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Constructing Popular Routes from Uncertain Trajectories

机译:从不确定的轨迹构造流行路线

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The advances in location-acquisition technologies have led to a myriad of spatial trajectories. These trajectories are usually generated at a low or an irregular frequency due to applications' characteristics or energy saving, leaving the routes between two consecutive points of a single trajectory uncertain (called an uncertain trajectory). In this paper, we present a Route Inference framework based on Collective Knowledge (abbreviated as RICK) to construct the popular routes from uncertain trajectories. Explicitly, given a location sequence and a time span, the RICK is able to construct the top-k routes which sequentially pass through the locations within the specified time span, by aggregating such uncertain trajectories in a mutual reinforcement way (i.e., uncertain + uncertain → certain). Our work can benefit trip planning, traffic management, and animal movement studies. The RICK comprises two components: routable graph construction and route inference. First, we explore the spatial and temporal characteristics of uncertain trajectories and construct a routable graph by collaborative learning among the uncertain trajectories. Second, in light of the routable graph, we propose a routing algorithm to construct the top-k routes according to a user-specified query. We have conducted extensive experiments on two real datasets, consisting of Foursquare check-in datasets and taxi trajectories. The results show that RICK is both effective and efficient.
机译:位置获取技术的进步导致了无数的空间轨迹。由于应用程序的特性或节能,这些轨迹通常以较低的频率或不规则的频率生成,从而使单个轨迹的两个连续点之间的路径不确定(称为不确定轨迹)。在本文中,我们提出了一种基于集体知识的路线推理框架(缩写为RICK),用于根据不确定的轨迹构造流行的路线。明确地,在给定位置序列和时间跨度的情况下,RICK能够通过以相互强化的方式聚合此类不确定的轨迹(即不确定+不确定性)来构造在指定时间跨度内依次通过位置的前k条路线→确定)。我们的工作可以使旅行计划,交通管理和动物运动研究受益。 RICK由两个部分组成:可路由图构造和路线推断。首先,我们探索不确定轨迹的时空特征,并通过在不确定轨迹之间的协作学习构造可路由图。其次,针对可路由图,我们提出了一种路由算法,可以根据用户指定的查询来构造前k个路由。我们已经对两个真实的数据集(包括Foursquare值机数据集和出租车轨迹)进行了广泛的实验。结果表明,RICK既有效又高效。

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