Multi-band image classification using membership functions

Research output: Chapter in Book/Report/Conference proceedingConference contributionpeer-review

Abstract

We propose a method for remotely sensed multi-band image classification using membership function. Our aim is to classify the image as classes with use-defined number from a prior knowledge of remote sensing, and every point is finally labeled as the class with the highest value of membership function. This classification is reduced to a minimization problem of a functional whose arguments are membership functions. The minimization problem is solved via iteration with the initial value from the classification result of fuzzy C-means. Our method refines the result of fuzzy C-means and produces a smoother and less cluttered classification. Two novelties compared with traditional membership methods are in this paper. First, unconstrained functional is used. Constraints are added in the literature since membership functions need to be positive and with sum equal to one, which is avoided here by variable substitution. Second, intermediate variables are introduced so that a big complicated functional is separated as three relatively easy functionals that can be solved with fast speed. The experimental results from Google Map and Quickbird images show the validity of this approach.

Original languageEnglish
Title of host publication32nd Asian Conference on Remote Sensing 2011, ACRS 2011
Pages1615-1620
Number of pages6
StatePublished - 2011
Event32nd Asian Conference on Remote Sensing 2011, ACRS 2011 - Tapei, Taiwan, Province of China
Duration: 3 Oct 20117 Oct 2011

Publication series

Name32nd Asian Conference on Remote Sensing 2011, ACRS 2011
Volume3

Conference

Conference32nd Asian Conference on Remote Sensing 2011, ACRS 2011
Country/TerritoryTaiwan, Province of China
CityTapei
Period3/10/117/10/11

Keywords

  • Classification
  • Functional minimization
  • Membership function

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