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Classification of TM image Using a Competitive Learning Neural Network
Jee-cheng Wu
jewu@magnus.acs.ohio-state.edu
Department of Civil and Environmental Engineering and Geodetic Science
The Ohio State University, U.S.A.
Committee VII, WG/1
Abstract
Recent progress in Artificial Neural Networks (ANNs) research has demonstrated the
usefulness of ANNs in variety of applications. In remote sensing community, a
supervised learning network paradigm, Back Propagation (BP), has been successful
applied to land-cover classification of satellite images. Two of the major problems
associated with BP network for land-cover classification are that its convergence time is
usually very long, and it does need a suitable training data set. This paper describes
applying an unsupervised learning network paradigm, Competitive Learning (CL), to
land-cover classification of TM image on a Winner-Take-All (WTA) basis. The final
results showed that CL of WTA still needs to improvement for satisfying the
requirements of land-cover classification.
1. Introduction
The renewed interest in Artificial
Neural Networks (ANNs) is mainly due
to the development of multi-layer
learning algorithms ([17]), which enable
the ANNS to learn using a more complex
Structure to solve the problems in the
book Perceptrons ([16]). Another
important reason is that more internal
dynamics of the network is revealed
through insights into the fundamental
laws governing the convergence of the
group behavior of interacting physical
elements. Parallel ANNs of the type
described by Hopfield, Kohonen, and
Grossberg have been shown to be well
775
suited to the task of pattern recognition
and classification ([4] [14]). Generally it
involves setting up a network
architecture, and then training the
network through a set of training data.
The result network is then found to be
capable of classify subsequent testing
data in terms of a set of training data.
In remote sensing community, a
number of researchers have
demonstrated the use of ANNs
techniques. Back Propagation (BP), a
supervised learning paradigm of ANNs,
has been shown to be useful in
classification of satellite images. For
examples, a number of researchers ([3]
International Archives of Photogrammetry and Remote Sensing. Vol. XXXI, Part B7. Vienna 1996