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Resampling LDA/QR and PCA+LDA for Face Recognition

机译:重新采样LDA / QR和PCA + LDA以进行人脸识别

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摘要

Principal Component Analysis (PCA) plus Linear Discriminant Analysis (LDA) (PCA+LDA) and LDA/QR are both two-stage methods that deal with the Small Sample Size (SSS) problem in traditional LDA. When applied to face recognition under varying lighting conditions and different facial expressions, neither method may work robustly. Recently, resampling, a technique that generates multiple subsets of samples from the training set, has been successfully employed to improve the classification performance of the PCA+LDA classifier. In this paper, stimulated by such success, we propose a resampling LDA/QR method to improve LDA/QR's performance. Furthermore, taking advantage of the difference between LDA/QR and PCA+LDA, we incorporate them by resampling for face recognition. Experimental results on AR dataset verify the effectiveness of the proposed methods.
机译:主成分分析(PCA)加上线性判别分析(LDA)(PCA + LDA)和LDA / QR都是解决传统LDA中小样本量(SSS)问题的两阶段方法。当在变化的光照条件和不同的面部表情下应用于人脸识别时,这两种方法都无法有效运行。最近,重采样是一种从训练集中生成多个样本子集的技术,已成功用于改善PCA + LDA分类器的分类性能。在这种成功的激发下,我们提出了一种重采样LDA / QR方法以提高LDA / QR的性能。此外,我们利用LDA / QR和PCA + LDA之间的差异,通过重新采样将它们合并为面部识别。在AR数据集上的实验结果验证了所提方法的有效性。

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