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Spatial Range Querying for Gaussian-Based Imprecise Query Objects

机译:基于高斯的不精确查询对象的空间范围查询

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In sensor environments and moving robot applications, the position of an object is often known imprecisely because of measurement error and/or movement of the object. In this paper, we present query processing methods for spatial databases in which the position of the query object is imprecisely specified by a probability density function based on a Gaussian distribution. We define the notion of a probabilistic range query by extending the traditional notion of a spatial range query and present three strategies for query processing. Since the qualification probability evaluation of target objects requires numerical integration by a method such as the Monte Carlo method, reduction of the number of candidate objects that should be evaluated has a large impact on query performance. We compare three strategies and their combinations in terms of the experiments and evaluate their effectiveness.
机译:在传感器环境和移动机器人应用中,由于测量误差和/或物体的运动,常常不精确地知道物体的位置。在本文中,我们提出了一种空间数据库的查询处理方法,其中基于高斯分布的概率密度函数不精确地指定了查询对象的位置。通过扩展空间范围查询的传统概念,我们定义了概率范围查询的概念,并提出了三种查询处理策略。由于目标对象的资格概率评估需要通过诸如蒙特卡洛方法的方法进行数值积分,因此减少应评估的候选对象的数量会对查询性能产生很大影响。我们根据实验比较了三种策略及其组合,并评估了其有效性。

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