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The equivalence of two-dimensional PCA to line-based PCA

机译:二维PCA与基于行的PCA等效

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摘要

The state-of-the-art in human face recognition is the subspace methods originated by the Principal Component Analysis (PCA), the Eigenfaces of the facial images. Recently, a technique called Two-dimensional PCA (2DPCA) was proposed for human face representation and recognition. It was developed for image feature extraction based on 2D matrices as opposed to the standard PCA, which is based on 1D vectors. In this note, we show that 2DPCA is equivalent to a special case of an existing feature extraction method, block-based PCA, which has been used for face recognition in a number of systems.
机译:人脸识别的最新技术是由主成分分析(PCA)(即人脸图像的特征脸)起源的子空间方法。最近,提出了一种称为二维PCA(2DPCA)的技术用于人脸表示和识别。它是针对基于2D矩阵的图像特征提取而开发的,而不是基于基于1D向量的标准PCA。在本说明中,我们表明2DPCA等同于现有特征提取方法的特殊情况,即基于块的PCA,该方法已在许多系统中用于人脸识别。

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