Micro-Expression Spotting Using Facial Landmarks

Kai Xin Beh, Kam Meng Goh
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引用次数: 11

Abstract

Micro-expressions (MEs) are brief involuntary facial expressions and it usually happens when people try to mask their emotions in high-stake situations. As a result, it is hard to detect the occurrence of a spontaneous MEs due to the limitation of human vision in spotting the brief and subtle change of facial expression. A MEs recognition system can be categorized into two major tasks which are the spotting of the fleeting change of facial expression and the classification of the emotion behind the spotted MEs. In fact, most of the spotting of MEs proposed in the earlier work by other researchers have low accuracy and complex system model. As a result, this paper proposed a MEs spotting system that requires no training and it spots the spontaneous MEs from the videos by detecting the changes in the ratio of the Euclidean distances of facial landmark in three facial regions (left eyebrow, right eyebrow and mouth) .The proposed method was evaluated on CASME II dataset with an average accuracy of 64.77 % and the highest accuracy was 82.30 %.
使用面部标志识别微表情
微表情是一种短暂的不自觉的面部表情,通常发生在人们试图在高风险的情况下掩饰自己的情绪时。因此,由于人类的视觉在发现面部表情的短暂而微妙的变化方面的局限性,很难检测到自发性微信号的发生。微信号识别系统可以分为两个主要任务:发现面部表情的短暂变化和对发现的微信号背后的情绪进行分类。事实上,其他研究人员在早期工作中提出的大多数MEs的定位精度低,系统模型复杂。因此,本文提出了一种不需要训练的微信号识别系统,该系统通过检测面部三个区域(左眉、右眉和嘴)面部标志的欧氏距离的变化来识别视频中的自发微信号。该方法在CASME II数据集上进行了评估,平均准确率为64.77%,最高准确率为82.30%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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