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A Geometric Framework for Detection of Critical Points in a Trajectory Using Convex Hulls

机译:使用凸包检测轨迹中关键点的几何框架

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Large volumes of trajectory-based data require development of appropriate data manipulation mechanisms that will offer efficient computational solutions. In particular, identification of meaningful geometric points of such trajectories is still an open research issue. Detection of these critical points implies to identify self-intersecting, turning and curvature points so that specific geometric characteristics that are worth identifying could be denoted. This research introduces an approach called Trajectory Critical Point detection using Convex Hull (TCP-CH) to identify a minimum number of critical points. The results can be applied to large trajectory data sets in order to reduce storage costs and complexity for further data mining and analysis. The main principles of the TCP-CH algorithm include computing: convex areas, convex hull curvatures, turning points, and intersecting points. The experimental validation applied to Geolife trajectory dataset reveals that the proposed framework can identify most of intersecting points in reasonable computing time. Finally, comparison of the proposed algorithm with other methods, such as turning function shows that our approach performs relatively well when considering the overall detection quality and computing time.
机译:大量基于轨迹的数据需要开发适当的数据处理机制,以提供有效的计算解决方案。尤其是,识别此类轨迹的有意义的几何点仍然是一个开放的研究问题。这些临界点的检测意味着识别出自相交的,转折的和弯曲的点,从而可以表示出值得识别的特定几何特征。这项研究引入了一种使用凸包(TCP-CH)来识别最小数量的临界点的方法,称为轨迹临界点检测。可以将结果应用于大轨迹数据集,以降低存储成本和复杂性,以进行进一步的数据挖掘和分析。 TCP-CH算法的主要原理包括计算:凸面面积,凸面船体曲率,转折点和相交点。应用于Geolife轨迹数据集的实验验证表明,该框架可以在合理的计算时间内识别出大多数相交点。最后,将所提算法与其他方法(例如转弯函数)进行比较表明,考虑到整体检测质量和计算时间,我们的方法表现相对较好。

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