Low-Rank Tensor Constrained Multiview Subspace Clustering
Tianjin University of Science and Technology · Institute for Infocomm Research · +2 more institutions
Abstract
In this paper, we explore the problem of multiview subspace clustering. We introduce a low-rank tensor constraint to explore the complementary information from multiple views and, accordingly, establish a novel method called Low-rank Tensor constrained Multiview Subspace Clustering (LT-MSC). Our method regards the subspace representation matrices of different views as a tensor, which captures dexterously the high order correlations underlying multiview data. Then the tensor is equipped with a low-rank constraint, which models elegantly the cross information among different views, reduces effectually the redundancy of the learned subspace representations, and improves the accuracy of clustering as well. The…
Citation impact
- FWCI
- 14.04
- Percentile
- 100%
- References
- 49
Authors
5- CZChangqing ZhangCorresponding
Tianjin University of Science and Technology
- HFHuazhu Fu
Institute for Infocomm Research
- SLSi Liu
Chinese Academy of Sciences
- GLGuangcan Liu
Nanjing University of Information Science and Technology
- XCXiaochun Cao
Tianjin University of Science and Technology, Chinese Academy of Sciences
Topics & keywords
- Cluster analysis
- Subspace topology
- Tensor (intrinsic definition)
- Mathematics
- Rank (graph theory)
- Matrix norm
- Computer science
- Artificial intelligence