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Domain Adaptation for Cross-Subject Emotion Recognition by Subject Clustering

机译:主题聚类跨对象情感识别的域适应

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The high inter-subject variability in emotional EEG activities has posed great challenges for practical EEG-based affective computing applications. The recently popular domain adaptation strategy seemed to be a promising technique for addressing this issue, by minimizing the discrepancy of EEG data from different subjects. The present study proposed and implemented an extended Domain Adaptation method by introducing Subject Clustering (DASC). By clustering subjects based on the similarity of their emotion-specific EEG activities, the DASC method could make a flexible use of the available source domain information towards an optimized target domain application. Using the publicly available EEG dataset of DEAP, the DASC method achieved an average accuracy of 73.9±13.5% and 68.8±11.2% for binary classifications of the high or low levels of valence and arousal. Comparison with the state-of-the-art performance as well as the ablation experiments suggest the proposed DASC method as an effective extension to the conventional domain adaptation methods for EEG-based emotion recognition.
机译:情绪EEG活动中的高度互相差异对实际脑电站的情感计算应用构成了巨大的挑战。最近的流行域适应策略似乎是一种有希望的技术,可以通过最大限度地减少来自不同主题的脑电图数据的差异来解决此问题。本研究通过引入主题聚类(DASC)提出并实施了扩展域适应方法。通过基于其情感特定的EEG活动的相似性的聚类主题,DASC方法可以灵活地利用可用的源域信息朝向优化的目标域应用程序。使用DEAP的公开可用的EEG数据集,DASC方法的平均精度为73.9±13.5%和68.8±11.2%的高级别和唤醒的二进制分类。与最先进的性能以及消融实验的比较表明,所提出的DASC方法是对基于EEG的情感识别的传统域适应方法的有效扩展。

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