A Comparative Study of Machine Learning Techniques for Emotion Recognition from Peripheral Physiological Signals

Sowmya Vijayakumar, R. Flynn, Niall Murray
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引用次数: 14

Abstract

Recent developments in wearable technology have led to increased research interest in using peripheral physiological signals for emotion recognition. The non-invasive nature of peripheral physiological signal measurement via wearables enables ecologically valid long-term monitoring. These peripheral signal measurements can be used in real-time in many ways including health and emotion classification. This paper investigates the utility of peripheral physiological signals for emotion recognition using the publicly available DEAP database. Using this database (which contains electroencephalogram (EEG) signals and peripheral signals), this paper compares eight machine learning models in the classification of valence and arousal emotion dimensions. These were applied to the peripheral physiological signals only. These models operate on three groupings of the peripheral data: (i) the raw peripheral physiological signals; (ii) individual feature sets extracted from each peripheral signal; and (iii) a fusion data set made of the combined features from the individual peripheral signals. The results indicate that support vector machine, linear discriminant analysis and logistic regression give the best recognition results on all three data groups considered. The feature fusion data set, which is made up by fusing all the features from the peripheral signals, gives the best recognition accuracy on both valence and arousal dimensions. In addition, subject dependency for emotion classification from peripheral signals is examined and significant individual variability is observed. The recognition rate varies between each participant from 10% to 87.5%.
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基于外围生理信号的情绪识别的机器学习技术比较研究
最近可穿戴技术的发展增加了人们对使用周边生理信号进行情绪识别的研究兴趣。通过可穿戴设备进行的外围生理信号测量的非侵入性使生态有效的长期监测成为可能。这些外围信号测量可以在许多方面实时使用,包括健康和情绪分类。本文利用公开可用的DEAP数据库研究外围生理信号在情绪识别中的效用。利用该数据库(包含脑电图信号和外周信号),比较了8种机器学习模型在效价和唤醒情绪维度分类方面的差异。这些仅应用于外周生理信号。这些模型基于三组外周数据:(i)原始外周生理信号;(ii)从每个外围信号中提取的单个特征集;以及(iii)由来自各个外围信号的组合特征组成的融合数据集。结果表明,支持向量机、线性判别分析和逻辑回归对三种数据组的识别效果最好。特征融合数据集融合了来自周边信号的所有特征,在价态和唤醒维度上都具有最佳的识别精度。此外,受试者依赖于情绪分类的外围信号进行了检查和显著的个体差异观察。每个参与者的识别率从10%到87.5%不等。
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