JGIS> Vol.6 No.3, June 2014

Use of Rough Sets Theory in Point Cluster and River Network Selection

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ABSTRACT

In this paper, we applied the rough sets to the point cluster and river network selection. In order to meet the requirements of rough sets, first, we structuralize and quantify the spatial information of objects by convex hull, triangulated irregular network (TIN), Voronoi diagram, etc.; second, we manually assign decisional attributes to the information table according to conditional attributes. In doing so, the spatial information and attribute information are integrated together to evaluate the importance of points and rivers by rough sets theory. Finally, we select the point cluster and the river network in a progressive manner. The experimental results show that our method is valid and effective. In comparison with previous work, our method has the advantage to adaptively consider the spatial and attribute information at the same time without any a priori knowledge.

Cite this paper

Qiu, J. , Wang, R. and Li, W. (2014) Use of Rough Sets Theory in Point Cluster and River Network Selection. Journal of Geographic Information System, 6, 209-219. doi: 10.4236/jgis.2014.63020.

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