基于结构保持判别映射(SMDM)的Grassmann维数降维算法及其在图像集分类中的应用

Rui Wang, Xiaojun Wu
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引用次数: 2

摘要

对于基于图像集的分类,将原始图像集表示在格拉斯曼流形上取得了很大的进步。为了将基于欧几里得的降维方法的优点扩展到格拉斯曼流形上,近年来提出了几种将降维和度量学习结合在格拉斯曼流形上的方法,并在一些计算机视觉任务中取得了良好的效果。然而,在处理复杂数据集上的分类任务时,学习到的特征没有表现出足够的区分能力,而且得到的Grassmann流形的数据分布也被忽略,可能导致过拟合。为了克服这两个问题,我们提出了一种新的维数降维方法——结构保持判别映射(SMDM)。对于SMDM,我们主要设计了一个新的判别函数用于度量学习。通过对人脸识别和目标分类两项任务的实验,对所提方法进行了评价,取得了较好的效果,证明了所提算法的可行性和有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Structure Maintaining Discriminant Maps (SMDM) for Grassmann Manifold Dimensionality Reduction with Applications to the Image Set Classification
For the image-set based classification, a considerable advance has been made by representing original image sets on Grassmann manifold. In order to extend the advantages of the Euclidean based dimensionality reduction methods to the Grassmann Manifold, several methods have been suggested recently to jointly perform dimensionality reduction and metric learning on Grassmann manifold and they have achieved good results in some computer vision tasks. Nevertheless, when handling the classification tasks on the complicated datasets, the learned features do not exhibit enough discriminatory ability and the data distribution of the resulted Grassmann manifold also be ignored which may lead to overfitting. To overcome the two problems, we propose a new method named Structure Maintaining Discriminant Maps (SMDM) for manifold dimensionality reduction problems. As to SMDM, we mainly design a new discriminant function for metric learning. We make experiments on two tasks: face recognition and object categorization to evaluate the proposed method, the achieved better results compared with the state-of-the-art methods, showing the feasibility and effectiveness of the proposed algorithm.
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