Generalized 2D Fisher Discriminant Analysis

Hui Kong, Jian-Gang Wang, E. Teoh, C. Kambhamettu
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引用次数: 4

Abstract

To solve the Small Sample Size (SSS) problem, the recent linear discriminant analysis using the 2D matrix-based data representation model has demonstrated its superiority over that using the conventional vector-based data representation model in face recognition [7]. But the explicit reason why the matrix-based model is better than vectorized model has not been given until now. In this paper, a framework of Generalized 2D Fisher Discriminant Analysis (G2DFDA) is proposed. Three contributions are included in this framework: 1) the essence of these ’2D’ methods is analyzed and their relationships with conventional ’1D’ methods are given, 2) a Bilateral and 3) a Kernel-based 2D Fisher Discriminant Analysis methods are proposed. Extensive experiment results show its excellent performance.
广义二维Fisher判别分析
为了解决小样本(Small Sample Size, SSS)问题,最近使用基于二维矩阵的数据表示模型的线性判别分析在人脸识别中已经证明了它比使用传统的基于向量的数据表示模型的优越性[7]。但是目前还没有给出基于矩阵的模型优于矢量化模型的明确原因。本文提出了广义二维Fisher判别分析框架(G2DFDA)。该框架包括三个贡献:1)分析了这些“二维”方法的本质,并给出了它们与传统“一维”方法的关系;2)提出了双边和3)基于核的二维Fisher判别分析方法。大量的实验结果表明了其优良的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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