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Micro-Expression Recognition Based on the Spatio-Temporal Feature

机译:基于时空特征的微表情识别

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Micro-expressions are brief and involuntary facial movements which reveal persons' real emotions. Recognition of microexpression is a great challenge due to its properties of short duration and low intensity. To address this problem, we propose a ROI (Region of Interest)-based spatio-temporal feature named Dense Sampling Optical-flow's Mean Magnitude and Angle (DS-OMMA) for micro-expression recognition. Namely, partitioning the facial region into some adaptive ROIs discovers the facial spatial structure, and optical flow explores the temporal information by capturing small muscular movements on the face. Moreover, dense sampling reduces the effect of noise caused by head movement or illumination. The proposed approach is evaluated on two spontaneous micro-expression datasets, i.e., CASME2 and CAS(ME)2. The experimental results show that our proposed DS-OMMA feature performs better than the baseline feature LBP-TOP and the state-of-the-art feature MDMO in recognition accuracy.
机译:微表情是短暂而非自愿的面部动作,揭示了人们的真实情感。由于微表达的持续时间短且强度低,因此对微表达的识别是一个巨大的挑战。为了解决此问题,我们提出了一种基于ROI(感兴趣区域)的时空特征,称为微采样识别的密集采样光流的平均幅度和角度(DS-OMMA)。即,将面部区域划分为一些自适应ROI可以发现面部空间结构,而光流通过捕获面部的小肌肉运动来探索时间信息。此外,密集采样可减少因头部移动或照明引起的噪声影响。在两个自发的微表达数据集(即CASME2和CAS(ME))上对提出的方法进行了评估 2 。实验结果表明,我们提出的DS-OMMA功能在识别准确度方面优于基线功能LBP-TOP和最新功能MDMO。

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