Full text: Papers accepted on the basis of peer-reviewed abstracts (Part B)

In: Wagner W., Székely, B. (eds.): ISPRS ТС VII Symposium - 100 Years ISPRS, Vienna, Austria, July 5-7, 2010, IAPRS, Vol. XXXVIII, Part 7B 
below the defined minimum segment area of 2 m 2 . Confusion 
with buildings (mainly the edges) is the major task of separating 
vegetation in urban areas. Using the cadastral building layer 
3.4% of the total vegetation segment area intersects with 
buildings and 7.7%, if the building polygons are buffered with 
2 m, indicating that predominantly building edges are wrongly 
classified. Note that also buildings overtopped by vegetation are 
also counted as error. On segment basis 4.8% of segments (402 
of 8413) are intersecting with buildings with more than 50% of 
their area. Looking at the buffered buildings, 14.0% (1182) of 
the segments confuse with building areas. 
Figure 9. (a) Vegetation segments and (b) derived generalized 
vegetation GIS layer 
The final result is the generalized vegetation mask (Fig. 9), 
generated by using the segments falling within one of the 
vegetation classes. Generalization was performed by removing 
small isolated vegetation areas (<20 m 2 ) and holes within 
vegetation (<20 m 2 ). Additionally the vegetation layer 
boundary is smoothed using Snakes (a=1.0). 
5. CONCLUSIONS 
This paper presented a novel workflow of GIS-based urban 
vegetation mapping using high density full-waveform LiDAR 
data. The combination of image-based object analysis and point 
cloud-based segment feature derivation and classification shows 
promising results for automated, operational applications, such 
as urban mapping, map updating, 3D visualization and urban 
tree inventory, when combined with single tree and stem 
detection algorithms. Future work will concentrate on including 
radiometric calibration, automated classification (e.g. statistical 
decision trees) and point cloud based single tree detection. 
ACKNOWLEDGMENTS 
We would like to thank the MA41-Stadtvermessung, City of 
Vienna, for their support and providing the airborne LiDAR 
data and reference datasets. 
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