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Measuring the distance of moving objects from big trajectory data

机译:从大轨迹数据测量移动物体的距离

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Location-based services have become important in social networking, mobile applications, advertising, traffic monitoring, and many other domains. The growth of location sensing devices has led to the vast generation of dynamic spatial-temporal data in the form of moving object trajectories which can be characterized as big trajectory data. Big trajectory data enables the opportunities such as analyzing the groups of moving objects. To obtain such facilities, the issue of this work is to find a distance measurement method that respects the geographic distance and the semantic similarity for each trajectories. Measurement of similarity between moving objects is a difficult task because not only their position changes but also their semantic features vary. In this research, a method to measure trajectory similarity based on both geographical features and semantic features of motion is proposed. Finally, the proposed methods are practically evaluated by using real trajectory dataset.
机译:基于位置的服务在社交网络,移动应用程序,广告,流量监控和许多其他领域中已经变得非常重要。位置感测设备的增长导致了以运动物体轨迹形式出现的动态时空数据的大量产生,可将其描述为大轨迹数据。大的轨迹数据提供了诸如分析运动对象组的机会。为了获得这样的便利,这项工作的目的是找到一种距离测量方法,该方法应考虑地理距离和每个轨迹的语义相似性。测量运动对象之间的相似性是一项艰巨的任务,因为不仅它们的位置会发生变化,而且语义特征也会发生变化。提出了一种基于运动的地理特征和语义特征的轨迹相似度测量方法。最后,通过实际轨迹数据集对所提出的方法进行了实际评估。

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