4.6 Article

Low-Rank 2-D Neighborhood Preserving Projection for Enhanced Robust Image Representation

Journal

IEEE TRANSACTIONS ON CYBERNETICS
Volume 49, Issue 5, Pages 1859-1872

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TCYB.2018.2815559

Keywords

2-D neighborhood preserving projection (2DNPP); image representation; low-rank; robust feature extraction

Funding

  1. National Natural Science Foundation of China [61602270, 61732011, 61573248, 61773328, 61672358, 61761130079]
  2. China Post-Doctoral Science Foundation [2016M590100, 2017T100645]
  3. Research Grant of the Hong Kong Polytechnic University [G-YBD9]

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2-D neighborhood preserving projection (2DNPP) uses 2-D images as feature input instead of 1-D vectors used by neighborhood preserving projection (NPP). 2DNPP requires less computation time than NPP. However, both NPP and 2DNPP use the L2 norm as a metric, which is sensitive to noise in data. In this paper, we proposed a novel NPP method called low-rank 2DNPP (LR-2DNPP). This method divided the input data into a component part that encoded low-rank features, and an error part that ensured the noise was sparse. Then, a nearest neighbor graph was learned from the clean data using the same procedure as 2DNPP. To ensure that the features learned by LR-2DNPP were optimal for classification, we combined the structurally incoherent learning and low-rank learning with NPP to form a unified model called discriminative LR-2DNPP (DLR-2DNPP). By encoding the structural incoherence of the learned clean data, DLR-2DNPP could enhance the discriminative ability for feature extraction. Theoretical analyses on the convergence and computational complexity of LR-2DNPP and DLR-2DNPP were presented in details. We used seven public image databases to verify the performance of the proposed methods. The experimental results showed the effectiveness of our methods for robust image representation.

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