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Efficiently Retrieving Longest Common Route Patterns of Moving Objects By Summarizing Turning Regions

机译:通过汇总转动区域有效地检索移动物体的最长常见路线模式

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The popularity of online location services provides opportunities to discover useful knowledge from trajectories of moving objects. This paper addresses the problem of mining longest common route (LCR) patterns. As a trajectory of a moving object is generally represented by a sequence of discrete locations sampled with an interval, the different trajectory instances along the same route may be denoted by different sequences of points (location, timestamp). Thus, the most challenging task in the mining process is to abstract trajectories by the right points. We propose a novel mining algorithm for LCR patterns based on turning regions (LCRTurning), which discovers a sequence of turning regions to abstract a trajectory and then maps the problem into the traditional problem of mining longest common subsequences (LCS). Effectiveness of LCRTurning algorithm is validated by an experimental study based on various sizes of simulated moving objects datasets.
机译:在线位置服务的普及提供了从移动物体的轨迹发现有用知识的机会。本文解决了挖掘最长普通路线(LCR)模式的问题。作为移动物体的轨迹通常由与间隔采样的一系列离散位置表示,沿相同路线的不同轨迹实例可以由不同的点序列(位置,时间戳)表示。因此,采矿过程中最具挑战性的任务是右点点的抽象轨迹。我们提出了一种基于转位区域(Lcrturning)的LCR模式的新型挖掘算法,该算法发现了一系列转动区域以抽象轨迹,然后将问题映射到挖掘最长常用子序列(LCS)的传统问题中。基于各种尺寸的模拟移动物体数据集,通过实验研究验证了Lcrturning算法的有效性。

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