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Subspace structural constraint-based discriminative feature learning via nonnegative low rank representation

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  • Ao Li
  • Xin Liu
  • Yanbing Wang
  • Deyun Chen
  • Kezheng Lin
  • Guanglu Sun
  • Hailong Jiang

Abstract

Feature subspace learning plays a significant role in pattern recognition, and many efforts have been made to generate increasingly discriminative learning models. Recently, several discriminative feature learning methods based on a representation model have been proposed, which have not only attracted considerable attention but also achieved success in practical applications. Nevertheless, these methods for constructing the learning model simply depend on the class labels of the training instances and fail to consider the essential subspace structural information hidden in them. In this paper, we propose a robust feature subspace learning approach based on a low-rank representation. In our approach, the low-rank representation coefficients are considered as weights to construct the constraint item for feature learning, which can introduce a subspace structural similarity constraint in the proposed learning model for facilitating data adaptation and robustness. Moreover, by placing the subspace learning and low-rank representation into a unified framework, they can benefit each other during the iteration process to realize an overall optimum. To achieve extra discrimination, linear regression is also incorporated into our model to enforce the projection features around and close to their label-based centers. Furthermore, an iterative numerical scheme is designed to solve our proposed objective function and ensure convergence. Extensive experimental results obtained using several public image datasets demonstrate the advantages and effectiveness of our novel approach compared with those of the existing methods.

Suggested Citation

  • Ao Li & Xin Liu & Yanbing Wang & Deyun Chen & Kezheng Lin & Guanglu Sun & Hailong Jiang, 2019. "Subspace structural constraint-based discriminative feature learning via nonnegative low rank representation," PLOS ONE, Public Library of Science, vol. 14(5), pages 1-19, May.
  • Handle: RePEc:plo:pone00:0215450
    DOI: 10.1371/journal.pone.0215450
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    References listed on IDEAS

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    1. Bineng Zhong & Jun Zhang & Pengfei Wang & Jixiang Du & Duansheng Chen, 2016. "Jointly Feature Learning and Selection for Robust Tracking via a Gating Mechanism," PLOS ONE, Public Library of Science, vol. 11(8), pages 1-15, August.
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