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Online Clustering of Trajectory Data Stream

机译:轨迹数据流在线聚类

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Movement tracking becomes ubiquitous in many applications, which raises great interests in trajectory data analysis and mining. Most existing approaches cluster the whole trajectories offline. This allows characterizing the past movements of the objects but not current patterns. Recent approaches for online clustering of moving objects location are restricted to instantaneous positions. Subsequently, they fail to capture moving objects' behavior over time. By continuously tracking moving objects' sub-trajectories at each time window, rather than just the last position, it becomes possible to gain insight on the current behavior, and potentially detect mobility patterns in real time. In this work, we tackle the problem of discovering and maintaining the density based clusters in trajectory data streams, despite the fact that most moving objects change their position over time. We propose CUTiS, an incremental algorithm to solve this problem, while tracking the evolution of the clusters as well as the membership of the moving objects to the clusters. Our experiments were conducted on real data sets, and it shows the efficiency and the effectiveness of our method.
机译:运动跟踪在许多应用中无处不在,这引起了对轨迹数据分析和挖掘的极大兴趣。大多数现有方法都将整个轨迹离线聚类。这样可以表征对象的过去运动,而不是当前模式。用于移动对象位置在线聚类的最新方法仅限于瞬时位置。随后,它们无法捕获随时间变化的运动对象的行为。通过在每个时间窗口(而不只是最后一个位置)连续跟踪运动对象的子轨迹,可以洞悉当前行为,并有可能实时检测移动性。在这项工作中,我们解决了在轨迹数据流中发现和维护基于密度的聚类的问题,尽管大多数移动物体会随着时间改变其位置。我们提出CUTiS,一种增量算法来解决此问题,同时跟踪群集的演变以及移动对象到群集的成员资格。我们的实验是在真实数据集上进行的,它表明了我们方法的有效性和有效性。

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