assification
Maximum
) for stand
for LVQ in
S with the
ented, the
le training
tability of
rthermore,
sults with
their very
iven in ta-
Yosaicking
jtting line
us
IS
yrtant to
to verify
cess was
e practi-
ossibility
he prob-
but also
periment
because
collecting the necessary new experience is very time consum-
ing. Furthermore, we doubt that the results will be signifi-
cantly better simply because some hidden problems with the
new classifier will be overlooked easily.
As to the mosaicking, in general we would prefer to have
a separate training set for each separate satellite image. In
our case, the applied approach was the only possibility of
composing a classification mosaic due to unsufficient ground
truth in the Eastern and Western scene. The results of the
overlaping area proved the approach to be successful.
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