Improving Fuzzy Clustering Algorithm for Probability Density Functions and Applying in Image Recognition

Master'sPham Toan DinhVovan Tai

Faculty of Engineering

Research output: Article

researchs.abstract

This study introduces a measure called coefficient of within-cluster proximity (CWP) to evaluate the similarity of probability density functions (DFs) within clusters. After surveying the under and upper, and the computational problems of CWP, a fuzzy clustering algorithm for DFs is proposed. This algorithm can determine the suitable number of clusters and find the probability for each DF to belong to specific cluster. The convergence of the algorithm is considered in theory and illustrated by the numerical examples. The algorithm is applied to image recognition. The results show strong advantages of it in comparison to other algorithms. They also indicate the potential of the proposed approach in application to the data of different types.

Overview
Type
Article
Publication year
Oct 2020
Original language
English
Published Journal
Model Assisted Statistics and Applications
Volume No
15 (3)
Classification
Scopus Indexed
ISSN index
1574-1699
Page
1-28
Quartiles
Q1

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