Micro-Expression Recognition using 3D - CNN

V. Dubey, Bhavya Takkar, Puneet Singh Lamba
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引用次数: 1

Abstract

Micro-expression comes under nonverbal communication, and for a matter of fact, it appears for minute fractions of a second. One cannot control micro-expression as it tells about our actual state emotionally, even if we try to hide or conceal our genuine emotions. As we know that micro-expressions are very rapid due to which it becomes challenging for any human being to detect it with bare eyes. This subtle-expression is spontaneous, and involuntary gives the emotional response. It happens when a person wants to conceal the specific emotion, but the brain is reacting appropriately to what that person is feeling then. Due to which the person displays their true feelings very briefly and later tries to make a false emotional response. Human emotions tend to last about 0.5 - 4.0 seconds, whereas micro-expression can last less than 1/2 of a second. On comparing micro-expression with regular facial expressions, it is found that for micro-expression, it is complicated to hide responses of a particular situation. Micro-expressions cannot be controlled because of the short time interval, but with a high-speed camera, we can capture one's expressions and replay them at a slow speed. Over the last ten years, researchers from all over the globe are researching automatic micro-expression recognition in the fields of computer science, security, psychology, and many more. The objective of this paper is to provide insight regarding micro-expression analysis using 3D CNN. A lot of datasets of micro-expression have been released in the last decade, we have performed this experiment on SMIC micro-expression dataset and compared the results after applying two different activation functions.
基于3D - CNN的微表情识别
微表情属于非语言交流的范畴,事实上,微表情出现的时间只有几分之一秒。一个人无法控制微表情,因为它反映了我们的实际情绪状态,即使我们试图隐藏或隐藏我们的真实情绪。正如我们所知,微表情是非常迅速的,因此对于任何人类来说,用肉眼来检测它都是一项挑战。这种微妙的表达是自发的,不自觉地给出了情感反应。当一个人想要隐藏特定的情绪时,大脑就会对那个人的感受做出适当的反应。因此,这个人会很短暂地表现出他们的真实感受,然后试图做出虚假的情绪反应。人类的情绪通常会持续0.5 - 4.0秒,而微表情则会持续不到半秒。将微表情与常规面部表情进行比较,发现微表情隐藏特定情境的反应是比较复杂的。由于时间间隔短,微表情无法控制,但有了高速相机,我们可以捕捉到一个人的表情,并以慢速回放。在过去的十年中,来自世界各地的研究人员正在计算机科学、安全、心理学等领域研究自动微表情识别。本文的目的是为使用3D CNN进行微表情分析提供见解。近十年来发布了大量的微表情数据集,我们在中芯微表情数据集上进行了实验,并使用两种不同的激活函数对结果进行了比较。
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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