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Micro-expression Cognition and Emotion Modeling Based on Gross Reappraisal Strategy

机译:基于毛重评价策略的微表情认知与情感建模

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摘要

Micro-expression cognition is a vital useful input to develop affective computing strategies in modern human-computer/robot interaction. In this paper, an effective system for micro-expression cognition and emotional regulation is described. As input, a micro-expressional face is represented as a point in a 3D space characterized by arousal, valence and stance factors. The capture and recognition method of micro-expressions is based on a novel combination of 3D-Gradient projection descriptor, multi-scale and multi-direction Gabor filter bank and the gradient magnitude weighted Nearest Neighbor Algorithm (NNA) in facial feature regions. The main distinguishing feature of our work is that the emotional regulation model does not simply provide the classification and jump in terms of a set of discrete emotional labels, but that it operates in a continuous 3D emotional space enabling a wide range of intermediary emotional states to be obtained. The micro-expression recognition method has been tested with the Yale University's facial database and universal participants' facial database so that it is capable of analyzing any adult subject, male or female in the typical database and interactive process. Then the cognition and emotion system has been applied to the human-robot interaction, and the results are very encouraging and show that our micro-expression cognition and emotion model is generally consistent with human brain emotional regulation mechanisms.
机译:微观表达认知是发展现代人机/机器人交互中情感计算策略的重要有用输入。本文描述了一种有效的微表达认知和情绪调节系统。作为输入,将微表情脸表示为3D空间中以唤醒,化合价和姿势因素为特征的点。微表情的捕获和识别方法基于3D梯度投影描述符,多尺度和多方向Gabor滤波器组以及面部特征区域中梯度幅度加权最近邻算法(NNA)的新颖组合。我们工作的主要区别在于,情绪调节模型不只是根据一组离散的情绪标签来提供分类和跳跃,而且还可以在连续的3D情绪空间中进行操作,从而使多种中间情绪状态能够获得。微表情识别方法已经在耶鲁大学的面部数据库和全民参与者的面部数据库中进行了测试,因此能够在典型的数据库和交互过程中分析任何成年人或男性或女性。然后将认知和情感系统应用于人机交互,结果令人鼓舞,表明我们的微表情认知和情感模型总体上与人脑的情感调节机制一致。

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