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International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Volume XXXIX-B7, 2012
XXII ISPRS Congress, 25 August — 01 September 2012, Melbourne, Australia
Figure 8. Oblique aerial image of test area "a". The different
facade structures, leading to quite heterogeneous PS densities,
are clearly visible.
A close-up of the situation together with the assigned PS and
the sensors line of sight is displayed in Figure 9.
It shows quite nicely that most of the PS are generated by
structures at the facades. This leads to low PS densities in the
areas marked by the black rectangles. In the case at hand no
facades of the mentioned building parts are visible, since they
are occluded or parallel to the sensors line of sight. In fact
occlusion is a quite common problem in urban environment. In
many cases PS can be found just at the top of the facades since
the rest of it is not visible to the sensor.
4.3 Areac
Finally, it is important to stress the variety of factors influencing
the PS density. A good example for that is a trihedral reflection
mechanism at a facade formed by the window sill, a part of the
wall, and the frame of the window with just the right orientation
to the sensors line of sight. If the window is always closed
during the acquisition of just another image for the data stack, a
PS is likely to be induced. However, if the window is opened
once during an acquisition, the PS may be lost. In essence a lot
of "random" processes decide if a reflection mechanism is
persistent over the timeframe covered by the data stack. A quite
nice example for such effect is shown in Figure 10. One part of
the building complex shows a quite high PS density (around 3.6
PS per 1000m?) coloured in green. The other part exhibits a
considerably lower density (0.5 PS per 1000m?) shown in red.
A closer look at the actual PS distribution reveals, that PS could
be found at the right part of the building only. The reason for
that gets obvious in Figure 11, which shows an oblique view
Es.
Figure 9. PS density in test area b. The building parts marked by
the black rectangles show a quite low PS density because just
their roofs are visible to the sensor.
Figure 10. PS density for test area c. One part of the building
(red) shows a very low PS density, while the other part shows
a quite good coverage (green). The reason for that are
construction works.
aerial image (O MS-Bingmaps). A scaffold is visible in the left
part suggesting ongoing construction works, which certainly
leads to a loss of all PS at the particular building part.
5. CONCLUSION
A work flow aiming at the fusion of PS point clouds with
building outlines for the purpose of determining the PS density
per building has been demonstrated. The procedure consists of
two steps namely alignment of PS and map data and assignment
of PS to buildings. A simple Iterative Closest Point algorithm
turned out to be sufficient for the alignment. The
straightforward assignment of PS to the closest buildings could
be improved to enhance the algorithms accuracy in dense built
up areas. In some cases it might be reasonable to check if a set
of regular shapes (e.g. planes obtained by extruding the polygon
edges) can be fitted to the PS assigned to one building.
However, this is quite difficult due to the quite inaccurate
geocoding of PS and would definitely fail in case of complex
roof structures leading to an irregular point distribution.
The map of PS densities is a good tool to get an overview which
buildings exhibit a sufficient PS coverage for monitoring
purposes. However, it does not account for the PS distribution
at the building. For that a matching of the PS to the polygon
edges is thinkable. The main problem at that is to distinguish
facade and roof PS which would ultimately boil down to the use
of a distance threshold.
A better way would be to use a 3D city model and match the PS
to bounding faces.
Finally, the PS density at buildings is quite heterogeneous for
Figure 11. Oblique view aerial image of test area c. The scaffold
at the left part of the visible facade indicates construction works
and explains the low PS density for this part of the building.