Standard deviations of individual offset differences are under
0.5 GSD in case of the combined matching, with the exception
of the height component in Georgian Bay. These numbers re-
present accumulated errors from human measurements in two
overlapping data sets on one hand, and SGM and point cloud
matching on the other hand. An attempt to separate these contri-
butions is carried out in Table 3, which shows standard devia-
tions derived from all offsets in each strip overlap, individually
for each method. Such a computation assumes no offset varia-
tion along an ADS strip overlap, which is not entirely correct
but, however, the impact is the same for all methods and doesn’t
prevent a comparison.
The numbers in Table 3 confirm the typical accuracy of human
stereo measurements (note there are two points required to
derive an offset). They also show that the combined automatic
approach can achieve better quality, especially for the height
component. As already found above, the largest standard devia-
tions occur across flight direction. The largest overall number,
the X offset standard deviation of geometric matching in the
New Mexico data set, is impacted by some erroneous results,
which are discussed in the next section.
3.3 Performance on Different Terrain Types
The success rate of the SGM-based info cloud collection and
subsequent geometric/radiometric point cloud matching is
strongly dependent on the image content — i.e., on the sensor,
illumination and viewing geometry and especially terrain pro-
perties and their variation within a patch. This is influenced by a
multitude of factors, and the interaction of which is highly com-
plex. However, image matching requires intensity gradients, and
geometric point cloud matching is based on height gradients;
the combined approach utilizes both types. Furthermore, the
surface approximation by local planes must be valid. Based on
those theoretical considerations as well as practical tests on real-
world data, different types of terrain can be characterized regar-
ding the success rate in providing reliable offsets. So far, this
performance was investigated on ADS data sets that predomi-
nantly include mountains, urban/suburban areas and forests. For
the examples discussed here, the percentages of patches that
delivered reliable offsets are shown in Table 4.
Data Set Patches C er Ced
Georgian Bay 113 58.4% 77.8%
Lansing 808 74.4% 89.4%
New Mexico 378 66.4% 97.6%
Subset: Mountains 132 97.0% 100.0%
Table 4. Percentages of reliable strip offsets, based on the total
number of evenly distributed patches.
Mountainous terrain inherently features significant height and
intensity gradients, which leads to a high percentage of results,
for even up to 100% of the patch locations. The success rate in
urban areas can range widely, 60-90%. The same holds true for
trees, where it is generally lower, in the order of 20-50% for
dense forests, but rapidly increases with the presence of
clearings and/or different tree species — i.e. intensity and height
gradients —, which is the case in the Georgian Bay block. The
main issue, especially in higher vegetation such as trees, is the
representation by essentially arbitrarily scattered points, which
impacts or even invalidates the approximation by local planes.
Patches located entirely in water can be expected to fail.
106
Figure 2. Patch locations and planimetric offset results for the
geometric point cloud matching (red) and the combined method
(black). Examples for the New Mexico strip overlap; offset
vectors scaled by a factor of 1000.
The benefit from the combined point cloud matching over the
geometric approach can be clearly seen in Table 4. Success
rates are improved for all data sets and all types of terrain. In
addition, the resulting offsets are more reliable. The benefit is
minor in mountains (Figure 4, left) but immediately obvious in
flat areas (Figure 4, right). While offsets from both methods
agree well in the first case, the solely geometric matching de-
livers a number of erroneous results in the latter example, which
were not identified by the offset verification as described in
section 2.2. This issue could lead to wrong conclusions in the
Shear Analysis.
4. SHEAR ANALYSIS / QUALITY CONTROL
The automated Shear Analysis, based upon the combined geo-
metric/radiometric matching of dense info clouds, is currently
becoming a part of North West’s production workflow. For the
purpose of QC, patch locations are determined along the center
of each ADS strip overlap in a spacing of 1000-5000 pixels.
Automatically computed offsets and related statistics for all
patches are output into a single, comprehensive report. Based on
that, the user is provided excerpts of different kind, in parti-
cular: detailed tabular views of all offset parameters that enable
examination of the matching; comparison of reliable offsets
against QC thresholds; summaries per image overlap as well as
for the entire ADS block; graphical outputs of patch footprints
and offset vectors with attributes assigned, which allows for an
analysis using commercial mapping software such as Global
Mapper or ArcGIS. This visualization is the primary tool used
in the QC process and for further evaluation.
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