Comparing features from ECG pattern and HRV analysis for emotion recognition system

H. Ferdinando, T. Seppänen, E. Alasaarela
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引用次数: 37

Abstract

We propose new features for emotion recognition from short ECG signals. The features represent the statistical distribution of dominant frequencies, calculated using spectrogram analysis of intrinsic mode function after applying the bivariate empirical mode decomposition to ECG. KNN was used to classify emotions in valence and arousal for a 3-class problem (low-medium-high). Using ECG from the Mahnob-HCI database, the average accuracies for valence and arousal were 55.8% and 59.7% respectively with 10-fold cross validation. The accuracies using features from standard Heart Rate Variability analysis were 42.6% and 47.7% for valence and arousal respectively for the 3-class problem. These features were also tested using subject-independent validation, achieving an accuracy of 59.2% for valence and 58.7% for arousal. The proposed features also showed better performance compared to features based on statistical distribution of instantaneous frequency, calculated using Hilbert transform of intrinsic mode function after applying standard empirical mode decomposition and bivariate empirical mode decomposition to ECG. We conclude that the proposed features offer a promising approach to emotion recognition based on short ECG signals. The proposed features could be potentially used also in applications in which it is important to detect quickly any changes in emotional state.
心电模式与心率波动分析特征在情绪识别系统中的比较
我们提出了从短心电信号中识别情绪的新特征。这些特征表示主频率的统计分布,通过对ECG进行二元经验模态分解后的内禀模态函数的谱图分析计算得到。用KNN对一个3类问题(低-中-高)的情绪进行效价和唤醒分类。使用Mahnob-HCI数据库的心电图,经10倍交叉验证,价态和觉醒的平均准确率分别为55.8%和59.7%。使用标准心率变异性分析的特征对3类问题的效价和唤醒的准确率分别为42.6%和47.7%。这些特征也通过受试者独立验证进行了测试,效价和唤醒的准确率分别达到59.2%和58.7%。采用标准经验模态分解和二元经验模态分解后,利用内禀模态函数希尔伯特变换计算瞬时频率统计分布的特征,与基于瞬时频率统计分布的特征相比,所提出的特征表现出更好的性能。我们得出结论,所提出的特征为基于短心电信号的情绪识别提供了一种有前途的方法。所提出的功能也可以潜在地用于快速检测情绪状态变化的应用中。
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