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Extracting Stops from Noisy Trajectories: A Sequence Oriented Clustering Approach

机译:从嘈杂的轨迹中提取停止:面向序列的聚类方法

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Trajectories, representing the movements of objects in the real world, carry significant stop/move semantics. The detection of trajectory stops poses a critical problem in the study of moving objects and becomes even more challenging due to the inevitable noise recorded along with true data. To extract stops with a variety of shapes and sizes from single trajectories with noise, this paper presents a sequence oriented clustering approach, in which noise points within the sequence of a stop can be identified and classified as a part of the stop. In our method, two key concepts are first introduced: (1) a core sequence that defines sequence density based not only on proximity in space but also continuity in time as well as the duration over time; and (2) an Eps-reachability sequence that aggregates core sequences that overlap or meet over time. Then, three criteria are presented to merge Eps-reachability sequences interrupted by noise. Further, an algorithm, called SOC (Sequence Oriented Clustering), is developed to automatically extract stops from a single trajectory. In addition, a reachability graph is designed that visually illustrates the spatio-temporal clustering structure and levels of a trajectory. Finally, the proposed algorithm is evaluated against two baseline methods through extensive experiments based on real world trajectories, some with serious noise, and the results show that our approach is fairly effective in recognizing trajectory stops.
机译:代表现实世界中对象运动的轨迹带有重要的停止/移动语义。轨迹停止的检测在运动对象的研究中提出了一个关键问题,并且由于不可避免的噪声与真实数据一起记录而变得更具挑战性。为了从带有噪声的单个轨迹中提取具有各种形状和大小的停靠点,本文提出了一种面向序列的聚类方法,其中可以识别停靠点序列内的噪声点并将其分类为停靠点的一部分。在我们的方法中,首先引入了两个关键概念:(1)一个核心序列,它不仅基于空间的接近性而且还基于时间的连续性以及随时间的持续时间来定义序列密度; (2)Eps可达性序列,该序列聚集了随时间重叠或相遇的核心序列。然后,提出了三个准则来合并被噪声打断的Eps可达性序列。此外,开发了一种称为SOC(面向序列的聚类)的算法,可以自动从单个轨迹中提取停靠点。此外,设计了可到达性图,以可视方式说明了时空聚类结构和轨迹级别。最后,通过在真实轨迹的基础上进行大量实验,针对两种基线方法对算法进行了评估,结果表明该方法在识别轨迹停止方面非常有效。

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