The International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences. Vol. XXXVII. Part B3b. Beijing 2008
Figure 18 shows rooftop detection results of the entire area.
There is a building located near the border line of the epipolar
image that the system can not detect correctly due to missing
line segments in low level extraction step. The remaining
buildings are accurately extracted. From the detected 3D
rooftop, we generate a 3D rendering view, as shown in Figure
19. The 3D view indicates that the detected 3D rooftop
accurately reflects ground truth 3D model.
6. CONCLUSIONS
A new approach to detect and reconstruct buildings using
perceptual organization from two aerial images has been
suggested. Low level feature extraction is performed in the
epipolar images, which makes it possible to reduce the search
effort in matching process. The proposed suspected building
regions can be utilized to remove the unnecessary line segments,
prior to the generation of rooftop hypotheses. This region can
reduce computational complexity and false hypotheses. Using
undirected feature graph, the selection of rooftop hypotheses
becomes a simple graph searching for close cycles.
Experimental result shows that the proposed method can be
very effectively utilized for the rectilinear structures of urban
area.
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ACKNOWLEDGEMENTS
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