The International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences. Vol. XXXVII. Part B3b. Beijing 2008
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Number of Pixels
Site Accuracy
(%)
Number
of
Trainin
g
Test
Trainin
g
Test
Classifie
d Pixels
Roads
3686
1662
96.7
96.1
25512
Grass
960
499
98.5
35.3
2047
Water
3331
7695
99.6
99.8
35012
Sand
2299
4584
100.0
99.9
12319
Bare
Soil
323
115
99.7
98.3
1312
Other
7564
5041
84.1
59.2
100702
Total
18163
19596
92.7
87.6
176904
Table 1. Results of the AVIRIS image classification after
removing the building pixels
The next step in the process is to generate the road and the
shoreline vector layers. The road class is first separated from
other classes then a thinning process is performed on road
pixels. A 2D Hough transformation parameter space is filled
using all road pixels. Peak cells in the parameter space are
located and all pixels contributing to these cells are used to find
the road centrelines using a non-linear lest squares estimation
model. A line joining process is then used to join road
centrelines that have the same parameters.
In the last step, the shoreline is extracted from the water class.
First, the water class is separated from other classes and border
pixels are defined. These pixels are then converted to a polyline
using the algorithm presented in Bimal and Kumar (1991). The
basic idea of the algorithm is to go through all the border points
and only retain those that that are significant, i.e. those that
represent vertices. Figure 3 shows the extracted road network
and the extracted shorelines overlaid on the reference
Figure 3. Extracted road network and shoreline overlaid on the
reference orthophoto
7. EVALUATION AND ANALYSIS
The completeness and the positional accuracy of the results are
evaluated using different metrics. The completeness is
measured using two metrics: the detection rate (DR) and the
false alarm rate (FR). Table 2 shows the values of the DR and
FR for each class. The table shows that the detection rate for all
three features is more than 90%. In addition, the table shows
that no false-alarm roads or shorelines have been extracted. The
table shows that the false-alarm rate in the building layer is
3.2%.
Detection rate (%)
False -alarm rate
(%)
Roads
91.3 0
95.2 0
93.2 3.2
Shorelines
Buildings
Table 2. Quality metrics used to evaluate the results
The RMS is used to evaluate the positional accuracy of the
extracted features. This is performed in different means. For the
road network, the positions of 20 road intersections are used.
The RMS for the coordinates of the 20 points is 5.7 meters and
the maximum error is 9.5 meters. For the shoreline, 30 distinct
points are manually selected. The RMS for the 30 points is 7.2
meters, and the maximum positional error is 10.9 meters. The
RMS for the buildings comers is 2.3 meters, while the
maximum error is 3.8 meters.
8. CONCLUSIONS
This research shows that the combination of multiple and
independent remote sensing data is essential to solve the
complexity of the coastal mapping. Due to the nature of the
LIDAR data, it was employed to extract building polygons
only. The AVIRIS data led to other coastal features that are not
distinguished using the height attribute only such as roads and
shorelines. The classification results are vectorized and used to
generate road and shoreline vector layers. Results show that the
average detection rate of the proposed technique is 93%. The
positional accuracy of the extracted features is data depended.
The research shows that the RMS of the generated building
polygons is 2.3 meters, while the RMS of the roads and the
shorelines is about 6.5 meters. These results show the potential
of merging optical and laser data to provide reliable and
accurate geospatial information that can be used to build or
update coastal GIS database.
REFERENCES
Ackerman, F., 1999. Airborne laser scanning - present status
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Bartels, M., Wei, H., and Ferryman, J., 2006. Analysis of
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IEEE International Conference on Advanced Video and Signal-
Based Surveillance,
http://www.cvg.reading.ac.uk/projects/LIDAR/index.html,
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