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Weight-based Channel-model Matrix Framework: a reasonable solution for EEG-based cross-dataset emotion recognition

13 September 2022
Huayu Chen
Huanhuan He
Jing Zhu
Shuting Sun
Jianxiu Li
Xuexiao Shao
Junxiang Li
Xiaowei Li
    CVBM
ArXiv (abs)PDFHTML
Abstract

Cross-dataset emotion recognition as an extremely challenging task in the field of EEG-based affective computing is influenced by many factors, which makes the universal models yield unsatisfactory results. Facing the situation that lacks EEG information decoding research, we first analyzed the impact of different EEG information(individual, session, emotion and trial) for emotion recognition by sample space visualization, sample aggregation phenomena quantification, and energy pattern analysis on five public datasets. Based on these phenomena and patterns, we provided the processing methods and interpretable work of various EEG differences. Through the analysis of emotional feature distribution patterns, we found the Individual Emotional Feature Distribution Difference(IEFDD). After analyzing the limitations of traditional modeling approach suffering from IEFDD, the Weight-based Channel-model Matrix Framework(WCMF) was proposed. To reasonably characterize emotional feature distribution patterns, four weight extraction methods were designed, and the optimal was the correction T-test(CT) weight extraction method. Finally, the performance of WCMF was validated on cross-dataset tasks in two kinds of experiments that simulated different practical scenarios, and the results showed that WCMF had more stable and better emotion recognition ability.

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