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from vector ones with vector ones, and visual searching of
the gross errors (figure 5).
Figure 5: Computed contour lines (in black) over original
vector contour lines (in gray). On the left where two sets
of contours doesn’t fit, it is remarkable gross error.
4.2.2 Implementation the statistical quality control:
With visual tests some gross errors were eliminated.
Further the heights of reference geodetic points
(trigonometric and fundamental) were tested with
simultaneous comparing with DEM 100 and 25. Points
with gross errors were eliminated.
We wanted to confirm the elimination of DEM 25 as input
data set by statistical comparison with other DEM,
generated from contour lines. The results show that the
RMS errors are almost identical for all three tested
regions.
For statistical elimination of attribute gross errors of the
contour lines many methods were used. Some of the
effective methods use parameters from comparative
datasets. We overlaid DEM generated from contour lines
with DEM 100 or simultaneous compared both DEMs with
referenced geodetic points. We used also “robust
estimation” method based on linear prediction
interpolation method (Pfeifer). We did many statistical
tests for improvement the datasets.
The result of data tests were improved datasets and
parameters of RMS error of each thematic layer with
regard to reference geodetic points. Table 1 shows RMS
errors for DEM 100 and (interpolated) contour lines for
different morphological classes as first parameter and
average deviation of the reference geodetic points from
DEM 100 and contour lines as second parameter. We can
see that in all cases reference geodetic points are in
average above DEM and contour lines. The reason is that
geodetic points are mostly on the peaks, where
interpolated data is always lower because of the missing
characteristic points for interpolation.
Morph, classes
DEM 100
Contour lines
Flat surface (1)
Hills (1)
Mountainous (2)
Karst region (3)
2.0 m / 0.7 m
10.0 m / 8.5 m
30.0 m /12.0 m
7.0 m / 4.8 m
1.5 m / 0.3 m
5.0 m / 2.5 m
10-40 m /3.0 m
4.0 m / 2.0 m
Table 1: Morphological classes from three test regions
(1-3) with parameters: RMS error / average deviation from
the reference points.
5. ACQUISITION OF ADDITIONAL DATA FOR
INTERPOLATION
With initial quality control we produced a good database
including parameters for interpolation:
DEM 100,
contour lines,
reference trigonometrical and fundamental
geodetic points.
The next step is to produce characteristic lines and points.
5.1 Extraction of height attributes for streamlines
From hydrographic elements - lines of streams - we tried
to acquire elevation attributes by interpolation and
extrapolation of lines of streams between contour lines
(Heitzinger and Kager, 1998). The results were generally
not satisfying (figure 6). The reason is that contour lines,
digitized from topographic maps were broken on the
crossings with other topographical features, in our case
with hydrographic streams.
Figure 6: Problems in interpolation with hydrographic
elements (left - the biggest mistakes are marked with