Murugappan Murugappan, Murugappan Subbulakshmi, Zheng Bong Siao
School of Mechatronics Engineering, Universiti Malaysia Perlis (UniMAP).
J Phys Ther Sci. 2013 Jul;25(7):753-9. doi: 10.1589/jpts.25.753. Epub 2013 Aug 20.
[Purpose] Intelligent emotion assessment systems have been highly successful in a variety of applications, such as e-learning, psychology, and psycho-physiology. This study aimed to assess five different human emotions (happiness, disgust, fear, sadness, and neutral) using heart rate variability (HRV) signals derived from an electrocardiogram (ECG). [Subjects] Twenty healthy university students (10 males and 10 females) with a mean age of 23 years participated in this experiment. [Methods] All five emotions were induced by audio-visual stimuli (video clips). ECG signals were acquired using 3 electrodes and were preprocessed using a Butterworth 3rd order filter to remove noise and baseline wander. The Pan-Tompkins algorithm was used to derive the HRV signals from ECG. Discrete wavelet transform (DWT) was used to extract statistical features from the HRV signals using four wavelet functions: Daubechies6 (db6), Daubechies7 (db7), Symmlet8 (sym8), and Coiflet5 (coif5). The k-nearest neighbor (KNN) and linear discriminant analysis (LDA) were used to map the statistical features into corresponding emotions. [Results] KNN provided the maximum average emotion classification rate compared to LDA for five emotions (sadness - 50.28%; happiness - 79.03%; fear - 77.78%; disgust - 88.69%; and neutral - 78.34%). [Conclusion] The results of this study indicate that HRV may be a reliable indicator of changes in the emotional state of subjects and provides an approach to the development of a real-time emotion assessment system with a higher reliability than other systems.
[目的] 智能情感评估系统在诸如电子学习、心理学和心理生理学等各种应用中取得了巨大成功。本研究旨在利用从心电图(ECG)得出的心率变异性(HRV)信号评估五种不同的人类情感(快乐、厌恶、恐惧、悲伤和中性)。[对象] 20名健康大学生(10名男性和10名女性)参与了本实验,平均年龄为23岁。[方法] 所有五种情感均由视听刺激(视频片段)诱发。使用3个电极采集ECG信号,并使用巴特沃斯三阶滤波器进行预处理以去除噪声和基线漂移。采用潘 - 汤普金斯算法从ECG中得出HRV信号。使用离散小波变换(DWT),利用四个小波函数:Daubechies6(db6)、Daubechies7(db7)、Symmlet8(sym8)和Coiflet5(coif5)从HRV信号中提取统计特征。使用k近邻(KNN)和线性判别分析(LDA)将统计特征映射到相应的情感中。[结果] 与LDA相比,KNN对五种情感(悲伤 - 50.28%;快乐 - 79.03%;恐惧 - 77.78%;厌恶 - 88.69%;中性 - 78.34%)提供了最高的平均情感分类率。[结论] 本研究结果表明,HRV可能是受试者情绪状态变化的可靠指标,并为开发比其他系统具有更高可靠性的实时情感评估系统提供了一种方法。