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Articles

Robust principal component analysis with projection learning for image classification

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Pages 704-720 | Received 16 Jul 2018, Accepted 24 Apr 2020, Published online: 23 May 2020
 

ABSTRACT

In this paper, we propose a robust subspace learning method, based on RPCA, named Robust Principal Component Analysis with Projection Learning (RPCAPL), which further improves the performance of feature extraction by projecting data samples into a suitable subspace. For Subspace Learning (SL) methods in clustering and classification tasks, it is also critical to construct an appropriate graph for discovering the intrinsic structure of the data. For this reason, we add a graph Laplacian matrix to the RPCAPL model for preserving the local geometric relationships between data samples and name the improved model as RPCAGPL, which takes all samples as nodes in the graph and treats affinity between pairs of connected samples as weighted edges. The RPCAGPL can not only globally capture the low-rank subspace structure of the data in the original space, but also locally preserve the neighbor relationship between the data samples.

Disclosure statement

No potential conflict of interest was reported by the author(s).

Notes

Additional information

Funding

This work was supported by the Natural Science Foundation of Guangdong Province [grant number 2015A030313544]; the Shenzhen Research Council [grant number JCYJ20160226201453085, JCYJ20160406161948211, JCYJ20170413104556946, JCYJ20170815113552036]; the Guangdong Science and Technology Collaborative Innovation Center for Judicial Administration [grant number 2019B110210002]; the National Natural Science Foundation of China [grant number 61502119,61672183].

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