Comparison and Review of Face Recognition Methods Based on Gabor and Boosting Algorithms

Taraneh Kamyab, Alireza Delrish, H. Daealhaq, Ali Mojarrad Ghahfarokhi, Fatemehalsadat Beheshtinejad
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引用次数: 3

Abstract

The face plays an essential role in identifying people and showing their emotions in society. The human ability to recognize faces is remarkable. But face recognition is a fundamental problem in many computer programs. Due to the inherent complexities of the face and the many changes in its features, different algorithms for face recognition have been introduced in the last 20 years. Face recognition methods that are based on the structure of the face are unsupervised methods that produce good results compared to the linear changes that occur in the image. In this article, the Gabor algorithm, which is the origin of face recognition algorithms, has been described. Over the past decade, most of the research in the area of pattern classification has emphasized the use of the Gabor filter bank for extracting features. Because the Gabor algorithm has shortcomings, researchers have introduced a new method that is a combination of Gabor and PCA. After the introduction of the Gabor method, more complete and accurate algorithms have been introduced, such as Boosting algorithms, which we have briefly explained in this article. Also, here are the results of the comparison made by the researchers between Boosting and Gabor algorithms. The results show that Boosting-based algorithms have performed better compared to Gabor-based algorithms.
基于Gabor和Boosting算法的人脸识别方法比较与综述
在社会中,脸在识别人和表达情感方面起着至关重要的作用。人类识别面孔的能力是惊人的。但人脸识别是许多计算机程序中的一个基本问题。由于人脸固有的复杂性及其特征的许多变化,在过去的20年里,人们引入了不同的人脸识别算法。基于人脸结构的人脸识别方法是无监督的方法,与图像中发生的线性变化相比,可以产生良好的结果。本文介绍了人脸识别算法的起源——Gabor算法。在过去的十年中,模式分类领域的大部分研究都强调使用Gabor滤波器组来提取特征。由于Gabor算法的不足,研究人员提出了一种新的方法,即Gabor和PCA的结合。在引入Gabor方法之后,还引入了更完整、更精确的算法,例如boost算法,我们在本文中简要介绍了boost算法。此外,这里是研究人员对boost和Gabor算法进行比较的结果。结果表明,与基于gabor的算法相比,基于boosting的算法具有更好的性能。
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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