ISPRS International Journal of Geo-Information (May 2016)

Density-Based Clustering with Geographical Background Constraints Using a Semantic Expression Model

  • Qingyun Du,
  • Zhi Dong,
  • Chudong Huang,
  • Fu Ren

DOI
https://doi.org/10.3390/ijgi5050072
Journal volume & issue
Vol. 5, no. 5
p. 72

Abstract

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A semantics-based method for density-based clustering with constraints imposed by geographical background knowledge is proposed. In this paper, we apply an ontological approach to the DBSCAN (Density-Based Geospatial Clustering of Applications with Noise) algorithm in the form of knowledge representation for constraint clustering. When used in the process of clustering geographic information, semantic reasoning based on a defined ontology and its relationships is primarily intended to overcome the lack of knowledge of the relevant geospatial data. Better constraints on the geographical knowledge yield more reasonable clustering results. This article uses an ontology to describe the four types of semantic constraints for geographical backgrounds: “No Constraints”, “Constraints”, “Cannot-Link Constraints”, and “Must-Link Constraints”. This paper also reports the implementation of a prototype clustering program. Based on the proposed approach, DBSCAN can be applied with both obstacle and non-obstacle constraints as a semi-supervised clustering algorithm and the clustering results are displayed on a digital map.

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