In this article the effectiveness of some recently developed genetic algori
thm-based pattern classifiers was investigated in the domain of satellite i
magery which usually have complex and overlapping class boundaries. Landsat
data, SPOT image and IRS image are considered as input. The superiority of
these classifiers over k-NN rule, Bayes' maximum likelihood classifier and
multilayer perceptron (MLP) for partitioning different landcover types is
established. Results based on producer's accuracy (percentage recognition s
core), user's accuracy and kappa values are provided. Incorporation of the
concept of variable length chromosomes and chromosome discrimination led to
superior performance in terms of automatic evolution of the number of hype
rplanes for modelling the class boundaries, and the convergence time. This
non-parametric classifier requires very little a priori information, unlike
k-NN rule and MLP (where the performance depends heavily on the value of k
and the architecture, respectively), and Bayes' maximum likelihood classif
ier (where assumptions regarding the class distribution functions need to b
e made).