Feature Extraction and Multisource Image Classification

  • Amarsaikhan, D. (Center for Northeast Asian Studies, Tohoku University) ;
  • Sato, M. (Center for Northeast Asian Studies, Tohoku University)
  • Published : 2003.11.03

Abstract

The aim of this study is to assess the integrated use of different features extracted from spaceborne interferometric synthetic aperture radar (InSAR) data and optical data for land cover classification. Special attention is given to the discriminatory characteristics of the features derived from the multisource data sets. For the evaluation of the features , the statistical maximum likelihood decision rule and neural network classification are used and the results are compared. The performance of each method was evaluated by measuring the overall accuracy. In all cases, the performance of the first method was better than the performance of the latter one. Overall, the research indicated that multisource data sets containing different information about backscattering and reflecting properties of the selected classes of objects can significantly improve the classification of land cover types.

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