582
(a) Pre-Processed imagery
(b) Final spatial road network
Figure 9. Candidate road segment selection
6. CONCLUSION
In the latest decade, GIS, especially WebGIS has been
developing prospectively. GIS-T, as an important part of GIS, is
discussed more and more. Spatial road network, the
fundamental element, has become one of key topics. As the
introduction of new form data, FCD, into GIS-T, there comes a
new trend which leads to build a more dynamical and more
intelligent traffic information system. In this paper, integrated
the advantages of FCD and high spatial resolution imagery, a
methodology to construct spatial road network automatically is
proposed.
In this paper, a new statistic is defined to describe the local
cluster based on the character of road intersections. To obtain
the critical value of the statistic, Monte Carlo simulation
process is employed. Bonferroni adjustment is suggested to
keep the experimentwise error rate to a specified level. In the
case study, kernel density analysis is carried out to get the key
parameter for building the weight matrix. After all the road
segment nodes are detected, candidate road segments are
produced. Assisted with the pre-processed high spatial
resolution imagery, the spatial road network is finally decided.
Besides the final spatial road network obtained with this
methodology, it should be noticed that all the road nodes are
detected based on FCD and candidate road segments are filtered
based on multi spectral remote sensing imagery. Therefore, on
the one hand, these nodes are the most compatible with FCD
and on the other hand, these nodes match multi spectral remote
sensing imagery very well. Thus the significance of this