Modeling Topological Relations between Uncertain Spatial Regions in Geo-spatial Databases: Uncertain Intersection and Difference Topological Model

A. Alboody, F. Sèdes, J. Inglada
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引用次数: 10

Abstract

Topological relations have played important roles in spatial query, analysis and reasoning in Geographic Information Systems (GIS) and geospatial databases. The topological relations between crisp, uncertain and fuzzy spatial regions based upon the 9-intersections model have been identified. The research issue of topological relations, particularly, between spatial regions with uncertainties, has gained a lot of attention during the past two decades. However, the formal representation and calculation of the topological relations between uncertain regions is still an open issue and needs to be further developed. The paper provides a theoretical framework for modeling topological relations between uncertain spatial regions based upon a new uncertain topological model called the Uncertain Intersection and Difference (UID) Model. In order to derive all topological relations between two spatial regions with uncertainties, the spatial object of type Region (A) is decomposed in four components: the Interior, the Interior’s Boundary, the Object’s Boundary, and the Exterior’s Boundary of A. By use of this definition of spatial region with uncertainties, new 4*4-Intersection and Uncertain Intersection and Difference (UID) models are proposed as a qualitative model for the identification of all topological relations between two spatial regions with uncertainties. These two new models are compared with other models studied in the literature. 152 binary topological relations can be identified by these two models. Then, the topological complexity and distance of the 152 relations will be study in details by using the UID model. Based upon this study of topological complexity and distance, a conceptual neighborhood graph for the 152 relations can be obtained. Examples are provided to illustrate the utility of these two models presented in this paper with results which can be applied for modeling GIS, geospatial databases and satellite image processing.
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地理空间数据库中不确定空间区域间拓扑关系建模:不确定交集与差分拓扑模型
拓扑关系在地理信息系统(GIS)和地理空间数据库的空间查询、分析和推理中发挥着重要作用。基于9交模型,确定了清晰、不确定和模糊空间区域之间的拓扑关系。在过去的二十年里,拓扑关系的研究,特别是不确定空间区域之间的拓扑关系的研究得到了广泛的关注。然而,不确定区域之间拓扑关系的形式化表示和计算仍然是一个开放的问题,需要进一步发展。本文提出了一种新的不确定拓扑模型——不确定交差模型(UID),为不确定空间区域间拓扑关系建模提供了理论框架。为了导出两个不确定空间区域之间的所有拓扑关系,将类型为Region (A)的空间对象分解为四个分量:a的内部、内部边界、对象边界和外部边界。利用这一不确定空间区域的定义,提出了新的4*4-交集和不确定交集与差分(UID)模型,作为识别两个不确定空间区域之间所有拓扑关系的定性模型。将这两个新模型与文献中研究的其他模型进行了比较。这两个模型可以识别出152个二元拓扑关系。然后,利用UID模型详细研究152个关系的拓扑复杂度和距离。基于拓扑复杂度和距离的研究,得到了152个关系的概念邻域图。通过实例说明了本文所提出的两种模型的实用性,其结果可用于GIS建模、地理空间数据库和卫星图像处理。
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