The International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences. Vol. XXXVII. Part B3b. Beijing 2008
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Statistic value of Lt
Figure 7. Histogram of Monte Carlo simulation process result
In figure 7, it can give out the critical value for single testing.
When multiple testing is carried out, Bonferroni adjustment
needs taking into consideration. According to the criteria
introduced in section 3.2, critical values at confidence
level Ct — 0.05 can be easily calculated and the results are
shown in table 2.
Times of multiple
testing
Critical value
10
6.0539
20
6.1526
30
6.2009
40
6.2074
50
6.2138
Table2 Critical value considering Bonferroni adjustment
From table 2, it is obvious that if more tests are carried out, a
higher critical value is needed to avoid conservative estimation
of L f .
5.4 Node detection result
After 38 times’ test with a critical value of 6.2061, which is
calculated from table 2 with a linear interpolation method, 38
significant local clusters are found. These points are plotted
along with all FCD points in figure 8.
In figure 8, all local clusters are found. Besides road
intersections, some clusters are located along the road, in which
case it can be assumed that there must be some traffic patterns
there. This sort of traffic patterns should be paid more attention
and they should be regarded as nodes of road segments to
comply with FCD.
5.5 Determination of final spatial road network
Based on the strategy discussed in section 4, a pre-processed
imagery of the study area is needed. Due to the aim of this
paper is to introduce FCD to road extraction, here the road
frame is roughly described by hand, which is used to explain
the candidate road segment selection procedure. Figure 9 shows
the pre-processed imagery and the final spatial road network
overlaid with high spatial resolution imagery.
For convenience, in figure 9(a), the pre-processed imagery is
given as a binary image, in which white area is the road area
roughly. In figure 9(b), when the spatial road network is
overlaid with the high resolution imagery, they match each
other very well. Nodes of all road segments are highlighted.
Each node represents a traffic pattern, such as road intersection,
traffic jam, etc.