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Bagging null space locality preserving discriminant classifiers for face recognition

机译:袋装零空间局部性,保留用于人脸识别的判别式分类器

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摘要

In this paper, we propose a novel bagging null space locality preserving discriminant analysis (bagNLPDA) method for facial feature extraction and recognition. The bagNLPDA method first projects all the training samples into the range space of a so-called locality preserving total scatter matrix without losing any discriminative information. The projected training samples are then randomly sampled using bagging to generate a set of bootstrap replicates. Null space discriminant analysis is performed in each replicate and the results of them are combined using majority voting. As a result, the proposed method aggregates a set of complementary null space locality preserving discriminant classifiers. Experiments on FERET and PIE subsets demonstrate the effectiveness of bagNLPDA.
机译:在本文中,我们提出了一种用于面部特征提取和识别的新颖的袋装零空间局部保留判别分析(bagNLPDA)方法。 bagNLPDA方法首先将所有训练样本投影到所谓的局部性保留总散点矩阵的范围空间中,而不会丢失任何判别信息。然后使用装袋法对计划的训练样本进行随机采样,以生成一组引导程序副本。在每个重复样本中执行零空间判别分析,并使用多数表决将其结果合并。结果,提出的方法聚合了一组互补的零空间局部性,保留了判别式分类器。 FERET和PIE子集的实验证明bagNLPDA的有效性。

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