4.7 Article

A class-specific mean vector-based weighted competitive and collaborative representation method for classification

期刊

NEURAL NETWORKS
卷 150, 期 -, 页码 12-27

出版社

PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.neunet.2022.02.021

关键词

Representation-based classification; Collaborative representation; Collaborative representation-based classification; Pattern classification

资金

  1. National Natural Science Foundation of China [61976107, 61962010]
  2. Qing Lan Project of Colleges and Universities of Jiangsu Province in 2020
  3. Application Foundation of Sichuan Province [2018JY0386]
  4. Natural Science Foundation of Ningxia of China [2019AAC03122]
  5. Key Science and Research Project of North Minzu University [2019KJ43]
  6. Excellent Young Scientific and Technological Talent of Guizhou Provincial Science and Technology Foundation [[2019]-5670]

向作者/读者索取更多资源

The researchers propose a novel CRC method called CMWCCR, which aims to enhance the discriminant representations among classes for better classification performance. The CMWCCR utilizes competitive, mean vector, and weighted constraints to learn discriminative class-specific representations, and the experimental results show its effectiveness and robustness.
Collaborative representation-based classification (CRC), as a typical kind of linear representation-based classification, has attracted more attention due to the effective and efficient pattern classification performance. However, the existing class-specific representations are not competitively learned from collaborative representation for achieving more informative pattern discrimination among all the classes. With the purpose of enhancing the power of competitive and discriminant representations among all the classes for favorable classification, we propose a novel CRC method called the class-specific mean vector-based weighted competitive and collaborative representation (CMWCCR). The CMWCCR mainly contains three discriminative constraints including the competitive, mean vector and weighted constraints that fully employ the discrimination information in different ways. In the competitive constraint, the representations from any one class and the other classes are adapted for learning competitive representations among all the classes. In the newly designed mean vector constraint, the mean vectors of all the class-specific training samples with the corresponding class-specific representations are taken into account to further enhance the competitive representations. In the devised weighted constraint, the class-specific weights are constrained on the representation coefficients to make the similar classes have more representation contributions to strengthening the discrimination among all the class-specific representations. Thus, these three constraints in the unified CMWCCR model can complement each other for competitively learning the discriminative class-specific representations. To verify the CMWCCR classification performance, the extensive experiments are conducted on twenty-eight data sets in comparisons with the state-of-the-art representation-based classification methods. The experimental results show that the proposed CMWCCR is an effective and robust CRC method with satisfactory performance. (c) 2022 Elsevier Ltd. All rights reserved.

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