THE MODEL OF DATA PRESENTATI ON WITH FUZZY PORTRAITS FOR PATTERN RECOGNITION

Authors

  • Aleksandra Maksimova

DOI:

https://doi.org/10.47839/ijc.11.1.546

Keywords:

Pattern recognition, fuzzy logic, clustering, data mining, fuzzy classifier.

Abstract

This paper deals with a data presentation model based on fuzzy portraits. The fuzzy portraits are formed by integral characteristics of pattern classes. It is the basis for fuzzy classifier construction. It is determined that further division of some classes of images into clusters increases the quality of pattern recognition algorithm. The main idea of fuzzy clustering for fuzzy portraits creating and problem of adequate fuzzy partition choice is considered. The paper provides the stages of fuzzy production knowledge base construction on the basis of fuzzy portraits. The local validity measure for fuzzy portrait is defined. The problem of identification in chemical and food industries is considered as an application of this approach.

References

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Published

2014-08-01

How to Cite

Maksimova, A. (2014). THE MODEL OF DATA PRESENTATI ON WITH FUZZY PORTRAITS FOR PATTERN RECOGNITION. International Journal of Computing, 11(1), 17-24. https://doi.org/10.47839/ijc.11.1.546

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Section

Articles