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Geometric Feature-Based Facial Emotion Recognition Using Two-Stage Fuzzy Reasoning Model

机译:基于两阶段模糊推理模型的基于几何特征的人脸情感识别

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Facial Emotion recognition is a significant requirement in machine vision society. In this sense, this paper utilizes geometric facial features and calculates displacement of feature points between expressive and neutral frames and finally applies a two-stage fuzzy reasoning model for facial emotion recognition and classification. The prototypical emotion sequence according to the Facial Action Coding System (FACS) is formed analyzing small, medium and large displacement. Furthermore geometric displacements are fuzzified and mapped onto an Action Units (AUs) by employing first-stage fuzzy reasoning model and later AUs are fuzzified and mapped onto an Emotion space by employing second-stage fuzzy relational model. The overall performance of the proposed system is evaluated on the extended Cohn-Kanade (CK+) database for classifying basic emotions like surprise, sadness, fear, anger, and happiness. The experimental results on the task of facial emotion analysis and emotion recognition are shown to outperform other existing methods available in the literature.
机译:面部情感识别是机器视觉社会中的一项重要要求。从这个意义上讲,本文利用了几何面部特征,计算了表情框架和中性框架之间的特征点位移,最后将两阶段模糊推理模型应用于面部情感识别和分类。根据面部动作编码系统(FACS)形成的原型情感序列是通过分析小,中和大位移而形成的。此外,采用第一阶段模糊推理模型将几何位移模糊化并映射到动作单元(AUs)上,随后采用第二阶段模糊关系模型将几何位移模糊化并映射到情感空间上。拟议系统的整体性能在扩展的Cohn-Kanade(CK +)数据库上进行评估,用于对基本情绪进行分类,例如惊喜,悲伤,恐惧,愤怒和幸福。面部情感分析和情感识别任务的实验结果表明,其性能优于文献中现有的其他方法。

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