基于扩展概率协同表示的图像分类器

Rushi Lan, Yicong Zhou
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引用次数: 20

摘要

基于协作表示的分类器(CRC)及其概率改进算法在许多图像分类应用中取得了令人满意的效果。然而,它们没有全面考虑训练样本的结构特征。本文提出一种基于扩展概率协同表示的图像分类器(EProCRC)。与CRC和ProCRC相比,提出的EProCRC进一步考虑了描述训练数据中每个类别分布的先验信息。这种先验信息扩大了不同类别之间的边界,增强了EProCRC的判别能力。在两个具有挑战性的数据库(即CUB200-2011和Caltech-256)上进行了实验来评估EProCRC,比较结果表明它优于几种最先进的分类器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An extended probabilistic collaborative representation based classifier for image classification
Collaborative representation based classifier (CRC) and its probabilistic improvement ProCRC have achieved satisfactory performance in many image classification applications. They, however, do not comprehensively take account of the structure characteristics of the training samples. In this paper, we present an extended probabilistic collaborative representation based classifier (EProCRC) for image classification. Compared with CRC and ProCRC, the proposed EProCRC further considers a prior information that describes the distribution of each class in the training data. This prior information enlarges the margin between different classes to enhance the discriminative capacity of EProCRC. Experiments on two challenging databases, namely CUB200-2011 and Caltech-256, are conducted to evaluate EProCRC, and comparison results demonstrate that it outperforms several state-of-the-art classifiers.
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