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Title
CMRT09
Author
Stilla, Uwe

In: Stilla U, Rottensteiner F, Paparoditis N (Eds) CMRT09. IAPRS, Vol. XXXVIII, Part 3A/V4 — Paris, France, 3-4 September, 2009
depends on its resolution and varies with the distance from the
camera to the facade.
Another possible evolution is to use additional 3D information
to predict occlusions. A Digital Terrain Model could be used to
predict hidden parts due to hills or embankments (case of a hill
masking buildings facades located on the other side of a square
for instance). If available, a complete 3D city model including
vegetation and detailed building roofs would help better
estimate the visibility of a given façade. More generally, an
environment mask as in described in (Wang et al., 2002) could
be introduced.
Another parameter to take into account is the uncertainty on the
GPS/IMU data which introduces an uncertainty on the camera
position and direction. In order to guarantee a complete
selection, a simple solution would be to dilate each wall
polygon by the maximal distance induced by the positioning
uncertainty. In a similar way, the influence of the input 3D
model accuracy should be investigated.
For this particular study, only synthetic data have been used. In
the future we will be working on real data, and the influence of
both the positioning error and the 3D model accuracy will be
studied. Figure 9 gives an idea of what we would like to
automatically achieve at a large scale. Note that the side facade
located at the top right of the image cannot be textured if the
image selection process is only 2D-based.
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Figure 9 - 3D virtual view of the historical centre of Rennes
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