On Predicting and Compressing Vehicular GPS Traces

S. Kaul, M. Gruteser, V. Rai, J. Kenney
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引用次数: 6

Abstract

Many vehicular safety applications rely on vehicles periodically broadcasting their position information and location trace. In very dense networks, such safety messaging can lead to offered traffic loads that saturate the shared wireless medium. One approach to address this problem is to reduce the frequency of location update messages when the movements of a vehicle can be predicted by nearby vehicles. In this paper, we study how predictable vehicular locations are, given a Global Positioning System trace of a vehicles recent path. We empirically evaluate the performance of linear and higher degree polynomial prediction algorithms using about 2500 vehicle traces collected under city and highway driving conditions. We find that linear polynomial prediction using the two most recent known locations performs best. Also, traces with a time granularity of 0.2s are highly predictable in low speed city environments, and a location update rate of 1Hz may suffice to represent city vehicular movements. Lastly, the paper also evaluates compression of different time-granularity traces using line simplification and polynomial interpolation techniques to reduce message sizes.
车载GPS轨迹预测与压缩研究
许多车辆安全应用依赖于车辆定期广播其位置信息和位置跟踪。在非常密集的网络中,这种安全消息传递可能导致提供的流量负载使共享无线媒体饱和。解决这个问题的一种方法是,当附近的车辆可以预测车辆的运动时,减少位置更新消息的频率。在本文中,我们研究了在给定车辆最近路径的全球定位系统轨迹的情况下,如何预测车辆位置。我们使用在城市和高速公路行驶条件下收集的约2500条车辆轨迹对线性和高次多项式预测算法的性能进行了实证评估。我们发现使用两个最近已知位置的线性多项式预测效果最好。此外,时间粒度为0.2s的轨迹在低速城市环境中是高度可预测的,而1Hz的位置更新率可能足以表示城市车辆的移动。最后,本文还评估了使用线简化和多项式插值技术来减少消息大小的不同时间粒度跟踪的压缩。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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