A Direction Based Framework for Trajectory Data Analysis

P. Tripathi, Madhuri Debnath, R. Elmasri
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引用次数: 7

Abstract

We propose a framework for the directional analysis of trajectory data. The directional aspect of trajectory analysis is important in map matching, in direction based query processing and in animal movement data. The main contribution in the present work lies in the trajectory segmentation method which is based on directional changes in trajectory. Another contribution is the use of convex hulls of trajectories during filtration of outlier sub-trajectories. There are four components to the framework: (1): smoothing, (2): directional segmentation and classification, (3): outlier sub-trajectory filtering and (4): clustering. We split the trajectories into directional sub-trajectories such that they have a specific directional characteristics; for example, heading north-east. We consider 16 directional classes and assign the corresponding directional sub-trajectories to them. In the filtration step the outlier sub-trajectories are removed from the respective directional classes using a novel convex hull based approach. We compare convex hull filtering performance with conventional minimum bounding rectangle based approach. We finally cluster the filtered directional sub-trajectories to obtain global directional patterns in the data set using a modified DBSCAN algorithm. We also provide the comparison of proposed work with an existing state-of-the-art algorithm called TRACLUS. In this work two real data sets are analyzed: hurricane data and animal movement data.
基于方向的轨迹数据分析框架
我们提出了一个轨道数据定向分析的框架。轨迹分析的方向性方面在地图匹配、基于方向的查询处理和动物运动数据中都很重要。本文的主要贡献在于基于轨迹方向变化的轨迹分割方法。另一个贡献是在过滤离群子轨迹时使用轨迹的凸包。该框架由四个部分组成:(1)平滑,(2)方向分割和分类,(3)异常子轨迹滤波和(4)聚类。我们把轨迹分成定向子轨迹这样它们就有特定的定向特征;例如,向东北方向。我们考虑了16个方向类,并为它们分配了相应的方向子轨迹。在过滤步骤中,使用一种新颖的基于凸包的方法从各自的方向类中去除离群子轨迹。我们比较了凸包滤波与传统的基于最小边界矩形的滤波方法的性能。最后,我们使用改进的DBSCAN算法对过滤后的定向子轨迹进行聚类,以获得数据集中的全局定向模式。我们还将提议的工作与现有的最先进的算法TRACLUS进行比较。在这项工作中,分析了两个真实的数据集:飓风数据和动物运动数据。
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