A More Objective Quantification of Micro-Expression Intensity through Facial Electromyography

Shaoyuan Lu, Jingting Li, Yan Wang, Zizhao Dong, Su-Jing Wang, Xiaolan Fu
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引用次数: 3

Abstract

Micro-expressions are facial expressions that individuals reveal when trying to hide their genuine emotions. It has potential applications in areas such as lie detection and national security. It is generally believed that micro-expressions have three essential characteristics: short duration, low intensity, and local asymmetry. Most previous studies have investigated micro-expressions based on the characteristic of short duration. To our knowledge, no empirical studies have been conducted on the low-intensity characteristic. In this paper, we use facial EMG for the first time to study the characteristic of low intensity for micro-expression. In our experiment, micro-expressions were elicited from subjects and simultaneously collected their facial EMG through the second-generation micro-expression elicitation paradigm. We collected and annotated 33 macro-expressions and 48 micro-expressions. By comparing the two indicators of EMG :(1) the percentage of apex value in maximum voluntary contraction (MVC%) and (2) the area under EMG signal curve (integrated EMG, iEMG), we found that the MVC% and iEMG of micro-expression were significantly smaller than that of macro-expression. The result demonstrates that the intensity of micro-expression is significantly smaller than that of macro-expression.
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通过面部肌电图更客观地量化微表情强度
微表情是人们试图隐藏自己真实情绪时露出的面部表情。它在测谎和国家安全等领域有潜在的应用。一般认为微表情有三个基本特征:持续时间短、强度低、局部不对称。以往对微表情的研究大多基于持续时间短的特征。据我们所知,目前还没有对低强度特性进行实证研究。本文首次利用面部肌电图研究微表情的低强度特征。在我们的实验中,通过第二代微表情引出范式,从被试身上引出微表情,同时收集他们的面部肌电图。我们收集并注释了33个宏表达式和48个微表达式。通过比较肌电信号的两个指标:(1)最大自主收缩顶点值百分比(MVC%)和(2)肌电信号曲线下面积(综合肌电信号,iEMG),我们发现微表达的MVC%和iEMG明显小于宏表达。结果表明,微表达强度明显小于宏表达强度。
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MTSN: A Multi-Temporal Stream Network for Spotting Facial Macro- and Micro-Expression with Hard and Soft Pseudo-labels Vision based Physiological and Emotional Signal Analysis with Application to Mental Disorder Diagnosis A More Objective Quantification of Micro-Expression Intensity through Facial Electromyography Proceedings of the 2nd Workshop on Facial Micro-Expression: Advanced Techniques for Multi-Modal Facial Expression Analysis
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