运动物体轨迹的互近邻查询处理

Yunjun Gao, Gencai Chen, Qing Li, Baihua Zheng, Chun Xing Li
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引用次数: 9

摘要

给定一组轨迹D、一个查询对象(点或轨迹)q和一个查询间隔T,对轨迹进行相互(即对称)近邻(MNN)查询,从T内的D中找到q的k1个近邻(nn)中的一组轨迹,同时将q作为其k2个nn之一。这种类型的查询考虑了q与轨迹的接近度以及轨迹与q的接近度,这在许多应用程序(例如,决策制定,数据挖掘,模式识别等)中很有用。在本文中,我们首先形式化MNN查询并识别一些问题特征,然后开发两种算法来有效地处理MNN查询。特别是,我们深入研究了两类查询,即MNNP和MNNT查询,它们分别被定义为静止查询点和移动查询轨迹。我们的技术利用批处理和重用技术的优势,显著减少I/O(即节点/页面访问的数量)和CPU成本。大量的实验证明了我们提出的算法在真实和合成数据集上的效率和可扩展性。
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Processing Mutual Nearest Neighbor Queries for Moving Object Trajectories
Given a set of trajectories D, a query object (point or trajectory) q, and a query interval T, a mutual (i.e., symmetric) nearest neighbor (MNN) query over trajectories finds from D within T, the set of trajectories that are among the k1 nearest neighbors (NNs) of q, and meanwhile, have q as one of their k2 NNs. This type of queries considers proximity of q to the trajectories and the proximity of the trajectories to q, which is useful in many applications (e.g., decision making, data mining, pattern recognition, etc.). In this paper, we first formalize MNN query and identify some problem characteristics, and then develop two algorithms to process MNN queries efficiently. In particular, we thoroughly investigate two classes of queries, viz. MNNP and MNNT queries, which are defined w.r.t. stationary query points and moving query trajectories, respectively. Our techniques utilize the advantages of batch processing and reusing technology to reduce the I/O (i.e., number of node/page accesses) and CPU costs significantly. Extensive experiments demonstrate the efficiency and scalability of our proposed algorithms using both real and synthetic datasets.
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