Robust LDA Classification by Subsampling

S. Fidler, A. Leonardis
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引用次数: 26

Abstract

In this paper we present a new method which enables a robust calculation of the LDA classification rule, thus making the recognition of objects under non-ideal conditions possible, i.e., in situations when objects are occluded or they appear on a varying background, or when their images are corrupted by outliers. The main idea behind the method is to translate the task of calculating the LDA classification rule into the problem of determining the coefficients of an augmented generative model (PCA). Specifically, we construct an augmented PCA basis which, on the one hand, contains information necessary for the classification (in the LDA sense), and, on the other hand, enables us to calculate the necessary coefficients by means of a subsampling approach resulting in a high breakdown point classification. The theoretical results are evaluated on the ORL face database showing that the proposed method significantly outperforms the standard LDA.
基于子抽样的鲁棒LDA分类
在本文中,我们提出了一种新的方法,可以鲁棒地计算LDA分类规则,从而使非理想条件下的目标识别成为可能,即当目标被遮挡或它们出现在不同的背景中,或者当它们的图像被异常值损坏时。该方法的主要思想是将计算LDA分类规则的任务转化为确定增广生成模型(PCA)系数的问题。具体来说,我们构建了一个增强型PCA基础,一方面包含分类所需的信息(在LDA意义上),另一方面,使我们能够通过子抽样方法计算必要的系数,从而获得高分解点分类。在ORL人脸数据库上对理论结果进行了评估,结果表明该方法明显优于标准LDA方法。
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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