跳到主要导航 跳到搜索 跳到主要内容

Affine Subspace Robust Low-Rank Self-Representation: From Matrix to Tensor

  • Yongqiang Tang
  • , Yuan Xie*
  • , Wensheng Zhang
  • *此作品的通讯作者
  • CAS - Institute of Automation
  • University of Chinese Academy of Sciences

科研成果: 期刊稿件文章同行评审

摘要

Low-rank self-representation based subspace learning has confirmed its great effectiveness in a broad range of applications. Nevertheless, existing studies mainly focus on exploring the global linear subspace structure, and cannot commendably handle the case where the samples approximately (i.e., the samples contain data errors) lie in several more general affine subspaces. To overcome this drawback, in this paper, we innovatively propose to introduce affine and nonnegative constraints into low-rank self-representation learning. While simple enough, we provide their underlying theoretical insight from a geometric perspective. The union of two constraints geometrically restricts each sample to be expressed as a convex combination of other samples in the same subspace. In this way, when exploring the global affine subspace structure, we can also consider the specific local distribution of data in each subspace. To comprehensively demonstrate the benefits of introducing two constraints, we instantiate three low-rank self-representation methods ranging from single-view low-rank matrix learning to multi-view low-rank tensor learning. We carefully design the solution algorithms to efficiently optimize the proposed three approaches. Extensive experiments are conducted on three typical tasks, including single-view subspace clustering, multi-view subspace clustering, and multi-view semi-supervised classification. The notably superior experimental results powerfully verify the effectiveness of our proposals.

源语言英语
页(从-至)9357-9373
页数17
期刊IEEE Transactions on Pattern Analysis and Machine Intelligence
45
8
DOI
出版状态已出版 - 1 8月 2023

指纹

探究 'Affine Subspace Robust Low-Rank Self-Representation: From Matrix to Tensor' 的科研主题。它们共同构成独一无二的指纹。

引用此