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Figure 1: 3D model of the “WelfenschloB” the main building of the University of Hannover "standing" on an aerial image.
Figure 2: 3D model of the “WelfenschloB” with automatically extracted trees. The map-like image used as ground texture shows the
result of an edge extractor (A Deriche operator (Deriche 1990) was applied to the aerial image, which is used as ground
in the figure above. The tree template which was used for the VRML model was originally described in (Saint John
1997).)
In this section we want to show, that — even if the applied
automatic algorithm works not perfect — it could make sense
to have such an automatic algorithm for the extraction of
trees.
The figures on the top of this page should give an impression
of the impact of 3D tree models in the virtual city model.
Figure 1 shows a 3D model of the “WelfenschloB”, the main
building of the University of Hannover. (The reconstruction
of the buildings in the city was performed manually with the
inJECT software of INPHO GmbH.) The model was set onto
an orthoimage, in order to give a more or less realistic
impression of the scenario. With exactly the same amount of
manual work one can produce the model which is predicted
in Figure 2. The map-like texture on the ground was
computed with a standard edge extractor without any manual
support. The 3D tree models in the scene are the result of the
approach for automatic extraction of trees from aerial
images, which is explained in the following section of this
paper.
The situation with the automatic approaches for the
extraction of topographic objects is, that 99.5% are not
achieved in the moment. Even a success rate 95% is not
realistic, except in simple scenes. One of the reasons is, that
one has to simplify the real world to a model, which in fact
cannot cover all possibilities. And the more complicated the
model, the more complex becomes the tuning of the —
necessarily - increasing number of parameters. As a result,
the success rate of the most automatic systems is — roughly
speaking - between 70% and 90%. Significantly lower