判别超拉普拉斯投影及其在人脸识别中的应用

Sheng Huang, Dan Yang, Yongxin Ge, Dengyang Zhao, Xin Feng
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引用次数: 11

摘要

判别局部保持投影(Discriminant Locality Preserving Projections, DLPP)是一种同时考虑判别和几何(流形)信息的有监督子空间学习算法。DLPP有一个明显的缺点,它只考虑样本的成对几何关系。然而,在许多现实世界的问题中,样本之间的关系往往比两两关系更复杂。天真地将复合体压缩成成对的复合体将不可避免地导致一些信息的丢失,而这些信息对于分类和聚类至关重要。我们通过使用Hyper-Laplacian代替DLPP中的常规Laplacian来解决这个问题,后者只能描述成对关系。这种新的DLPP算法正是DLPP算法的推广,我们将其命名为判别超拉普拉斯投影(DHLP)。采用了五种流行的人脸数据库来验证我们的工作。结果表明DHLP优于DLPP,特别是在野外人脸识别方面。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Discriminant Hyper-Laplacian projections with its application to face recognition
Discriminant Locality Preserving Projections (DLPP) is one of the most influential supervised subspace learning algorithms that considers both discriminative and geometric (manifold) information. There is an obvious drawback of DLPP that it only considers the pairwise geometric relationship of samples. However, in many real-world issues, relationships among the samples are often more complex than pairwise. Naively squeezing the complex into pairwise ones will inevitably lead to loss of some information, which are crucial for classification and clustering. We address this issue via using the Hyper-Laplacian instead of the regular Laplacian in DLPP, which only can depict the pairwise relationship. This new DLPP algorithm is exactly a generalization of DLPP and we name it Discriminant Hyper-Laplacian Projection (DHLP). Five popular face databases are adopted for validating our work. The results demonstrate the superiority of DHLP over DLPP, particularly in face recognition in the wild.
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