POTENTIAL OF HYPERSPECTRAL DATA FOR THE CLASSIFICA TION OF VITD SOIL CLASSES

  • Kim Sun-Hwa (Department of Oeoinformatic Engineering, Inha University) ;
  • Ma Jung-Rim (Department of Oeoinformatic Engineering, Inha University) ;
  • Lee Kyu-Sung (Department of Oeoinformatic Engineering, Inha University) ;
  • Eo Yang-Dam (Agency for Defense Development P. O.) ;
  • Lee Yong-Woong (Agency for Defense Development P. O.)
  • Published : 2005.10.01

Abstract

Hyperspectral image data have great potential to depict more detailed information on biophysical characteristics of surface materials, which are not usually available with multispectral data. This study aims to test the potential of hyperspectral data for classifying five soil classes defined by the vector product interim terrain data (VITD). In this study, we try to classify surface materials of bare soil over the study area in Korea using both hyperspectral and multispectral image data. Training and test samples for classification are selected with using VITD vector map. The spectral angle mapper (SAM) method is applied to the EO-I Hyperion data and Landsat ETM+ data, that has been radiometrically corrected and geo-rectified. Higher classification accuracy is obtained with the hyperspectral data for classifying five soil classes of gravel, evaporites, inorganic silt and sand.

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