a
d
d
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I as
Inclusion of multispectral data would also help reduce the
dependency on the presence of straight edges to identify an
object as a building (rather than a tree). This way, we would
also be able to detect other shapes of new buildings such as the
oval building in the northeast side of this test dataset.
1.6 Conclusion
IMAGINE Objective appears to provide a robust capability for
detecting specific types of change between point cloud data
from two different dates, even in the absence of other ancillary
information such as co-registered and contemporaneous
multispectral data or even pre-classification of the height points.
Additionally, the approach outlined requires no training of the
classifier. The user does not need to specify locations to serve
as examples of the change of interest. Traditionally, having to
provide training samples slows down the analysis process and
results in approaches which can't easily be transported between
data sets. Instead the user might have to make minor
adjustments to some of the parameters in the IMAGINE
Objective project to better reflect the local conditions, but that
is all.
International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Volume XXXIX-B7, 2012
XXII ISPRS Congress, 25 August — 01 September 2012, Melbourne, Australia