Spatial AdaBoost: examples used in 
   ``Supervised Image Classification by Contextual AdaBoost
     Based on Posteriors in Neighborhoods" 
 by R. Nishii and S. Eguchi (2005) 
 IEEE Transactions on Geoscience and Remote Sensing, 43(11), 2547-2554.
 
 Matlab source code and the simulated data sets for supervised image classification
 are available from this point. Download the following six files.
 
  Multispectral images with variance = 1 
 
  Multispectral images with variance = 4 
 
  Subroutine for tuning the coefficient 
 
  Subroutine for deriving neighborhood information 
 
  Spatial AdaBoost soruce file for DataGen20.mat 
 
  Spatial AdaBoost soruce file for DataGen23.mat 
Put six files in the same directory, and execute Matlab.
Then read the source file BoostLogPost20.m or BoostLogPost23.m.
 
 
 
 
  Color figures 
 for 
   ``A Markov random field-based approach to decision level fusion 
     for remote sensing image classification,"
 by R. Nishii (2003) 
 in IEEE Transactions on Geoscience and Remote Sensing, vol. 41 (10),
pp. 2316 - 2319.
 
  Color figures  
         for 
          ``Contextual image fusion based on Markov random fields 
           and its applications to geo-spatial image enhancement"
 by R. Nishii and Y. Morisaki (2002) 
  in Advances in Statistics, Combinatorics and Related Areas, 2002
 
Gulati et al. (Eds.), World Scientific, New Jersey, pp. 167 - 179.
 
 
  C-programs for Accuracy Assessment of Error Matrices 
This program is used in the paper 
 ``Accuracy and inaccuracy assessments in land-cover classification", 
by R. Nishii and S. Tanaka (1999) 
in IEEE Transactions on Geoscience and Remote Sensing,
vol. 37(1), pp. 491 - 498.
