Petra Zimmermann
Bounding Box Criteria within Blob i Preferences
.Rloh of the blob of hue values Small
E A of hue values Not n, blue
X No of i Small
. Segment C (Tree) No of 1 : x
No of “holes” in on Few
Magni of ients
Segment B H ity in texture
Segment A (Roof) direction and distance to ridge line Small
(Roo) — Mum Wo Distance of centre of gravities from blob and Low
Segment D Segment
(Tree) No of pixels o blob
ient peri to No of pixels Low
Figure 17: Examples for several segments Table 2: Predefined preferences of the BuildingRecognitionAgent
5 | CONCLUSIONS AND OUTLOOK
We showed possible improvements for building detection through combining multiple cues, colour segmentation, edge
detection, texture segmentation and blob detection. The resulting attributed image primitives may be used directly to
further derive 3D information, e.g. to perform and constrain edge matching with colour edges. We have to test our
algorithm for the whole area of the new Zürich Hóngg dataset including the old centre of the quarter. The results of our
subset datasets showed good results, the detected blobs contained 95% of the buildings compared to a manually
measured dataset and visual inspection, within these blobs about 4046 of the long strong ridgelines could be found by
computing slope and aspect. At the moment blobs indicate the presence of buildings as a first guess, an additional check
should be done to detect buildings that could not be detected by blobs. Merging similar colour regions may produce
misclassifications and has to be improved, also the last step in combining the features by has to be improved. Our main
goal is to refine this system for processing aerial imagery of dense settled areas and also to able to extract building
details, this should be able with the same algorithms but adjusted parameters in an iterative processing. Results from
point and edge matching (Zhang et al., 2000), (Park et al., 2000) will be integrated.
ACKNOWLEDGEMENTS
The city of Zürich collected the Dataset. Maria Pateraki contributed by measuring the DSM with the software Virtuozo,
DEM and reference data were measured with software from Xinhua Wang through his wife Ms. Fu.
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