A Preferential Interval-Valued Fuzzy C-Means Algorithm for Remotely Sensed Imagery Classification

Volume: 21, Issue: 7, Pages: 2212 - 2222
Published: Jul 26, 2019
Abstract
Remotely sensed imagery classification have a large amount of uncertainty related to the intraclass heterogeneity and the interclass ambiguity of objects. Fuzzy set theory can address the uncertainty effectively, while interval-valued model can improve the separability of samples. Therefore, we propose a novel interval-valued fuzzy c-means algorithm, which integrates the interval-valued model and preferential adaptive method. It preferentially...
Paper Details
Title
A Preferential Interval-Valued Fuzzy C-Means Algorithm for Remotely Sensed Imagery Classification
Published Date
Jul 26, 2019
Volume
21
Issue
7
Pages
2212 - 2222
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