Single trunk multi-scale network for micro-expression recognition

Jie Wang , Xiao Pan , Xinyu Li , Guangshun Wei , Yuanfeng Zhou
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引用次数: 5

Abstract

Micro-expressions are the external manifestations of human psychological activities. Therefore, micro-expression recognition has important research and application value in many fields such as public services, criminal investigations, and clinical diagnosis. However, the particular characteristics (e.g., short duration and subtle changes) of micro-expressions bring great challenges to micro-expression recognition. In this paper, we explore the differences in the direction of facial muscle movement when people make different expressions to recognize micro-expressions. We first use optical flow to capture the subtle changes in the facial movement when a micro-expression occurs. Next, we extract facial movement information to an aniso-weighted optical flow image based on anisotropically weighting the horizontal and vertical components of the optical flow. Finally, we feed the aniso-weighted optical flow image into the proposed Single Trunk Multi-scale Network for micro-expression recognition. In particular, the designed multi-scale feature catcher in the network can capture features of micro-expressions with different intensities. We conduct extensive experiments on four spontaneous micro-expression datasets, and the experiment results show that our proposed method is competitive and effective.

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微表情识别的单主干多尺度网络
微表情是人类心理活动的外在表现。因此,微表情识别在公共服务、刑事侦查、临床诊断等诸多领域具有重要的研究和应用价值。然而,由于微表情持续时间短、变化微妙等特点,给微表情识别带来了很大的挑战。在本文中,我们探讨了人们在做出不同表情来识别微表情时,面部肌肉运动方向的差异。我们首先使用光流来捕捉微表情发生时面部运动的细微变化。接下来,我们根据光流的水平分量和光流的垂直分量的各向异性加权,将面部运动信息提取到一个各向异性加权的光流图像中。最后,我们将等差加权光流图像输入到所提出的单主干多尺度网络中进行微表情识别。特别是网络中设计的多尺度特征捕捉器可以捕捉不同强度的微表情特征。我们在四个自发微表情数据集上进行了大量的实验,实验结果表明我们提出的方法是有竞争力的和有效的。
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