基于相似度的GPS轨迹数据压缩

Jeremy Birnbaum, H. Meng, Jeong-Hyon Hwang, C. Lawson
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引用次数: 15

摘要

最近gps设备的使用增加,对有效存储轨迹数据提出了新的需求。在本文中,我们提出了一种新的技术,它比现有的解决方案对轨迹数据具有更高的压缩比。该技术根据轨迹之间的相似性将轨迹划分为子轨迹。对于每个相似子轨迹的集合,我们的技术只存储一个子轨迹的空间数据。然后将每个子轨迹表示为自身与前一个子轨迹之间的映射。一般来说,由于轨迹的时间值之间有很强的相关性,这些映射可以被高度压缩。本文提出的评估结果表明,我们的技术优于以往的解决方案。
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Similarity-Based Compression of GPS Trajectory Data
The recent increase in the use of GPS-enabled devices has introduced a new demand for efficiently storing trajectory data. In this paper, we present a new technique that has a higher compression ratio for trajectory data than existing solutions. This technique splits trajectories into sub-trajectories according to the similarities among them. For each collection of similar sub-trajectories, our technique stores only one sub-trajectory's spatial data. Each sub-trajectory is then expressed as a mapping between itself and a previous sub-trajectory. In general, these mappings can be highly compressed due to a strong correlation between the time values of trajectories. This paper presents evaluation results that show the superiority of our technique over previous solutions.
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