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An approach for directly extracting features from matrix data and its application in face recognition

机译:一种直接从矩阵数据中提取特征的方法及其在人脸识别中的应用

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摘要

By formulating two-dimensional principle component analysis (2DPCA) as a mathematical form different from the conventional 2DPCA, we present theoretical basis of 2DPCA and show the theoretical similarities and differences between 2DPCA and PCA. We also Show that 2DPCA owns its decorrelation property and the feature vectors extracted from matrices are uncorrelated. We use the proposed mathematical form to show that 2DPCA is the best approach for directly extract features from matrices. We also present in detail 2DPCA Schemes 1 and 2, two schemes to implement the proposed mathematical form. The two schemes transform original images into different spaces, respectively, 2DPCA Scheme 1 enhances the transverse characters of images, whereas the second scheme enhances vertical characters of images. We propose a feature fusion approach for achieving better recognition results by combining the features generated from the two schemes of 2DPCA. The proposed fusion approach is tested on face recognition tasks and is found to be more accurate than both 2DPCA Scheme 1 and 2DPCA Scheme 2.
机译:通过将二维主成分分析(2DPCA)表示为不同于常规2DPCA的数学形式,我们介绍了2DPCA的理论基础,并显示了2DPCA和PCA之间的理论异同。我们还表明2DPCA拥有其去相关属性,并且从矩阵中提取的特征向量是不相关的。我们使用提出的数学形式来表明2DPCA是直接从矩阵中提取特征的最佳方法。我们还将详细介绍2DPCA方案1和2,这两种方案都可以实现所提出的数学形式。这两种方案分别将原始图像变换到不同的空间,2DPCA方案1增强了图像的横向特征,而第二种方案增强了图像的垂直特征。我们提出了一种特征融合方法,通过结合从2DPCA的两种方案生成的特征来获得更好的识别结果。拟议的融合方法在面部识别任务上进行了测试,发现比2DPCA方案1和2DPCA方案2更准确。

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