International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Vol XXXV, Part B5. Istanbul 2004
Figure 8: A complex example of a facade occluded by pedestrians and a statue of Schiller. The top row shows three images taken
from three different stations. The middle row shows the three images rectified individually. The bottom row shows the three images
transformed to the plane of the third image.
5 SUMMARY
We have demonstrated a simple approach for multi-image fusion
for the generation of occlusion-free textures for façade texturing.
Both the cases of moving objects and stationary objects occlud-
ing a façade can be handled in a unified manner. The approach
does not use complex 3D computations. Specifically it does not
require the determination of the exterior orientation of the sensor
or the use of control points in object space. The approach is suit-
able for use with uncalibrated cameras since it only requires the
computation of the perspective projection of images. Arguments
can be made whether the lens distortions of the camera ought to
be calibrated. Our experience has shown that the distortions intro-
duced by the facade's relief during rectification are by far larger
than the distortions caused by quality lenses.
Our approach requires the measurement of four points per image
to be included in the fusion process. Comparing this to the sim-
ple single image approach for facade texturing, we see that the
manual work load will increase linearly with the number of im-
ages. Due to this moderate need of user interaction it holds the
potential for large-scale use.
Of course full automation is always desirable. Using a proce-
dure, which is able to automatically detect buildings in terres-
trial imagery, will lead to full automation. We have presented
such a procedure in a previous publication (Bóhm et al., 2002).
We have described a method for automated appearance-based de-
tection of buildings in terrestrial images. From an image with a
given approximated exterior orientation and a three-dimensional
CAD Model of the building, we were able to detect the exact
location of the building in the image. The method used the com-
bination of an image device and some hardware to approximately
measure orientation. In future work we aim to integrate this pro-
cedure with the results presented here to achieve full automation
of multi-image fusion.
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