首页> 外文会议>2018 13th IEEE International Conference on Automatic Face amp; Gesture Recognition >Objective Micro-Facial Movement Detection Using FACS-Based Regions and Baseline Evaluation
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Objective Micro-Facial Movement Detection Using FACS-Based Regions and Baseline Evaluation

机译:基于FACS的区域的客观微脸运动检测和基线评估

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Micro-facial expressions are regarded as an important human behavioural event that can highlight emotional deception. Spotting these movements is difficult for humans and machines, however research into using computer vision to detect subtle facial expressions is growing in popularity. This paper proposes an individualised baseline micro-movement detection method using 3D Histogram of Oriented Gradients (3D HOG) temporal difference method. We define a face template consisting of 26 regions based on the Facial Action Coding System (FACS). We extract the temporal features of each region using 3D HOG. Then, we use Chi-square distance to find subtle facial motion in the local regions. Finally, an automatic peak detector is used to detect micro-movements above the proposed adaptive baseline threshold. The performance is validated on two FACS coded datasets: SAMM and CASME II. This objective method focuses on the movement of the 26 face regions. When comparing with the ground truth, the best result was an AUC of 0.7512 and 0.7261 on SAMM and CASME II, respectively. The results show that 3D HOG outperformed for micro-movement detection, compared to state-of-the-art feature representations: Local Binary Patterns in Three Orthogonal Planes and Histograms of Oriented Optical Flow.
机译:微面部表情被认为是重要的人类行为事件,可以突出情感上的欺骗。对于人类和机器来说,很难发现这些运动,但是,使用计算机视觉来检测微妙的面部表情的研究正在日益普及。本文提出了一种使用定向梯度3D直方图(3D HOG)时差法的个性化基线微动检测方法。我们基于面部动作编码系统(FACS)定义了一个包含26个区域的面部模板。我们使用3D HOG提取每个区域的时间特征。然后,我们使用卡方距离来查找局部区域中的细微面部运动。最后,使用自动峰值检测器检测高于建议的自适应基线阈值的微动。在两个FACS编码数据集上验证了性能:SAMM和CASME II。该客观方法着重于26个面部区域的运动。与基本事实进行比较时,最好的结果是SAMM和CASME II的AUC分别为0.7512和0.7261。结果表明,与最新的特征表示相比,3D HOG在微运动检测方面的表现要好:三个正交平面中的局部二元图案和定向光流的直方图。

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