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MER-GCN: Micro-Expression Recognition Based on Relation Modeling with Graph Convolutional Networks

机译:MER-GCN:基于关系卷积和图卷积网络的微表情识别

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Micro-Expression (ME) is the spontaneous, involuntary movement of a face that can reveal the true feeling. Recently, increasing researches have paid attention to this field combing deep learning techniques. Action units (AUs) are the fundamental actions reflecting the facial muscle movements and AU detection has been adopted by many researches to classify facial expressions. However, the time-consuming annotation process makes it difficult to correlate the combinations of AUs to specific emotion classes. Inspired by the nodes relationship building Graph Convolutional Networks (GCN), we propose an end-to-end AU-oriented graph classification network, namely MER-GCN, which uses 3D ConvNets to extract AU features and applies GCN layers to discover the dependency laying between AU nodes for ME categorization. To our best knowl-edge, this work is the first end-to-end architecture for Micro-Expression Recognition (MER) using AUs based GCN. The experimental results show that our approach outperforms CNN-based MER networks.
机译:微表情(ME)是面部的自发性,非自愿运动,可以揭示真实的感觉。近来,结合深度学习技术的越来越多的研究已经关注该领域。动作单位(AUs)是反映面部肌肉运动的基本动作,许多研究已采用AU检测来对面部表情进行分类。但是,耗时的注释过程使得很难将AU的组合与特定的情感类别相关联。受节点关系构建图卷积网络(GCN)的启发,我们提出了一个端到端的面向AU的图分类网络MER-GCN,该网络使用3D ConvNets提取AU特征并应用GCN层来发现依赖项放置在AU节点之间进行ME分类。据我们所知,这项工作是第一个使用基于AU的GCN进行微表情识别(MER)的端到端体系结构。实验结果表明,我们的方法优于基于CNN的MER网络。

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