Some Multilinear Variants of Principal Component Analysis: Examples in Grayscale Image Recognition and Reconstruction

IF 1.9 Q3 COMPUTER SCIENCE, CYBERNETICS IEEE Systems Man and Cybernetics Magazine Pub Date : 2021-01-01 DOI:10.1109/MSMC.2020.3012304
Richard A. Nelson, R. Roberts
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引用次数: 1

Abstract

Principal component analysis (PCA) has long been used in computer vision applications such as face recognition. Here, we present an overview of some variants of PCA, including 2D PCA (2DPCA), bidirectional 2DPCA (B2DPCA), and coupled subspace analysis (CSA). Unlike conventional PCA, the variants 2DPCA, B2DPCA, and CSA preserve the original image structure, often providing better recognition and reconstruction results than those obtained with PCA. This article considers the background for these techniques and steps involved in applying these methods, including typical preprocessing of sample images, algorithm description, and classification. These variants of PCA have been successfully used in a number of different areas such as identification of wood species, biometrics (not limited to face recognition), medical imaging, and image compression, to name a few examples; we briefly mention some of these to provide an idea of the scope of applications. We address some advantages and disadvantages of these variants in relation to PCA. Utilizing the Modified National Institute of Standards and Technology (MNIST) digits and Fashion-MNIST image sets, we demonstrate application of CSA for image recognition and reconstruction compared to PCA. Finally, we mention how these PCA variants fit into a more general framework using tensors.
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主成分分析的一些多线性变体:以灰度图像识别与重建为例
主成分分析(PCA)在人脸识别等计算机视觉应用中应用已久。在此,我们概述了PCA的一些变体,包括二维PCA (2DPCA)、双向2DPCA (B2DPCA)和耦合子空间分析(CSA)。与传统的PCA不同,变体2DPCA、B2DPCA和CSA保留了原始图像结构,通常比PCA获得更好的识别和重建结果。本文考虑了这些技术的背景和应用这些方法所涉及的步骤,包括样本图像的典型预处理、算法描述和分类。这些PCA的变体已经成功地应用于许多不同的领域,如木材种类的识别、生物识别(不限于面部识别)、医学成像和图像压缩,仅举几个例子;我们简要地提到其中的一些,以提供应用范围的概念。我们讨论了与PCA相关的这些变体的一些优点和缺点。利用修改后的美国国家标准与技术研究所(MNIST)数字和时尚-MNIST图像集,我们展示了CSA在图像识别和重建中的应用,并与PCA进行了比较。最后,我们提到这些PCA变体如何使用张量适应更一般的框架。
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来源期刊
IEEE Systems Man and Cybernetics Magazine
IEEE Systems Man and Cybernetics Magazine COMPUTER SCIENCE, CYBERNETICS-
自引率
6.20%
发文量
60
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