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Offline map matching using time-expanded graph for low-frequency data

机译:离线地图匹配使用时间扩展图进行低频数据

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Map matching is an essential preprocessing step for most trajectory-based intelligent transport system services. Due to device capability constraints and the lack of a high-performance model, map matching for low-sampling-rate trajectories is of particular interest. Therefore, we developed a time-expanded graph matching (TEG-matching) that has three advantages (1) high speed and accuracy, as it is robust for spatial measurement error and a pause such as at traffic lights; (2) being parameter-free, that is, our algorithm has no predetermined hyperparameters; and (3) only requiring ordered locations for map matching. Given a set of low-frequency GPS data, we construct a time-expanded graph (TEG) whose path from source to sink represents a candidate route. We find the shortest path on TEG to obtain the matching route with a small area between the vehicle trajectory. Additionally, we introduce two general speedup techniques (most map matching methods can apply) bottom-up segmentation and fractional cascading. Numerical experiments with worldwide vehicle trajectories in a public dataset show that TEG-matching outperforms state-of-the-art algorithms in terms of accuracy and speed, and we verify the effectiveness of the two general speedup techniques.
机译:地图匹配是基于大多数基于轨迹的智能传输系统服务的必备预处理步骤。由于设备能力约束和缺乏高性能模型,对低采样速率轨迹的地图匹配特别感兴趣。因此,我们开发了一个时间扩展的图形匹配(TEG匹配),具有三种优点(1)高速和精度,因为它对于空间测量误差和诸如交通灯时的暂停是稳健的; (2)无参数,即,我们的算法没有预定的超参数; (3)只需要映射的有序位置。给定一组低频GPS数据,我们构造了一个时间扩展的图形(TEG),其路径从源到池代表候选路线。我们在TEG上找到最短的路径,以获得车辆轨迹之间的小面积的匹配路径。此外,我们介绍了两个一般的加速技术(大多数地图匹配方法可以应用)自下而上的分割和分数级联。在公共数据集中的全球车辆轨迹的数值实验表明,TEG匹配在准确性和速度方面优于最先进的算法,我们验证了两种通用加速技术的有效性。

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