Decision fusion for frontal face verification

Rosmawati Nordin, Md. Jan Nordin
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Abstract

It has been established that the combination of a set of classifiers designed for a given pattern recognition problem may achieve higher recognition/classification rates than any of the classifiers taken individually. One of the contributing factor for the improvement is the rule applied to get a unified decision and the diversity of the classifiers. Principal Components Analysis (PCA) and Linear Discriminant Analysis (LDA) are two popular approaches in face recognition and verification. The authors will demonstrate a verification performance in which the fusion of both methods produces an improved rate compared to individual performance. Tests are carried out on FERET (Facial Recognition Technology) database using a modified protocol. A major drawback in applying LDA is that it requires a large set of individual face images sample to extract the intra-class variation. Performance is presented as the rate of verification when false acceptance rate is zero, in other words, no impostors allowed. Results using fusion of three verification experts show improvement compared with the best individual expert.
正面人脸验证的决策融合
已经确定,为给定模式识别问题设计的一组分类器的组合可能比单独使用任何分类器实现更高的识别/分类率。改进的原因之一是得到统一决策的规则和分类器的多样性。主成分分析(PCA)和线性判别分析(LDA)是人脸识别和验证的两种常用方法。作者将演示一种验证性能,其中两种方法的融合产生比单独性能更高的速率。在FERET(人脸识别技术)数据库上使用修改后的协议进行了测试。应用LDA的一个主要缺点是它需要大量的单个人脸图像样本来提取类内变化。当错误接受率为零时,性能表现为验证率,换句话说,不允许冒名顶替者。三个验证专家的融合结果比最佳的单个验证专家有了改进。
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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