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Application of Two-Dimensional Principal Component Analysis for Recognition of Face Images

机译:二维主成分分析在人脸图像识别中的应用

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摘要

A two-dimensional principal component analysis (2D PCA) method directed at processing digital images is discussed. The method is based on representation of images as a set of rows and columns analyzing these sets. Two methods of realizing the 2D PCA corresponding to the parallel and cascade forms of its realization are presented, and their characteristics are estimated. The application of the 2D PCA method is shown for solving problems of representation and recognition of facial images. The experiments are fulfilled on ORL and FERET bases.
机译:讨论了一种用于处理数字图像的二维主成分分析(2D PCA)方法。该方法基于将图像表示为分析这些集合的一组行和列。提出了两种实现并行和级联形式的2D PCA的方法,并估计了它们的特性。示出了二维PCA方法在解决面部图像的表示和识别问题上的应用。实验是在ORL和FERET的基础上完成的。

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