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首页> 外文期刊>International Journal of Data Science and Analytics >Detecting behavior types of moving object trajectories
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Detecting behavior types of moving object trajectories

机译:检测运动对象轨迹的行为类型

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摘要

Trajectory mining is a challenging and crucial problem especially in the context of smart cities where many applications depend on human behaviors. In this paper, we characterize such behaviors by patterns, where each pattern type represents a particular behavior, e.g., emerging, latent, lost. From GPS raw data, we introduce algorithms that allow computing a formal concept lattice which encodes optimal correspondences between hidden patterns and trajectories. In order to detect behaviors, we propose an algorithm that analyzes the evolution of the discovered formal concepts over time. The method generates tagged city maps to easily visualize the resulting behaviors at different spatio-temporal granularity values. Refined or coarse analysis can thus be performed for a given situation. Experimental results using real-world GPS trajectory data show the relevance of the proposed method and the usefulness of the resulting tagged city maps.
机译:轨迹挖掘是一个具有挑战性且至关重要的问题,尤其是在智慧城市中,其中许多应用依赖人类行为。在本文中,我们通过模式来表征此类行为,其中每种模式类型都代表一种特定的行为,例如出现,潜伏,迷失。从GPS原始数据中,我们引入了允许计算形式概念格的算法,该概念格对隐藏模式和轨迹之间的最佳对应进行编码。为了检测行为,我们提出了一种算法,用于分析发现的形式概念随时间的演变。该方法生成带标签的城市地图,以轻松可视化不同时空粒度值下的行为。因此,可以针对给定情况执行细化或粗略分析。使用真实GPS轨迹数据的实验结果表明了该方法的相关性以及所生成的带标签城市地图的实用性。

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