Querying Uncertain Spatio-Temporal Data

Tobias Emrich, H. Kriegel, N. Mamoulis, M. Renz, Andreas Züfle
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引用次数: 71

Abstract

The problem of modeling and managing uncertain data has received a great deal of interest, due to its manifold applications in spatial, temporal, multimedia and sensor databases. There exists a wide range of work covering spatial uncertainty in the static (snapshot) case, where only one point of time is considered. In contrast, the problem of modeling and querying uncertain spatio-temporal data has only been treated as a simple extension of the spatial case, disregarding time dependencies between consecutive timestamps. In this work, we present a framework for efficiently modeling and querying uncertain spatio-temporal data. The key idea of our approach is to model possible object trajectories by stochastic processes. This approach has three major advantages over previous work. First it allows answering queries in accordance with the possible worlds model. Second, dependencies between object locations at consecutive points in time are taken into account. And third it is possible to reduce all queries on this model to simple matrix multiplications. Based on these concepts we propose efficient solutions for different probabilistic spatio-temporal queries. In an experimental evaluation we show that our approaches are several order of magnitudes faster than state-of-the-art competitors.
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查询不确定时空数据
由于在空间、时间、多媒体和传感器数据库中的广泛应用,不确定数据的建模和管理问题引起了人们的极大兴趣。在只考虑一个时间点的静态(快照)情况下,存在广泛的涵盖空间不确定性的工作。相比之下,不确定时空数据的建模和查询问题仅被视为空间情况的简单扩展,而忽略了连续时间戳之间的时间依赖性。在这项工作中,我们提出了一个有效建模和查询不确定时空数据的框架。我们方法的关键思想是通过随机过程来模拟可能的物体轨迹。与以前的工作相比,这种方法有三个主要优点。首先,它允许根据可能世界模型回答查询。其次,考虑连续时间点上目标位置之间的依赖关系。第三,可以将该模型上的所有查询简化为简单的矩阵乘法。基于这些概念,我们提出了不同概率时空查询的有效解决方案。在实验评估中,我们表明我们的方法比最先进的竞争对手快几个数量级。
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