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Heart Rate Variability Signal Features for Emotion Recognition by Using Principal Component Analysis and Support Vectors Machine

机译:主成分分析和支持向量机的情绪识别心率变异信号特征

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Emotion influences human health significantly. In this pilot study, a movie clips method has been designed to induce 5 kinds of emotion states. 90-sec corresponding ECG signal have been measured in the end of video stimulus. Heart rate variability (HRV) features were extracted from ECG signal by using time-domain, frequency-domain, Poincare, and statistic analysis. Then these HRV features were used to classify different emotion states by support vectors machine (SVM). Also, we used principal component analysis (PCA) to reduce the number of extracted features. Briefly, in the classification for 2 emotion states (positiveegative) and 5 kinds of emotion states, the accuracy of 71.4%, 56.9% are reached, respectively. Compared with other studies of emotion recognition using 2 or more vital signs, the accuracy in this study is lower slightly than other studies (56.9% versus 61.6%). However, using single ECG signal or HRV features is accessible for the daily emotion monitoring. Our results showed the feasibility of daily emotion monitoring by using extracted HRV features and SVM classifier.
机译:情绪会极大地影响人类健康。在这项初步研究中,设计了一种影片剪辑方法来诱发5种情绪状态。在视频刺激结束时已测量了90秒的对应ECG信号。通过使用时域,频域,庞加莱和统计分析从ECG信号中提取心率变异性(HRV)特征。然后,通过支持向量机(SVM)将这些HRV特征用于对不同的情绪状态进行分类。此外,我们使用主成分分析(PCA)减少了提取特征的数量。简而言之,在2种情绪状态(正/负)和5种情绪状态的分类中,准确率分别达到71.4%,56.9%。与其他使用2个或更多生命体征的情绪识别研究相比,该研究的准确性略低于其他研究(56.9%对61.6%)。但是,可以使用单个ECG信号或HRV功能进行日常情绪监控。我们的结果显示了通过使用提取的HRV特征和SVM分类器进行日常情绪监控的可行性。

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