Continuous probabilistic nearest-neighbor queries for uncertain trajectories

EDBT '09: Proceedings of the 12th International Conference on Extending Database Technology: Advances in Database Technology(2009)

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摘要
This work addresses the problem of processing continuous nearest neighbor (NN) queries for moving objects trajectories when the exact position of a given object at a particular time instant is not known, but is bounded by an uncertainty region. As has already been observed in the literature, the answers to continuous NN-queries in spatio-temporal settings are time parameterized in the sense that the objects in the answer vary over time. Incorporating uncertainty in the model yields additional attributes that affect the semantics of the answer to this type of queries. In this work, we formalize the impact of uncertainty on the answers to the continuous probabilistic NN-queries, provide a compact structure for their representation and efficient algorithms for constructing that structure. We also identify syntactic constructs for several qualitative variants of continuous probabilistic NN-queries for uncertain trajectories and present efficient algorithms for their processing.
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关键词
compact structure,continuous nearest neighbor,continuous probabilistic nn-queries,present efficient algorithm,particular time instant,continuous probabilistic nearest-neighbor query,uncertain trajectory,incorporating uncertainty,objects trajectory,continuous nn-queries,efficient algorithm,uncertainty region,nearest neighbor,metric space
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