Lu Wei, Zhang Xiaobo, Xia Lingnan, Ma Hua, Tan Tien-Ping
Henan High-speed Railway Operation and Maintenance Engineering Research Center, Zhengzhou Railway Vocational and Technical College, Zhengzhou, China.
School of Computer Sciences, Universiti Sains Malaysia, Penang, Malaysia.
Front Hum Neurosci. 2024 Dec 17;18:1471634. doi: 10.3389/fnhum.2024.1471634. eCollection 2024.
Emotion recognition is a critical research topic within affective computing, with potential applications across various domains. Currently, EEG-based emotion recognition, utilizing deep learning frameworks, has been effectively applied and achieved commendable performance. However, existing deep learning-based models face challenges in capturing both the spatial activity features and spatial topology features of EEG signals simultaneously. To address this challenge, a omain-adaptation patial-feature erception-network has been proposed for cross-subject EEG emotion recognition tasks, named DSP-EmotionNet. Firstly, a patial ctivity opological eature xtractor odule has been designed to capture spatial activity features and spatial topology features of EEG signals, named SATFEM. Then, using SATFEM as the feature extractor, DSP-EmotionNet has been designed, significantly improving the accuracy of the model in cross-subject EEG emotion recognition tasks. The proposed model surpasses state-of-the-art methods in cross-subject EEG emotion recognition tasks, achieving an average recognition accuracy of 82.5% on the SEED dataset and 65.9% on the SEED-IV dataset.
情感识别是情感计算领域的一个关键研究课题,在各个领域都有潜在的应用。目前,基于脑电图(EEG)的情感识别利用深度学习框架,已得到有效应用并取得了值得称赞的性能。然而,现有的基于深度学习的模型在同时捕捉EEG信号的空间活动特征和空间拓扑特征方面面临挑战。为应对这一挑战,针对跨受试者EEG情感识别任务提出了一种域自适应空间特征感知网络,名为DSP-EmotionNet。首先,设计了一个空间活动拓扑特征提取器模块来捕捉EEG信号的空间活动特征和空间拓扑特征,名为SATFEM。然后,以SATFEM作为特征提取器,设计了DSP-EmotionNet,显著提高了模型在跨受试者EEG情感识别任务中的准确率。所提出的模型在跨受试者EEG情感识别任务中超越了现有最先进的方法,在SEED数据集上实现了82.5%的平均识别准确率,在SEED-IV数据集上实现了65.9%的平均识别准确率。