Face recognition techniques, their advantages, disadvantages and performance evaluation

Lerato Masupha, T. Zuva, S. Ngwira, O. Esan
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引用次数: 29

Abstract

A human brain can store and remember thousands of faces in a person's life time, however it is very difficult for an automated system to reproduce the same results. Faces are complex and multidimensional which makes extraction of facial features to be very challenging, yet it is imperative for our face recognition systems to be better than our brain's capabilities. The face like many physiological biometrics that include fingerprint, hand geometry, retina, iris and ear uniquely identifies each individual. In this paper we focus mainly on the face recognition techniques. This review looks at three types of recognition approaches namely holistic, feature based (geometric) and the hybrid approach. We also look at the challenges that are face by the approaches.
人脸识别技术,其优点,缺点和性能评价
人类的大脑可以在一个人的一生中存储和记住数千张面孔,然而,自动化系统很难重现同样的结果。人脸是复杂和多维的,这使得人脸特征的提取非常具有挑战性,但我们的人脸识别系统必须比我们的大脑能力更好。人脸就像许多生理生物特征一样,包括指纹、手的几何形状、视网膜、虹膜和耳朵,唯一地识别每个人。本文主要研究了人脸识别技术。这篇综述着眼于三种类型的识别方法,即整体,基于特征(几何)和混合方法。我们还研究了这些方法所面临的挑战。
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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