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Combination of two novel LDA-based methods for face recognition

机译:两种基于LDA的新颖人脸识别方法的组合

摘要

Linear discriminant analysis (LDA)-based methods have been very successful in face recognition, yet little investigation has been done on the fusion of different LDA methods. Combination of two LDA methods which performed LDA on distinctly different subspaces may be effective in further improving the recognition performance. In this paper we first present two novel LDA-based methods, post-processed Fisherfaces (pFisherfaces) and bi-directional PCA plus LDA (BDPCA + LDA). pFisherfaces uses 2D-Gaussian filter to smooth classical Fisherfaces, and BDPCA + LDA is a LDA performed in the BDPCA subspace. Then we propose a combination framework of these two LDA-based approaches. Two popular face databases, the ORL and the FERET, are used to evaluate the efficiency of the proposed combination framework. The results of our experiments indicate that the combination framework is superior to pFisherfaces, BDPCA + LDA, and other appearance-based methods in terms of recognition accuracy.
机译:基于线性判别分析(LDA)的方法在人脸识别方面非常成功,但对不同LDA方法的融合进行的研究很少。在明显不同的子空间上执行LDA的两种LDA方法的组合可能会有效地进一步提高识别性能。在本文中,我们首先介绍两种基于LDA的新颖方法,即后处理Fisherfaces(pFisherfaces)和双向PCA加LDA(BDPCA + LDA)。 pFisherfaces使用2D-高斯滤波器平滑经典Fisherfaces,而BDPCA + LDA是在BDPCA子空间中执行的LDA。然后,我们提出了这两种基于LDA的方法的组合框架。使用两个流行的人脸数据库ORL和FERET来评估所提出的组合框架的效率。我们的实验结果表明,在识别精度方面,该组合框架优于pFisherfaces,BDPCA + LDA和其他基于外观的方法。

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