1. Structured classifier-based dictionary pair learning for pattern classification.
- Author
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Cai, Yu-Hong, Wu, Xiao-Jun, Chen, Zhe, and Xu, Tian-Yang
- Subjects
- *
PATTERN recognition systems , *CLASSIFICATION , *BASE pairs - Abstract
The supervised dictionary learning methods have made considerable achievements in the field of pattern recognition. In order to make the learned coefficients have intraclass similarity and interclass incoherence, many dictionary learning methods have been proposed using different structured constraints. However, these constraints often have the disadvantages of complexity, time-consuming, and poor interpretability. More importantly, the existing dictionary learning often ignores the inherent structure of the label matrix. In this paper, we propose a dictionary pair learning based on the structured classifier and perform classifier learning and structured coefficients learning simultaneously. Our main idea is to use the extended label matrix and the invertible constraints on the classification transformation matrix to utilize the structure of the label matrix to impose structured constraints on coefficients. Moreover, the l 21 -norm is added to force the analysis dictionary to focus on more important features. Experimental results on multiple databases prove that our proposed method has better classification performance than several state-of-the-art dictionary learning methods. [ABSTRACT FROM AUTHOR]
- Published
- 2022
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