Spatial Information Retrieval in Digital Ecosystems: A Comprehensive Survey

A. Carniel
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引用次数: 3

Abstract

Spatial information retrieval is a common task of digital ecosystems due to the popularity of collecting and storing spatial information and phenomena in the world of the Internet of Things (IoT). Spatial relationships play an important role in this context by specifying how two or more spatial objects are related or connected. Examples of spatial relationships include topological relationships (e.g., intersect, overlap, contains), metric relationships (e.g., nearest neighbors), and direction relationships (e.g., cardinal directions like north and south). Many works in the literature have proposed definitions and implementations of spatial queries based on specific types of spatial relationships. Hence, a holistic view of these works is important to understand their applicability and relations. This paper advances in the literature by providing a comprehensive survey of the implementations and types of spatial queries that can be used by digital ecosystems. We present a novel characterization based on spatial relationships to define topological-based, metric-based, and direction-based spatial queries. For each type of spatial query, we present its intuitive and formal definitions together with possible strategies of implementation. Further, we identify hybrid spatial queries as combinations of two or more spatial relationships, and spatial joins as generalization cases. In addition, we present some equivalences between some types of queries. As a result, we point out future research topics in spatial information retrieval.
数字生态系统空间信息检索研究综述
由于物联网(IoT)世界中空间信息和现象的收集和存储的普及,空间信息检索是数字生态系统的共同任务。在这种情况下,空间关系通过指定两个或多个空间对象如何关联或连接而发挥重要作用。空间关系的例子包括拓扑关系(如相交、重叠、包含)、度量关系(如最近邻)和方向关系(如南北等基本方向)。文献中的许多工作都提出了基于特定类型空间关系的空间查询的定义和实现。因此,从整体的角度来看待这些作品对于理解它们的适用性和相互关系是很重要的。本文通过提供数字生态系统可使用的空间查询的实现和类型的全面调查,在文献中取得了进展。我们提出了一种基于空间关系的新特征来定义基于拓扑、基于度量和基于方向的空间查询。对于每种类型的空间查询,我们给出了其直观和形式化的定义以及可能的实现策略。此外,我们将混合空间查询定义为两个或多个空间关系的组合,将空间连接定义为泛化案例。此外,我们还给出了某些查询类型之间的一些等价。最后,提出了空间信息检索未来的研究方向。
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