Discriminant Locality Preserving Projections: A New Method to Face Representation and Recognition

Wei-wei Yu, Xiao-long Teng, Chong-qing Liu
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引用次数: 10

Abstract

Locality Preserving Projections (LPP) is a linear projective map that arises by solving a variational problem that optimally preserves the neighborhood structure of the data set. Though LPP has been applied in many domains, it has limits to solve recognition problem. Thus, Discriminant Locality Preserving Projections (DLPP) is presented in this paper. The improvement of DLPP algorithm over LPP method benefits mostly from two aspects. One aspect is that DLPP tries to find the subspace that best discriminates different face classes by maximizing the between-class distance, while minimizing the within-class distance. The other aspect is that DLPP reduces the energy of noise and transformation difference as much as possible without sacrificing much of intrinsic difference. In the experiments, DLPP achieves the better face recognition performance than LPP.
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判别保域投影:一种人脸表示与识别的新方法
局域保持投影(Locality Preserving projection, LPP)是一种线性投影映射,它是通过解决一个最优地保留数据集的邻域结构的变分问题而产生的。尽管LPP在许多领域得到了应用,但它在解决识别问题方面存在局限性。因此,本文提出了判别局部保持投影(DLPP)。DLPP算法相对于LPP方法的改进主要受益于两个方面。一个方面是DLPP试图通过最大化类间距离,最小化类内距离来找到区分不同人脸类别的最佳子空间。另一方面,DLPP在不牺牲太多固有差分的前提下,尽可能地降低噪声和变换差分的能量。在实验中,DLPP取得了比LPP更好的人脸识别性能。
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