The International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences. Vol. XXXVII. Part B3b. Beijing 2008
Figure 11. LIDAR DSM and 3D line features of the test area
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Figure 12. Aerial image of the test area
The following cases demonstrate the advantages of the
proposed scheme:
Compensation: Figure 15(a) versus (b) and (c) versus (d) are
the examples of compensating the fully missing and deficient
3D line features out of LIDAR data by adding the image
measurements utilizing the user interface.
(c) (d)
Figure 15. Compensating the missing and deficient parts
Update: If there exists change between LIDAR and imagery
(assumed to be the latest data) data sets, the result of building
roof reconstruction from LIDAR data can be updated by fusing
aerial images. Figure 16 (a) versus (b) depict the update effect.
(a) (b)
Figure 16. Updating the building roof model
Enhancement of Reliability: Sometimes due to the inaccuracy
of LIDAR data, the result reconstructed by fusing LIDAR data
with aerial images may seem unsatisfied, though rendering high
precision revealed from the adjustment report. A user interface
would provide a visual inspection environment for determining
the most proper employment of line features.
Improvement of Theoretical Accuracy: According to the
theory of error propagation, the precision of building roof
comers will be improved by fusing different data sets as
compared to the situation when only single data is available.
Table 1 provides the precision of roof comers before and after
the CSR approach. Notice that there are two comers obtained
from LIDAR data and four comers from aerial images. In this
case, the precisions of comers 1 and 2 are improved and comers
3 and 4 are updated.
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Figure 13. Initial building roofs from LIDAR system
Figure 14. Refined roof model
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