Multiple classifier for concatenate-designed neural network

Research output: Contribution to journalArticlepeer-review

20 Citations (Scopus)

Abstract

This article introduces a multiple classifier method to improve the performance of concatenate-designed neural networks, such as ResNet and DenseNet, with the purpose of alleviating the pressure on the final classifier. We give the design of the classifiers, which collects the features produced between the network sets, and present the constituent layers and the activation function for the classifiers, to calculate the classification score of each classifier. We use the L2(ex) normalization method to obtain the classifier score instead of the Softmax normalization. We also determine the conditions that can enhance convergence. As a result, the proposed classifiers are able to improve the accuracy in the experimental cases significantly and show that the method not only has better performance than the original models, but also produces faster convergence. Moreover, our classifiers are general and can be applied to all classification related concatenate-designed network models.

Original languageEnglish
Pages (from-to)1359-1372
Number of pages14
JournalNeural Computing and Applications
Volume34
Issue number2
DOIs
Publication statusPublished - Jan 2022

Keywords

  • Concatenate-designed neural network
  • Convergence enhancement
  • L2 normalization
  • Multiple classifier
  • Softplus

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