基于微笑和睁开眼睛的自信值寻找视频中的面部表情模式

S. Hadi, Asep K Supriatna, Faishal Wahiduddin, W. Srisayekti, A. Djunaidi, E. Fitriana, A. Abdullah, D. Ekawati
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引用次数: 0

摘要

面部表情识别是一种非语言交际方式,它不仅是人类普遍存在的,而且在日常生活中发挥着重要作用。科技的发展使机器能够根据图像和视频自动检测人类的面部表情。在文献中已经提出了许多面部表情检测方法。本文提出了一种从微笑和睁开眼睛两个参数值中寻找三种基本面部表情(中性、快乐和愤怒)的方法。该分析涉及使用预先设计的专有算法和Luxand库相结合的预处理步骤。首先,将参数映射到二维空间中,然后使用K-means(一种流行的启发式聚类方法)将参数分为三个聚类。其次,使用专有研究数据对每个视频进行了超过50,000帧的实验。结果表明,该方法成功地完成了一个简单的面部表情视频分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Finding Facial Expression Patterns on Videos based on Smile and Eyes-Open Confidence Values
Facial expression recognition is one of the types of non-verbal communication that is not only commons for human but also plays an essential role in everyday lives. The development of science and technology allows the machine to automatically detect human facial expressions based on images and videos. Numerous facial expression detection methods have been proposed in the literature. This paper presents a method to find three basic facial expressions (neutral, happy, and angry) from two parameter values: smile and eyes-open. The analysis involves a preprocessing step using a combination of pre-designed proprietary algorithm and Luxand library. Firstly, the parameters were mapped into two-dimensional space and then grouped into three clusters using K-means, a popular heuristic clustering method. Secondly, more than 50,000 frames for each video were experimented using the proprietary research data. The result shows that the proposed method successfully performed a simple video analysis of facial expressions.
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