Ramaswamy Hariharan, B. Hore, Chen Li, S. Mehrotra
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引用次数: 286
摘要
公开 GIS 数据库中包含的基于位置的信息在许多应用中都非常宝贵,如灾难响应、国家基础设施保护、犯罪分析等。这类数据库的信息实体既有空间描述,也有文字描述。同样,向数据库发出的查询也包含空间和文本内容,例如,"查找橙县有紧急医疗设施的避难所 "或 "查找南加州地震多发区"。我们将这类查询称为空间关键词查询,简称 SK 查询。近来,从网络搜索到地理信息系统(GIS)决策支持系统等各种应用都对有效处理 SK 查询产生了浓厚的兴趣。我们把为实现这类应用而建立的系统称为地理信息检索(GIR)系统。我们在本文中讨论的一个地理信息检索系统实例是建立在数十万个公开 GIS 数据库之上的搜索引擎。在如此庞大的资源库上建立搜索引擎是一项挑战。这种搜索引擎的一个关键方面是性能。在本文中,我们提出了一个 GIR 系统框架,并重点研究了能够高效处理 SK 查询的索引策略。我们通过实验证明,与现有技术相比,我们的索引策略大大提高了回答 SK 查询的效率。
Processing Spatial-Keyword (SK) Queries in Geographic Information Retrieval (GIR) Systems
Location-based information contained in publicly available GIS databases is invaluable for many applications such as disaster response, national infrastructure protection, crime analysis, and numerous others. The information entities of such databases have both spatial and textual descriptions. Likewise, queries issued to the databases also contain spatial and textual components, for example, "Find shelters with emergency medical facilities in Orange County," or "Find earthquake-prone zones in Southern California." We refer to such queries as spatial-keyword queries or SK queries for short. In recent times, a lot of interest has been generated in efficient processing of SK queries for a variety of applications from Web-search to GIS decision support systems. We refer to systems built for enabling such applications as Geographic Information Retrieval (GIR) Systems. An example GIR system that we address in this paper is a search engine built on top of hundreds of thousands of publicly available GIS databases. Building a search engine over such large repositories is a challenge. One of the key aspects of such a search engine is the performance. In this paper, we propose a framework for GIR systems and focus on indexing strategies that can process SK queries efficiently. We show through experiments that our indexing strategies lead to significant improvement in efficiency of answering SK queries over existing techniques.