This paper seeks a synthesis of Bayesian and geostatistical approaches to combining categorical data in the context of remote
sensing classification. By experiment with aerial photographs and Landsat TM data, accuracy of spectral, spatial, and combined
classification results was evaluated. It was confirmed that the incorporation of spatial information in spectral classification
increases accuracy significantly. Secondly, through test with a 5-class and a 3-class classification schemes, it was revealed
that setting a proper semantic framework for classification is fundamental to any endeavors of categorical mapping and the
most important factor affecting accuracy. Lastly, this paper promotes non-parametric methods for both definition of class
membership profiling based on band-specific histograms of image intensities and derivation of spatial probability via indicator
kriging, a non-parametric geostatistical technique.
Key Words Bayesian - remote sensing image - visual and digital processing
CLC Number TP751.2