Real Time Face Recognition Comparison Using Fisherfaces and Local Binary Pattern

B. W. Yohanes, Reva Diaz Airlangga, Iwan Setyawan
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引用次数: 8

Abstract

Face recognition has been gaining popularity by computer vision researchers over last two decades. Face recognition concerns to identify person from an image set. In general there are three face recognition classes, i.e., holistic based, feature-based, and hybrid methods. Fisherfaces extends Eigenfaces approach using Fisher's linear discriminant to improve classification rate by maximising the ratio of between-class to within-class scatters. In the other hand, local binary pattern employs shape and texture in local pixel neighbourhoods to build a global representation of a face image. Both methods are implemented and analysed using three distinct face image dataset and a real time video application. The accuracy, training and testing time for both algorithms are measured in some experiments using k-fold cross validation scheme. From experiment result, it is concluded that Fisherfaces has a good prediction time that makes it a good choice for real time face recognition applications. In contrast, local binary pattern can handle classifier addition, so it can be used in dynamic face recognition scenarios.
基于渔民脸和局部二值模式的实时人脸识别比较
在过去的二十年里,人脸识别越来越受到计算机视觉研究人员的欢迎。人脸识别涉及从图像集中识别人。一般有三种人脸识别方法,即基于整体方法、基于特征方法和混合方法。fishfaces扩展了特征面方法,使用Fisher的线性判别法,通过最大化类间和类内散点的比例来提高分类率。另一方面,局部二值模式利用局部像素邻域的形状和纹理来构建人脸图像的全局表示。在三个不同的人脸图像数据集和一个实时视频应用中,对这两种方法进行了实现和分析。采用k-fold交叉验证方案,对两种算法的准确率、训练时间和测试时间进行了测试。实验结果表明,fishfaces具有良好的预测时间,是实时人脸识别应用的理想选择。相比之下,局部二值模式可以处理分类器的添加,因此可以用于动态人脸识别场景。
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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