offset results for the
1e combined method
strip overlap; offset
d matching over the
n Table 4. Success
types of terrain. In
able. The benefit is
nediately obvious in
from both methods
metric matching de-
itter example, which
ion as described in
' conclusions in the
Y CONTROL
the combined geo-
clouds, is currently
n workflow. For the
1ed along the center
F 1000-5000 pixels.
ed statistics for all
ive report. Based on
rent kind, in parti-
'ameters that enable
of reliable offsets
e overlap as well as
. of patch footprints
which allows for an
are such as Global
? primary tool used
The large number of valid patches provided from the automatic
computation allows for more detailed investigations, e.g. the
evaluation of individual strip overlaps. This is expected to assist
not only in the very QC process but also in the general analysis
of image orientation parameters and aerial triangulation be-
havior. These new possibilities are discussed and illustrated for
the Lansing block in Gehrke et al. (2012).
5. CONCLUSION
This paper proposed and evaluated an automated approach for
Shear Analysis of ADS blocks, based on dense image matching
and combined geometric/radiometric point cloud matching. The
utilization of the radiometric information from the info clouds
was demonstrated to be crucial for the purpose of computing
reliable offsets in-between overlapping ADS image strips for
two reasons: First, the combined approach is more robust and
delivers a larger number of offsets for various types of terrain,
resulting in an approximately even coverage throughout large
blocks. Second and most important, it delivers more reliable
results compared to the solely geometric approach, which is
prone to some errors that cannot be automatically detected.
With the goal of replacing the current manual QC measure-
ments of strip-to-strip offsets it is noteworthy that the automated
approach delivers very similar results with similar or better ac-
curacy; it improves especially the height component.
In conclusion, it is shown that the combination of geometric and
radiometric information is not only beneficial but crucial to pro-
vide both sufficient and correct input for a meaningful analysis
of ADS data. Looking beyond current QC requirements, the
automated Shear Analysis has already shown to be a very useful
tool for the evaluation of image orientation parameters and their
impact on geometric product accuracy.
The combined geometric/radiometric point cloud matching and
the entire Shear Analysis procedure were implemented for ADS
but are not limited to it. They can be applied to any type of
(stereo) imagery. The very point cloud matching should be
applicable to LiDAR data as well, but this possibility would
have to be explored.
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