首页> 外文会议>Chinese Conference on Biometric Recognition(SINOBIOMETRICS 2004); 20041213-14; Guangzhou(CN) >Unified Locally Linear Embedding and Linear Discriminant Analysis Algorithm (ULLELDA) for Face Recognition
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Unified Locally Linear Embedding and Linear Discriminant Analysis Algorithm (ULLELDA) for Face Recognition

机译:统一的局部线性嵌入和线性判别分析算法(ULLELDA)用于人脸识别

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摘要

Manifold learning approaches such as locally linear embedding algorithm (LLE) and isometric mapping (Isomap) algorithm are aimed to discover the intrinsical low dimensional variables from high-dimensional nonlinear data. While, in order to achieve effective recognition tasks based on manifold learning, many problems remain to be solved. In this paper, we propose unified algorithm based on LLE and linear discriminant analysis (ULLELDA) for those remained problems. First, training samples are mapped into low-dimensional embedding space and then LDA algorithm is used to project samples into discriminant space for enlarging between-class distances and decreasing within-class distance. Second, the unknown samples are directly mapped into discriminant space without the computation of the corresponding one in the low-dimensional embedding space. Experiments on several face databases show the advantages of the proposed algorithm.
机译:诸如局部线性嵌入算法(LLE)和等距映射(Isomap)算法之类的流形学习方法旨在从高维非线性数据中发现固有的低维变量。同时,为了实现基于多重学习的有效识别任务,仍有许多问题有待解决。针对这些遗留问题,我们提出了基于LLE和线性判别分析(ULLELDA)的统一算法。首先,将训练样本映射到低维嵌入空间中,然后使用LDA算法将样本投影到判别空间中,以扩大类间距离并减小类内距离。其次,将未知样本直接映射到判别空间,而无需计算低维嵌入空间中的对应样本。在多个人脸数据库上的实验表明了该算法的优势。

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