A Classification Technique for Panchromatic Imagery Using Independent Component Analysis Feature Extraction

  • Byoun, Seung-Gun (Dept. of Electronic Engineering, Sogang University) ;
  • Lee, Ho-Yong (Dept. of Electronic Engineering, Sogang University) ;
  • Kim, Min (Dept. of Electronic Engineering, Sogang University) ;
  • Lee, Kwae-Hi (Dept. of Electronic Engineering, Sogang University)
  • Published : 2002.10.01

Abstract

Among effective feature extraction methods from the small-patched image set, independent component analysis (ICA) is recently well known stochastic manner to find informative basis images. The ICA simultaneously learns both basis images and independent components using high order statistic manners, because that information underlying between pixels are sensitive to high-order statistic models. The topographic ICA model is adapted in our experiment. This paper deals with an unsupervised classification strategies using learned ICA basis images. The experimental result by proposed classification technique shows superior performance than classic texture analysis techniques for the panchromatic KOMPSAT imagery.

Keywords