基于类回归嵌入的特征提取

Yi Chen, Zhong Jin
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引用次数: 1

摘要

基于线性回归技术,提出了一种新的监督学习算法——面向类的回归嵌入(CRE)。通过最小化类内重构误差,CRE找到了一个低维子空间,在这个子空间中,样本可以最好地表示为它们的类内样本的组合。这个特征可以显著增强新提出的基于线性回归的分类器(LRC)的性能。在扩展的耶鲁人脸数据库B (YaleB)和CENPARMI手写数字数据库上的实验结果表明,CRE + LRC的有效性和鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Feature extraction using class-oriented regression embedding
Based on linear regression techniques, we present a new supervised learning algorithm called Class-oriented Regression Embedding (CRE) for feature extraction. By minimizing the intra-class reconstruction error, CRE finds a low-dimensional subspace in which samples can be best represented as a combination of their intra-class samples. This characteristic can significantly strengthen the performance of the newly proposed classifier called linear regression-based classification (LRC). The experimental results on the extended-YALE Face Database B (YaleB) and CENPARMI handwritten numeral database show the effectiveness and robustness of CRE plus LRC.
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