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ARTMAP Neural Network Classification of Land Use Change
Published by the American Society of Agricultural and Biological Engineers, St. Joseph, Michigan www.asabe.org
Citation: Pp. 22-28 in Proceedings of the World Congress of Computers in Agriculture and Natural Resources (13-15, March 2002, Iguacu Falls, Brazil) 701P0301.(doi:10.13031/2013.8307)
Authors: B.M. Shock, G.A. Carpenter, S. Gopal, and C.E. Woodcock
Keywords: ARTMAP, Neural network, Landsat TM, Land use change
The ability to detect and monitor changes in land use is essential for assessment of
the sustainability of development. In the next decade, NASA will gather
high-resolution multi-spectral and multi-temporal data, which could be used for
detecting and monitoring long-term changes. Existing methods are insufficient for
detecting subtle long-term changes from high-dimensional data. This project
employs neural network architectures as alternatives to conventional systems for
classifying changes in the status of agricultural lands from a sequence of satellite
images.
Landsat TM imagery of the Nile River delta provides a testbed for these land use
change classification methods. A sequence of ten images was taken, at various times
of year, from 1984 to 1993. Field data were collected during the summer of 1993 at
88 sites in the Nile Delta and surrounding desert areas. Ground truth data for 231
additional sites were determined by expert site assessment at the Boston University
Center for Remote Sensing. The field observations are grouped into classes
including urban, reduced productivity agriculture, agriculture in delta, desert/coast
reclamation, wetland reclamation, and agriculture in desert/coast. Reclamation
classes represent land use changes. A particular challenge posed by this database is
the unequal representation of various land use categories: urban and agriculture in
delta pixels comprise the vast majority of the ground truth data available in the
database.
A new, two-step training data selection method was introduced to enable unbiased
training of neural network systems on sites with unequal numbers of pixels. Data
were successfully classified by using multi-date feature vectors containing data from
all of the available satellite images as inputs to the neural network system.
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