线性降维的加权加性准则

Jing Peng, S. Robila
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引用次数: 4

摘要

线性判别分析(LDA)的降维方法已广泛应用于各种人脸识别任务。然而,它有两个主要问题。首先,当维数大于样本量时,存在样本量小的问题。其次,它创建的子空间有利于分隔良好的类,而不是分隔不好的类。在本文中,我们提出了一个简单的线性降维加权准则,以解决与LDA相关的上述两个问题。此外,也有完善的数值程序,如半确定规划,以有效地计算所提出的准则。我们证明了我们的建议的有效性,并通过一些例子将其与其他竞争技术进行比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Weighted Additive Criterion for Linear Dimension Reduction
Linear discriminant analysis (LDA) for dimension reduction has been applied to a wide variety of face recognition tasks. However, it has two major problems. First, it suffers from the small sample size problem when dimensionality is greater than the sample size. Second, it creates subspaces that favor well separated classes over those that are not. In this paper, we propose a simple weighted criterion for linear dimension reduction that addresses the above two problems associated with LDA. In addition, there are well established numerical procedures such as semi-definite programming for efficiently computing the proposed criterion. We demonstrate the efficacy of our proposal and compare it against other competing techniques using a number of examples.
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