A Rank-Constrained Matrix Representation for Hypergraph-Based Subspace Clustering

This paper presents a novel, rank-constrained matrix representation combined with hypergraph spectral analysis to enable the recovery of the original subspace structures of corrupted data. Real-world data are frequently corrupted with both sparse error and noise. Our matrix decomposition model separ...

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Main Authors: Yubao Sun, Zhi Li, Min Wu
Format: Article
Language:English
Published: Hindawi Limited 2015-01-01
Series:Mathematical Problems in Engineering
Online Access:http://dx.doi.org/10.1155/2015/572753
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spelling doaj-500fae958731469b80e8392344887ed32020-11-24T20:42:22ZengHindawi LimitedMathematical Problems in Engineering1024-123X1563-51472015-01-01201510.1155/2015/572753572753A Rank-Constrained Matrix Representation for Hypergraph-Based Subspace ClusteringYubao Sun0Zhi Li1Min Wu2Jiangsu Collaborative Innovation Center on Atmospheric Environment and Equipment Technology, B-DAT Lab, School of Information & Control, Nanjing University of Information Science and Technology, Nanjing 210014, ChinaJiangsu Collaborative Innovation Center on Atmospheric Environment and Equipment Technology, B-DAT Lab, School of Information & Control, Nanjing University of Information Science and Technology, Nanjing 210014, ChinaDepartment of Medical Engineering, Nanjing General Hospital of Nanjing Area Command, Nanjing University School of Medicine, Jinling Hospital, Nanjing 210002, ChinaThis paper presents a novel, rank-constrained matrix representation combined with hypergraph spectral analysis to enable the recovery of the original subspace structures of corrupted data. Real-world data are frequently corrupted with both sparse error and noise. Our matrix decomposition model separates the low-rank, sparse error, and noise components from the data in order to enhance robustness to the corruption. In order to obtain the desired rank representation of the data within a dictionary, our model directly utilizes rank constraints by restricting the upper bound of the rank range. An alternative projection algorithm is proposed to estimate the low-rank representation and separate the sparse error from the data matrix. To further capture the complex relationship between data distributed in multiple subspaces, we use hypergraph to represent the data by encapsulating multiple related samples into one hyperedge. The final clustering result is obtained by spectral decomposition of the hypergraph Laplacian matrix. Validation experiments on the Extended Yale Face Database B, AR, and Hopkins 155 datasets show that the proposed method is a promising tool for subspace clustering.http://dx.doi.org/10.1155/2015/572753
collection DOAJ
language English
format Article
sources DOAJ
author Yubao Sun
Zhi Li
Min Wu
spellingShingle Yubao Sun
Zhi Li
Min Wu
A Rank-Constrained Matrix Representation for Hypergraph-Based Subspace Clustering
Mathematical Problems in Engineering
author_facet Yubao Sun
Zhi Li
Min Wu
author_sort Yubao Sun
title A Rank-Constrained Matrix Representation for Hypergraph-Based Subspace Clustering
title_short A Rank-Constrained Matrix Representation for Hypergraph-Based Subspace Clustering
title_full A Rank-Constrained Matrix Representation for Hypergraph-Based Subspace Clustering
title_fullStr A Rank-Constrained Matrix Representation for Hypergraph-Based Subspace Clustering
title_full_unstemmed A Rank-Constrained Matrix Representation for Hypergraph-Based Subspace Clustering
title_sort rank-constrained matrix representation for hypergraph-based subspace clustering
publisher Hindawi Limited
series Mathematical Problems in Engineering
issn 1024-123X
1563-5147
publishDate 2015-01-01
description This paper presents a novel, rank-constrained matrix representation combined with hypergraph spectral analysis to enable the recovery of the original subspace structures of corrupted data. Real-world data are frequently corrupted with both sparse error and noise. Our matrix decomposition model separates the low-rank, sparse error, and noise components from the data in order to enhance robustness to the corruption. In order to obtain the desired rank representation of the data within a dictionary, our model directly utilizes rank constraints by restricting the upper bound of the rank range. An alternative projection algorithm is proposed to estimate the low-rank representation and separate the sparse error from the data matrix. To further capture the complex relationship between data distributed in multiple subspaces, we use hypergraph to represent the data by encapsulating multiple related samples into one hyperedge. The final clustering result is obtained by spectral decomposition of the hypergraph Laplacian matrix. Validation experiments on the Extended Yale Face Database B, AR, and Hopkins 155 datasets show that the proposed method is a promising tool for subspace clustering.
url http://dx.doi.org/10.1155/2015/572753
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