The International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences. Vol. XXXVII. Part Bl. Beijing 2008
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multiple profiles, which can weaken the impact of special
circumstances. Secondly, as to the inconsistency condition of
highway width or water surface width, the same number of
samplings from the start line is adopted to get uniform sequence.
Thirdly, after the positions related with the start point, the
termination point, the highest elevation and the lowest elevation
are sought, constant-value function is applied for fitting the
neighbour points of given number. Then the nearest point on the
fitting line replace the above four calculated points as the actual
positions used in determination functions.
Although the above functions utilize the common regulars, the
real-world has some anomalies. The artificial river probably has
a cross interface with natural river. One side-bank of artificial
rivers sometimes makes use of natural terrain slope. The special
situations also should be considered in the following work.
3. EXPERIMENTS AND ANALYSIS
The experiments will use real LiDAR ranging data to testify the
algorithm proposed above. And some related analyses are made
for further improvements, which aims at becoming one module
of practical software.
3.1 Data
This paper applies Abbeville district’s LiDAR ranging data in
America to validate the proposed algorithm, at the same time
rivers’ distribution from the same area’s high-resolution RS
image is applied and extracted as comparison template.
Figure 5 and 6 illustrates the characteristic distribution of the
chosen area. LiDAR samplings has 5 times grid-spacing than
the spatial resolution of RS image (lm), which needs data
compression for comparison.
The figures also show that LiDAR images are generally more
homogeneous than RS images. This avails of automatic process
when extracting information. And this also constitutes the
foundation of whole algorithm.
Figure 5. Typical LiDAR image for experiments
Figure 6. RS image of the same area for comparison
3.2 Results
After edge extraction, skeleton generation and PFF recognition,
as showed in figure 7, 8 and 9, the areas related with artificial
river, natural river and highway can be determined. The results
indicate that although some long strips of terrain are picked out
by edge extraction, PFF can recognize them.
Figure 8. LiDAR image’s skeleton generation result based on
figure 7.