Although WV-3 stereo-extracted DSMs represent
state-of-the-art products for satellite-based digital
surface modelling, through our research we have
concluded that vertical accuracy and representation of
individual olive trees still significantly deviates from
our reference VHR model created with UAV
photogrammetry. However, if we consider that our
both test sites covered very small areas and that
calculated RMSE and MAE values are relatively low
(in respect to spatial resolution of DSM
and initial
WV-3 stereo imagery), we can conclude that vertical
accuracy of produced DSM
is more than
satisfactory.
As demonstrated by RMSE and MAE values
vertical accuracy was especially good over larger test
area (TA2), covered by dense, unattended olive trees.
This demonstrated that WV-3 stereo imagery has
great potential for application in creation of DSMs
over large scale forested areas, that would be (due to
high costs and terrain inaccessibility) hard to cover
with field geospatial techniques (e.g. LiDAR or UAV
photogrammetry).
ACKNOWLEDGEMENTS
This research was performed within the project UIP-
2017-05-2694 financially supported by the Croatian
Science Foundation.
Authors would like to thank DigitalGlobe
Foundation (Maxar Technologies), Hexagon
Geospatial and SPH Engineering for provided
necessary VHR Worldview satellite imagery and
software (UgCS, Erdas Imagine 2018.).
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