Annu Int Conf IEEE Eng Med Biol Soc. 2022 Jul;2022:1895-1901. doi: 10.1109/EMBC48229.2022.9871935.
The interest in development of methods and tools for recognizing human emotions has increased continuously. Using physiological information, especially the peripheral physiological signals, to identify emotions is an important direction for this area. This paper proposes an approach for emotion recognition based on energy-related features extracted from peripheral physiological signals. Three emotions: calm, happiness and fear, were elicited in 54 volunteers using video clips while three peripheral physiological signals were recorded: Electrocardiography (ECG), Photoplethysmography (PPG) and Respiration. Given that energy-related features of physiological signals are closely related to autonomic nervous systems activities, nine energy-related features were extracted from the recorded physiological signals. To find the optimal feature subset to represent the target emotions, the correlation between features and emotion state, as well as the discrimination ability of feature for emotion recognition were both analyzed. Four optimal features were then selected for further classification. Moreover, models based on Decision Tree (DT) were built to evaluate the performance of these features for purpose of recognition of emotion states of calm, happiness, and fear. The results show that the DT models based on these four optimal features could distinguish fear from calm (AUC=0.879, Accuracy=87.8%), happiness from calm (AUC=0.915, Accuracy=91.8%), and fear from happiness (AUC=0.822, Accuracy=81.8%), with a global recognition accuracy of 70.8%. These results indicate that energy-related features of peripheral physiological signals can reliably identify emotions, especially intense emotions.
对开发识别人类情绪的方法和工具的兴趣不断增加。使用生理信息,特别是外周生理信号,来识别情绪是该领域的一个重要方向。本文提出了一种基于从外周生理信号中提取的与能量相关的特征的情绪识别方法。使用视频片段在 54 名志愿者中诱发了三种情绪:平静、快乐和恐惧,同时记录了三种外周生理信号:心电图(ECG)、光体积描记法(PPG)和呼吸。鉴于生理信号的能量相关特征与自主神经系统活动密切相关,从记录的生理信号中提取了九个能量相关特征。为了找到最佳特征子集来表示目标情绪,分析了特征与情绪状态之间的相关性,以及特征对情绪识别的区分能力。然后选择了四个最佳特征进行进一步分类。此外,还构建了基于决策树(DT)的模型,以评估这些特征用于识别平静、快乐和恐惧情绪状态的性能。结果表明,基于这四个最佳特征的 DT 模型可以区分恐惧与平静(AUC=0.879,准确度=87.8%)、快乐与平静(AUC=0.915,准确度=91.8%)以及恐惧与快乐(AUC=0.822,准确度=81.8%),总体识别准确率为 70.8%。这些结果表明,外周生理信号的能量相关特征可以可靠地识别情绪,特别是强烈的情绪。