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International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Vol XXXV, Part B4. Istanbul 2004
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Figure 11. Forces & generalization operators
5. DISCUSSIONS AND FUTURE WORK
The method presented here for a new model of combined
generalization, makes use of spatial data mining to understand
the properties of objects and of topology in order to determine
their behavior in the generalization process. The algorithm
examines the generalization process from a new standpoint that
views the map as a stage in area warfare. Each object has its
power and the forces control the objects final position.
Experiment results on a limited level indicated implementation
of the method on objects belonging to a single layer of
buildings. Additional work is still required. A more thorough
investigation of object behavior in the generalization process
requires adding additional layers. of objects, handling linear
objects concurrently with polygonal objects, and dealing with
the topological relationship between the different layers.
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