Spectral Classification of Man-made Materials in Urban Area Using Hyperspectral Data

  • Kim S. H. (Inha University, Department of Geoinformatic Engineering) ;
  • Kook M. J. (Inha University, Department of Geoinformatic Engineering) ;
  • Lee K. S. (Inha University, Department of Geoinformatic Engineering)
  • Published : 2004.10.01

Abstract

Hyperspectral data has a great advantage to classify various surface materials that are spectrally similar. In this study, we attempted to classify man-made materials in urban area using Hyperion data. Hyperion imagery of Seoul was initially processed to minimize radiometric distortions caused by sensor and atmosphere. Using color aerial photographs. we defined seven man-made surfaces (concrete, asphalt road. railroad, buildings, roof, soil, shadow) for the classification in Seoul. The hyperspectral data showed the potential to identify those manmade materials that were difficult to be classified by multispectral data. However. the classification of road and buildings was not quite satisfactory due to the relatively low spatial resolution of Hyperion image. Further, the low radiometric quality of Hyperion sensor was another limitation for the application in urban area.

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