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2. Decision-makers at different decision-levels can
make sensible consistent decisions on forest area
change, because overall the two images responded
quite similar to the LCM parameter spatial size (with
restriction of conclusion 3).
Decision-makers at different decision-levels need
temporal maps that are produced with identical
parameter settings to avoid comparing apples and
oranges, because the LCM parameter spatial size
proved not to be consistent in the arrangement of
forest cover.
m
In addition, regarding the sensitivity estimators it can be
concluded that the composition and configuration measures as
used at both the class and landscape level are very useful for
remote sensing based classifications in addition to conventional
KHAT statistics and cover values (as measure by PLAND). In
this respect, the indices LSI and KHAT seem to be a useful
combination to indicate the levels of disaggregation at which
classification results differ significantly. The indices NP and
KHAT seem to be a useful combination to indicate which
classes are causing significant differences between
classification results. The indices LSI and PLAND, or NP and
PLAND (a configuration and a composition measure) seem to
be a useful combination to indicate suitable combinations of
parameter settings for the LCM parameter size to compare
temporally different images. Moreover, the indices SIDI and
PLAND (both composition measures) seem to be a useful
combination to indicate underlying change processes in forest
areas. SIDI provided the area range (35-100 ha) at which a
striking diversity change occurred, whereas PLAND indicated
the vegetation class most likely involved (shrub vegetation).
Combining both measures, it can be concluded that shrub,
which is an intermediar vegetation in the transition from forest
to agriculture and vice versa, contributed significantly to the
change in SIDI and thus plays an important role in the
underlying change process. This means that between 1990 and
1996 forest is depleted not due to logging practices, but due to
agricultural practices. This type of information can be very
useful for decision-makers at local, provincial and national
level, who are urged to preserve rainforest for future
generations.
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ACKNOWLEDGEMENTS
SRON, Wageningen University and ITC (The Netherlands) are
acknowledged for supporting this research.