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The CSU face identification evaluation system - Its purpose, features, and structure

机译:CSU人脸识别评估系统-目的,特征和结构

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摘要

The CSU Face Identication Evaluation System includes standardized image preprocessing software, four distinct face recognition algorithms, analysis tools to study algorithm performance, and Unix shell scripts to run standard experiments. All code is written in ANSII C. The four algorithms provided are principle components analysis (PCA), a.k.a eigenfaces, a combined principle components analysis and linear discriminant analysis algorithm (PCA+LDA), an intrapersonal/extrapersonal image difference classifier (IIDC), and an elastic bunch graph matching (EBGM) algorithm. The PCA+LDA, IIDC, and EBGM algorithms are based upon algorithms used in the FERET study contributed by the University of Maryland, MIT, and USC, respectively. One analysis tool generates cumulative match curves; the other generates a sample probability distribution for recognition rate at recognition rank 1, 2, etc., using Monte Carlo sampling to generate probe and gallery choices. The sample probability distributions at each rank allow standard error bars to be added to cumulative match curves. The tool also generates sample probability distributions for the paired difference of recognition rates for two algorithms. Whether one algorithm consistently outperforms another is easily tested using this distribution. The CSU Face Identification Evaluation System is available through our Web site and we hope it will be used by others to rigorously compare novel face identification algorithms to standard algorithms using a common implementation and known comparison techniques.
机译:CSU人脸识别评估系统包括标准化的图像预处理软件,四种不同的人脸识别算法,用于研究算法性能的分析工具以及用于运行标准实验的Unix Shell脚本。所有代码均以ANSII C语言编写。所提供的四种算法分别是主成分分析(PCA),又名本征面,主成分分析和线性判别分析算法(PCA + LDA)的组合,人际/人际图像差异分类器(IIDC),以及弹性束图匹配(EBGM)算法。 PCA + LDA,IIDC和EBGM算法分别基于由马里兰大学,麻省理工学院和USC贡献的FERET研究中使用的算法。一种分析工具生成累积匹配曲线;另一个使用蒙特卡洛采样生成探针和画廊选择,生成识别等级为1、2等的识别率的样本概率分布。每个等级的样本概率分布允许将标准误差线添加到累积匹配曲线中。该工具还为两种算法的识别率的成对差异生成样本概率分布。使用此分布可以轻松测试一种算法是否始终优于另一种算法。 CSU人脸识别评估系统可通过我们的网站获得,我们希望其他人可以使用常见的实现方式和已知的比较技术将其与标准算法进行严格的比较。

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