Li, Bo, Liu, Risheng, Cao, Jungjie, Zhang, Jie, Lai, Yukun and Liu, Xiuping
2017.
Online low-rank representation learning for joint multi-subspace recovery and clustering.
IEEE Transactions on Image Processing
27
(1)
, pp. 335-348.
10.1109/TIP.2017.2760510
|
Abstract
Benefiting from global rank constraints, the lowrank
representation (LRR) method has been shown to be an
effective solution to subspace learning. However, the global
mechanism also means that the LRR model is not suitable for
handling large-scale data or dynamic data. For large-scale data,
the LRR method suffers from high time complexity, and for
dynamic data, it has to recompute a complex rank minimization
for the entire data set whenever new samples are dynamically
added, making it prohibitively expensive. Existing attempts to
online LRR either take a stochastic approach or build the
representation purely based on a small sample set and treat
new input as out-of-sample data. The former often requires
multiple runs for good performance and thus takes longer time
to run, and the latter formulates online LRR as an out-ofsample
classification problem and is less robust to noise. In
this paper, a novel online low-rank representation subspace
learning method is proposed for both large-scale and dynamic
data. The proposed algorithm is composed of two stages: static
learning and dynamic updating. In the first stage, the subspace
structure is learned from a small number of data samples. In
the second stage, the intrinsic principal components of the entire
data set are computed incrementally by utilizing the learned
subspace structure, and the low-rank representation matrix can
also be incrementally solved by an efficient online singular value
decomposition (SVD) algorithm. The time complexity is reduced
dramatically for large-scale data, and repeated computation is
avoided for dynamic problems. We further perform theoretical
analysis comparing the proposed online algorithm with the batch
LRR method. Finally, experimental results on typical tasks
of subspace recovery and subspace clustering show that the
proposed algorithm performs comparably or better than batch
methods including the batch LRR, and significantly outperforms
state-of-the-art online methods.
Item Type: |
Article
|
Date Type: |
Publication |
Status: |
Published |
Schools: |
Computer Science & Informatics |
Publisher: |
Institute of Electrical and Electronics Engineers |
ISSN: |
1057-7149 |
Date of First Compliant Deposit: |
2 October 2017 |
Date of Acceptance: |
25 September 2017 |
Last Modified: |
31 Jan 2018 16:29 |
URI: |
http://orca.cf.ac.uk/id/eprint/105089 |
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