Continuous Reverse Nearest Neighbor Monitoring

Tian Xia, Donghui Zhang
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引用次数: 97

Abstract

Continuous spatio-temporal queries have recently received increasing attention due to the abundance of location-aware applications. This paper addresses the Continuous Reverse Nearest Neighbor (CRNN) Query. Given a set of objects O and a query set Q, the CRNN query monitors the exact reverse nearest neighbors of each query point, under the model that both the objects and the query points may move unpredictably. Existing methods for the reverse nearest neighbor (RNN) query either are static or assume a priori knowledge of the trajectory information, and thus do not apply. Related recent work on continuous range query and continuous nearest neighbor query relies on the fact that a simple monitoring region exists. Due to the unique features of the RNN problem, it is non-trivial to even define a monitoring region for the CRNN query. This paper defines the monitoring region for the CRNN query, discusses how to perform initial computation, and then focuses on incremental CRNN monitoring upon updates. The monitoring region according to one query point consists of two types of regions. We argue that the two types should be handled separately. In continuous monitoring, two optimization techniques are proposed. Experimental results prove that our proposed approach is both efficient and scalable.
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连续反向最近邻监控
由于大量的位置感知应用,连续的时空查询最近受到越来越多的关注。本文研究了连续反向最近邻(CRNN)查询。给定一组对象O和一个查询集Q,在对象和查询点都可能不可预测移动的模型下,CRNN查询监视每个查询点的精确反向近邻。现有的反向最近邻(RNN)查询方法要么是静态的,要么假定对轨迹信息有先验知识,因此不适用。最近关于连续距离查询和连续最近邻查询的相关工作依赖于存在一个简单的监视区域。由于RNN问题的独特特征,甚至为CRNN查询定义一个监控区域都是非常重要的。本文定义了CRNN查询的监控区域,讨论了如何进行初始计算,然后重点研究了更新时的增量CRNN监控。一个查询点的监控区域由两种类型的区域组成。我们认为这两种类型应该分开处理。在连续监测中,提出了两种优化技术。实验结果证明了该方法的有效性和可扩展性。
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