4.7 Article

Tensor Rank Preserving Discriminant Analysis for Facial Recognition

Journal

IEEE TRANSACTIONS ON IMAGE PROCESSING
Volume 27, Issue 1, Pages 325-334

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TIP.2017.2762588

Keywords

Tensor representation; rank preserving; face recognition; discriminant analysis

Funding

  1. National Natural Science Foundation of China [61562053, 61572486, 61432014, 61772402, 61772455, 61402458]
  2. Yunnan Natural Science Funds [2016FB105]
  3. Guangdong Natural Science Funds [2014A030310252]
  4. Yunnan University [WX069051]
  5. National Key Research and Development Program of China [2016QY01W0200]
  6. National High-Level Talents Special Support Program of China [CS31117200001]
  7. Project of Innovative Research Team of Yunnan province

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Facial recognition, one of the basic topics in computer vision and pattern recognition, has received substantial attention in recent years. However, for those traditional facial recognition algorithms, the facial images are reshaped to a long vector, thereby losing part of the original spatial constraints of each pixel. In this paper, a new tensor-based feature extraction algorithm termed tensor rank preserving discriminant analysis (TRPDA) for facial image recognition is proposed; the proposed method involves two stages: in the first stage, the low-dimensional tensor subspace of the original input tensor samples was obtained; in the second stage, discriminative locality alignment was utilized to obtain the ultimate vector feature representation for subsequent facial recognition. On the one hand, the proposed TRPDA algorithm fully utilizes the natural structure of the input samples, and it applies an optimization criterion that can directly handle the tensor spectral analysis problem, thereby decreasing the computation cost compared those traditional tensor-based feature selection algorithms. On the other hand, the proposed TRPDA algorithm extracts feature by finding a tensor subspace that preserves most of the rank order information of the intra-class input samples. Experiments on the three facial databases are performed here to determine the effectiveness of the proposed TRPDA algorithm.

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