Human Emotion Recognition using Polar-Based Lagged Poincare Plot Indices of Eye-Blinking Data

Atefeh Goshvarpour, A. Goshvarpour
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Abstract

Emotion recognition using bio-signals is currently a hot and challenging topic in human–computer interferences, robotics, and affective computing. A broad range of literature has been published by analyzing the internal/external behaviors of the subjects in confronting emotional events/stimuli. Eye movements, as an external behavior, are frequently used in the multi-modal emotion recognition system. On the other hand, classic statistical features of the signal have generally been assessed, and the evaluation of its dynamics has been neglected so far. For the first time, the dynamics of single-modal eye-blinking data are characterized. Novel polar-based indices of the lagged Poincare plots were introduced. The optimum lag was estimated using mutual information. After reconstruction of the plot, the polar measures of all points were characterized using statistical measures. The support vector machine (SVM), decision tree, and Naïve Bayes were implemented to complete the process of classification. The highest accuracy of 100% with an average accuracy of 84.17% was achieved for fear/sad discrimination using SVM. The suggested framework provided outstanding performances in terms of recognition rates, simplicity of the methodology, and less computational cost. Our results also showed that eye-blinking data possesses the potential for emotion recognition, especially in classifying fear emotion.
基于极性滞后庞加莱图指标的眨眼数据情感识别
利用生物信号进行情绪识别是当前人机干扰、机器人技术和情感计算领域的一个热点和具有挑战性的课题。通过分析受试者在面对情绪事件/刺激时的内部/外部行为,已经发表了大量的文献。眼动作为一种外部行为,在多模态情绪识别系统中被频繁使用。另一方面,通常对信号的经典统计特征进行了评估,而对其动力学的评估迄今为止一直被忽视。首次对单模态眨眼数据的动态特性进行了表征。介绍了滞后庞加莱图的新型极性指标。利用互信息估计最优时滞。重建后,用统计方法对各点的极坐标进行表征。采用支持向量机(SVM)、决策树和Naïve贝叶斯算法完成分类过程。支持向量机的恐惧/悲伤识别准确率最高,达到100%,平均准确率为84.17%。所建议的框架在识别率、方法的简单性和较少的计算成本方面具有突出的性能。我们的研究结果还表明,眨眼数据具有情感识别的潜力,特别是在分类恐惧情绪方面。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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