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WT Feature Based Emotion Recognition from Multi-channel Physiological Signals with Decision Fusion

机译:决策融合的基于WT特征的多通道生理信号情感识别

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Emotion recognition has become a hot research topic in the field of human-computer interaction (HCI), while the recognition accuracy is still not adequate for real applications. In this paper, a new emotion recognition framework based on multi-channel physiological signals including ECG, EMG and SCL using the dataset of Bio Vid Emo DB was proposed. A series of feature selection methods and fusion methods had been evaluated, through which wavelet transform features and SVM classifier were adopted. An improved accuracy of 94.81% was achieved by fusing the classifiers of ECG and EMG, which was adequate for real applications and better than relevant studies.
机译:情感识别已成为人机交互(HCI)领域的热门研究主题,而识别精度仍不足以实现实际应用。本文提出了一种新的基于Bio Vid Emo DB数据集的基于ECG,EMG和SCL等多通道生理信号的情绪识别框架。对一系列特征选择方法和融合方法进行了评估,通过小波变换特征和支持向量机分类器。通过融合ECG和EMG的分类器,可以提高94.81%的准确度,这对于实际应用是足够的,并且比相关研究更好。

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