Face Detection Based On Eye-Mouth Triangular Approach

Deni Kartika, S. Suprijadi
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Abstract

Human face is a complex and dynamic structure. It is a challenge to be able to make a face recognition system like humans. At the beginning of its development, many facial recognition studies only focused on facial features. In 1991, Turk and Pentland developed a face recognition system based on Principal Component Analysis named eigenface. This system is very efficient because it only focuses on components that most affect facial image. However, this system has weaknesses, which cannot be used to determine the position of the face. In this final project, image processing methods will be carried out to detect faces in digital images. The method used is eye mouth triangular approach with the steps being taken are skin detection, eye detection, mouth detection, and facial confirmation. From the results of a hundred digital color images tested, there were 82 images that were successfully detected. The main system failure is caused by failure in skin detection. Further development is needed so that the system can work optimally.
基于眼-口三角方法的人脸检测
人脸是一个复杂的动态结构。能够做出像人类一样的人脸识别系统是一个挑战。在其发展之初,许多面部识别研究只关注面部特征。1991年,Turk和Pentland开发了一种基于主成分分析的人脸识别系统,称为特征脸。这个系统非常高效,因为它只关注对面部图像影响最大的部分。然而,该系统也有缺点,不能用于确定人脸的位置。在这个最终的项目中,将使用图像处理方法来检测数字图像中的人脸。所采用的方法为眼口三角入路,其步骤为皮肤检测、眼口检测、口口检测和面部确认。在测试的100张数字彩色图像中,有82张图像被成功检测出来。主要的系统故障是由皮肤检测失败引起的。需要进一步的开发,使系统能够最佳地工作。
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