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International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Vol XXXV, Part Bl. Istanbul 2004
The DSM includes several points not located on the bare
ground like the reference DEM. This is indicated also by the
negative bias, which has the sign of the correction (reference
height — matched height), so a negative sign is indicating a
location of the matched points on top of the vegetation and
buildings. A filtering of the DSM to a DEM by RASCOR
removes between 35% and 55% of the points depending upon
the type of filtering. The DEM-results in table 2 are based on
45% removed points. Also the frequency distribution of the
discrepancies demonstrates the reason of the chosen data
handling (figures 11 and 12).
not very probable - the orientation of the HRS-scene has been
based on trigonometric points from the survey administration,
which are also base for the topographic maps. Another reason is
the reduced accuracy of matching inclined objects, which are
Ty
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figure 14.1
matched DSM
test area Taching
Figure 10: test area Gars,
left topographic map right: forest layer
figure 14.2
DSM after filtering
with RASCOR to a
DEM
figure 11:
frequency
distribution
of AZ before
filtering: left
open areas,
right forest
figure 12:
frequency
distribution
of AZ after
filtering: left
open areas,
right forest
The frequency distribution of the discrepancies (figures 11 and
12) also do show the influence of remaining points on top of the
vegetation in the forest area. Also RASCOR is not able to
identify points on top of the forest if all neighboured points are
elevated. Only if at least some points are located on the bare
ground, the points not belonging to the bare ground can be
identified and removed. Nevertheless, also for the forest there is
a clear advantage of the filtering.
Figure 13: accuracy
depending upon
tangent of slope
test area Gars
slope 2
vertical: rmse AZ
There is a clear dependency of the accuracy from the terrain
inclination as visible in figure 13. It shows the situation of all
points after filtering by RASCOR. The dependency upon the
terrain inclination can be caused by errors in the horizontal
location between the reference and the HRS-data. This reason is
figure 14.3
reference DEM
The filtering of the DSM to a DEM is very important — not only
in the forest, but also in the open areas. The open areas do
include settlements and several single trees and bushes, so also
here a higher percentage of matched points are not located on
the ground. This cannot be seen only with the standard
deviation, but also at the bias. The remaining systematic height
difference of -1.3m for the open areas after filtering with
program RASCOR, is small but realistic. The filtering of the
DSM to a DEM requires height differences larger than the
noise. Small objects like bushes cannot be identified as not
belonging to the bare ground if they are below the root mean
discrepancies. On the other hand there are several points located
in the forest which are on top of closed areas where the ground
cannot be seen.
Also a visual comparison of the original DSM with the filtered
DEM and the reference DEM shows the justification of the
filtering. The morphologic structure of the filtered DEM is quite
more similar to the reference DEM like the matched DSM (see
figure 14).
5.2 Test area Vilsbiburg
In the larger test area Vilsbiburg the reference DEM has a
spacing of 50m and only a limited accuracy of 2m, but this
should be sufficient. Only 13.7% is covered by forest and the
forest areas are small.
The a little larger rmse for the test area Vilsbiburg can be
explained by the lower accuracy of the reference together with
the interpolation over 50m. The smaller bias of the forest areas
after filtering has been caused by the smaller size of the
individual forest areas.