时间。总之,我们的研究表明,与传统的全监督模型相比,自监督机器学习模型可以提高情绪分类的性能。