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Density-based probabilistic clustering of uncertain moving objects

机译:基于密度的不确定运动对象的概率聚类

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In the environment with objects moving randomly, the positions of moving objects can be modeled as a range of possible values, associated with a probability density function. Data mining of such positions of uncertain moving objects attracts more and more research interest recently. The definitions of probabilistic core object and probabilistic density-reachability are presented and a density-based probabilistic clustering algorithm for uncertain moving objects is proposed, based on DBSCAN algorithm and probabilistic index on uncertain moving objects. Simulation results show that the proposed algorithm outperforms other density-based clustering algorithm for uncertain moving objects in accuracy and update rate needed for clustering.
机译:在对象随机运动的环境中,可以将运动对象的位置建模为与概率密度函数关联的可能值范围。最近,不确定运动物体的这种位置的数据挖掘吸引了越来越多的研究兴趣。提出了概率核心对象和概率密度可达性的定义,并基于DBSCAN算法和不确定性对象的概率指标,提出了一种基于密度的不确定性对象概率聚类算法。仿真结果表明,对于不确定的运动物体,该算法在聚类精度和更新率方面均优于其他基于密度的聚类算法。

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