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Facial Expression Spatial Charts for Representing of Dynamic Diversity of Facial Expressions

机译:面部表情代表面部表情动态多样性的面部表情空间图

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This paper presents a method to generate individual Facial Expression Spatial Charts (FESC) using Self-Organizing Maps (SOM) and Fuzzy Adaptive Resonance Theory (ART) networks. We specifically examine the dynamic diversity of facial expressions in time-series facial images after conversion using Gabor wavelet filters. The proposed method consists of three steps: the first step is to extract topological features from time-series facial image datasets using SOMs; the second step is to integrate weights of SOM into categories using Fuzzy ART networks; the third step is to create FESCs integrated by all arousal levels produced from categories of facial expressions in each basic facial expression. For considering the influence that stress gives an expression, we measured the psychological emphasis that a subject feels at that time. The result shows a negative correlation for psychological stress and the expanse of FESC, which means that the expression became poor during feelings of stress.
机译:本文介绍了一种使用自组织地图(SOM)和模糊自适应谐振理论(ART)网络生成各个表达空间图(FEC)的方法。使用Gabor小波滤波器在转换后,我们专门检查时间序列面部图像中面部表达式的动态分集。所提出的方法由三个步骤组成:第一步是使用SOMS从时间序列面部图像数据集中提取拓扑特征;第二步是使用模糊艺术网络将SOM的权重集成到类别中;第三步是通过每个基本面部表情中的面部表情类别产生的所有唤起水平来创建FECS。为了考虑压力给出表达的影响,我们测量了对当时受试者感觉的心理重点。结果表明了心理压力和FEC的拓展负相关,这意味着在压力感受的情况下表达变得差。

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