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  • 标题:Discovery of topological constraints on spatial object classes using a refined topological model
  • 本地全文:下载
  • 作者:Majic, Ivan ; Naghizade, Elham ; Winter, Stephan
  • 期刊名称:Journal of Spatial Information Science
  • 电子版ISSN:1948-660X
  • 出版年度:2019
  • 卷号:2019
  • 期号:18
  • 页码:1-30
  • DOI:10.5311/JOSIS.2019.18.459
  • 出版社:The University of Maine
  • 摘要:In a typical data collection process, a surveyed spatial object is annotated upon creation, and is classified based on its attributes. This annotation can also be guided by textual definitions of objects. However, interpretations of such definitions may differ among people, and thus result in subjective and inconsistent classification of objects. This problem becomes even more pronounced if the cultural and linguistic differences are considered. As a solution, this paper investigates the role of topology as the defining characteristic of a class of spatial objects. We propose a data mining approach based on frequent itemset mining to learn patterns in topological relations between objects of a given class and other spatial objects. In order to capture topological relations between more than two (linear) objects, this paper further proposes a refinement of the 9-intersection model for topological relations of line geometries. The discovered topological relations form topological constraints of an object class that can be used for spatial object classification. A case study has been carried out on bridges in the OpenStreetMap dataset for the state of Victoria, Australia. The results show that the proposed approach can successfully learn topological constraints for the class bridge, and that the proposed refined topological model for line geometries outperforms the 9-intersection model in this task.
  • 关键词:topology; classification; OpenStreetMap; data mining; machine learning; frequent itemset mining; qualitative relations
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