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Horizontal and Vertical 2DPCA-Based Discriminant Analysis for Face Verification on a Large-Scale Database

机译:基于水平和垂直2DPCA的判别分析,用于大型数据库的人脸验证

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This paper first discusses some theoretical properties of 2D principal component analysis (2DPCA) and then presents a horizontal and vertical 2DPCA-based discriminant analysis (HVDA) method for face verification. The HVDA method, which applies 2DPCA horizontally and vertically on the image matrices (2D arrays), achieves lower computational complexity than the traditional PCA and Fisher linear discriminant analysis (LDA)-based methods that operate on high dimensional image vectors (1D arrays). The horizontal 2DPCA is invariant to vertical image translations and vertical mirror imaging, and the vertical 2DPCA is invariant to horizontal image translations and horizontal mirror imaging. The HVDA method is therefore less sensitive to imprecise eye detection and face cropping, and can improve upon the traditional discriminant analysis methods for face verification. Experiments using the face recognition grand challenge (FRGC) and the biometric experimentation environment system show the effectiveness of the proposed method. In particular, for the most challenging FRGC version 2 Experiment 4, which contains 12$thinspace$ 776 training images, 16 028 controlled target images, and 8014 uncontrolled query images, the HVDA method using a color configuration across two color spaces, namely, the $YIQ$ and the $YC_{b}C_{r}$ color spaces, achieves the face verification rate (ROC III) of 78.24% at the false accept rate of 0.1%.
机译:本文首先讨论了2D主成分分析(2DPCA)的一些理论特性,然后提出了一种基于水平和垂直2DPCA的判别分析(HVDA)的人脸验证方法。 HVDA方法将2DPCA水平和垂直应用于图像矩阵(2D阵列),其计算复杂度要低于对高维图像矢量(1D阵列)进行操作的基于PCA和Fisher线性判别分析(LDA)的传统方法。水平2DPCA对于垂直图像平移和垂直镜像成像是不变的,而垂直2DPCA对于水平图像平移和水平镜像成像是不变的。因此,HVDA方法对不精确的眼睛检测和面部裁剪不敏感,并且可以改进用于面部验证的传统判别分析方法。使用面部识别大挑战(FRGC)和生物特征实验环境系统进行的实验证明了该方法的有效性。尤其是,对于最具挑战性的FRGC版本2实验4,其中包含12个Thinspace $ 776训练图像,16028个受控目标图像和8014个非受控查询图像,HVDA方法使用跨两个颜色空间的颜色配置,即$ YIQ $和$ YC_ {b} C_ {r} $颜色空间在0.1%的错误接受率下实现了78.24%的面部验证率(ROC III)。

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