基于形状和速度的多维轨迹聚类

Y. Yanagisawa, T. Satoh
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引用次数: 25

摘要

近年来,运动物体的分析已成为地理信息系统、导航系统和基于位置的信息系统等各种应用中最重要的技术之一。现有的地理分析方法是基于每个物体在特定时间所处的点。这些技术可以从每个运动物体中提取出有趣的运动模式,但不能从许多运动物体中提取出相对的运动模式。因此,为了检索与另一个给定运动物体具有相似轨迹形状的运动物体,我们提出了基于运动物体轨迹形状之间相似性的查询。我们提出的技术可以找到形状与某个给定轨迹相似的轨迹。我们将基于形状的相似度查询轨迹定义为时间序列数据相似度查询的扩展,然后结合运动物体的速度和物体的形状,提出了一种新的基于相似度的聚类技术。此外,我们通过移动人力车数据的性能研究证明了我们所提出的聚类方法的有效性。
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Clustering Multidimensional Trajectories based on Shape and Velocity
Recently, the analysis of moving objects has become one of the most important technologies to be used in various applications such as GIS, navigation systems, and locationbased information systems, Existing geographic analysis approaches are based on points where each object is located at a certain time. These techniques can extract interesting motion patterns from each moving object, but they can not extract relative motion patterns from many moving objects. Therefore, to retrieve moving objects with a similar trajectory shape to another given moving object, we propose queries based on the similarity between the shapes of moving object trajectories. Our proposed technique can find trajectories whose shape is similar to a certain given trajectory. We define the shape-based similarity query trajectories as an extension of similarity queries for time series data, and then we propose a new clustering technique based on similarity by combining both velocities of moving objects and shapes of objects. Moreover, we show the effectiveness of our proposed clustering method through a performance study using moving rickshaw data.
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