International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Vol XXXV, Part B2. Istanbul 2004
effect of matching and large remaining blunders, which
cannot be avoided. That's why in the distorted case there was
deterioration, while in the automated DEMSs, there was no
noticeable difference.
The error distribution plots show a noticeable improvement
after applying the algorithm. The measure of this effect is
kurtosis, which has been improved hugely.
6. CONCLUSIONS AND FURTHER
RESEARCH.
From the arithmetic point of view, the main problem of the
automatically collected DEMs is the dispersion from the real
surface due to the matching and sampling of the ground.
It is quite obvious that the method can calculate corrections
in DEMs and improve their accuracy (RMS) by 37% (real
data case), and their precision (SD, MAD) by 40%
approximately.
The most interesting fact is that the algorithm was able to
improve MAD, SD and RMS, ending in the same values in
any case, irrespectively of the magnitude of the initial error.
This fact confirms the initial statement that the method does
not need iterations to work.
MAD has been reduced to the theoretical height accuracy of a
single measurement. This is particularly promising especially
if one considers that the comparison enclose a necessary step
of interpolation, which deteriorates the results (Al-Tahir et
al., 1992; Zhilin 1993b).
What's makes the method even more attractive is the fact that
it can be used in a number of cases such as:
correction and creation of a more accurate DEM
checking of automatically created DEMs
updating of previously existing DEMs, using recent aerial
photographs
change detection based on activities concerning DEM
change, such as road creation, quarry development,
urbanisation, etc.
Extensive tests on a number of different aerial or close range
photographs, with different scale, created by different digital
stereoplotters, hugely distorted DEMs etc, are currently
running with promising results.
Since the algorithm can effectively correct the DEM, these
corrections can be used for checking. An efficient way to
investigate the quality of the created DEMs is also under
investigation.
ACKNOWLEDGEMENTS
Financial support from State Scholarship Foundation for a
Ph.D. research for the first author, must be acknowledged.
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