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Facial Expression Recognition via Deep Action Units Graph Network Based on Psychological Mechanism

机译:基于心理机制的深度动作单位图网络的面部表情识别

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摘要

Facial expression recognition (FER) is currently a very attractive research field in cognitive psychology and artificial intelligence. In this paper, an innovative FER algorithm called deep action units graph network (DAUGN) is proposed based on psychological mechanism. First, a segmentation method is designed to divide the face into small key areas, which are then converted into corresponding AU-related facial expression regions. Second, the local appearance features of these critical regions are extracted for further action units (AUs) analysis. Then, an AUs facial graph is constructed to represent expressions by taking the AU-related regions as vertices and the distances between each two landmarks as edges. Finally, the adjacency matrices of facial graph are put into a graph-based convolutional neural network to combine the local-appearance and global-geometry information, which greatly improving the performance of FER. Experiments and comparisons on CK+, MMI, and SFEW data sets reveal that the DAUGN achieves more competitive results than several other popular approaches.
机译:面部表情识别(FER)目前是认知心理学和人工智能的非常有吸引力的研究领域。本文基于心理机制提出了一种称为深度动作单元图网络(DAUGN)的创新FER算法。首先,将面部划分为小关键区域的分割方法,然后将其转换成相应的Au相关的面部表情区域。其次,为进一步的动作单元(AUS)分析提取这些关键区域的局部外观特征。然后,构造AUS面部图形以表示通过将AU相关区域作为顶点和每个两个地标作为边缘之间的距离来表示表达。最后,面部图的邻接矩阵被放入基于图形的卷积神经网络,以结合局部外观和全球几何信息,这大大提高了FER的性能。 CK +,MMI和SFew数据集的实验和比较显示,Daugn实现比其他几种流行方法更具竞争力的结果。

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