Shanghai urban wetland extraction and classification with remote sensed imageries based on a decision tree model

Ying Huang, Yun Xuan Zhou, Wen Wu, Run Yuan Kuang, Xing Li

Research output: Contribution to journalArticlepeer-review

8 Scopus citations

Abstract

Urban wetland is an important ecological basis of Shanghai and it is characterized with complex properties. In this study, a decision tree based classification method is used to extract and classify the urban wetland information in Shanghai area. The method uses multispectral bands of Landsat-5 TM image as the main variables, and a series of derivative data as the auxiliary inputs, derived from the Landsat-5 TM images by using respectively K-T transformation, IHS transformation, principal component analysis and textural analysis. With these variables in association with the spatial characteristics of the urban wetland in Shanghai, the method builds a decision tree model for urban wetland extraction and classification. The application of the model shows that the total area of the urban wetland in Shanghai is about 1277.40 km2. The rice cultivated area occupies the highest portion up to 65.30% of the total wetland, and the next the area of rivers, ponds, lakes and reed fields. The decision tree model based method has a relative high precision in the urban wetland extraction and classification. The classification result indicates that the overall accuracy reaches 89.05%, more than 10% increase when compared with the maximum likelihood algorithm.

Original languageEnglish
Pages (from-to)1156-1162
Number of pages7
JournalJilin Daxue Xuebao (Diqiu Kexue Ban)/Journal of Jilin University (Earth Science Edition)
Volume39
Issue number6
StatePublished - Nov 2009

Keywords

  • Decision tree model
  • IHS transformation
  • K-T transformation
  • Remote sensing
  • Texture analysis
  • Urban wetland

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