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(2D)~2PCA: Two-directional two-dimensional PCA for efficient face representation and recognition

机译:(2D)〜2PCA:二维二维PCA,用于有效的面部表示和识别

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摘要

Recently, a new technique called two-dimensional principal component analysis (2DPCA) was proposed for face representation and recognition. The main idea behind 2DPCA is that it is based on 2D matrices as opposed to the standard PCA, which is based on 1D vectors. Although 2DPCA obtains higher recognition accuracy than PCA, a vital unresolved problem of 2DPCA is that it needs many more coefficients for image representation than PCA. In this paper, we first indicate that 2DPCA is essentially working in the row direction of images, and then propose an alternative 2DPCA which is working in the column direction of images. By simultaneously considering the row and column directions, we develop the two-directional 2DPCA, i.e. (2D)~2PCA, for efficient face representation and recognition. Experimental results on ORL and a subset of FERET face databases show that (2D)~2PCA achieves the same or even higher recognition accuracy than 2DPCA, while the former needs a much reduced coefficient set for image representation than the latter.
机译:最近,提出了一种称为二维主成分分析(2DPCA)的新技术来进行人脸表示和识别。 2DPCA背后的主要思想是它基于2D矩阵,而不是基于基于1D向量的标准PCA。尽管2DPCA比PCA具有更高的识别精度,但2DPCA的一个尚未解决的重要问题是,与PCA相比,它需要更多的图像表示系数。在本文中,我们首先指出2DPCA实际上在图像的行方向上起作用,然后提出了另一种2DPCA在图像的列方向上起作用。通过同时考虑行和列方向,我们开发了双向2DPCA,即(2D)〜2PCA,以实现有效的面部表示和识别。在ORL和FERET人脸数据库的一个子集上的实验结果表明(2D)〜2PCA可以实现与2DPCA相同甚至更高的识别精度,而前者所需的图像集系数要比后者小得多。

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