Map-matching algorithms that utilise road segment connectivity along with other data (i.e.position, speed and heading) in the process of map-matching are normally suitable for high frequency (1 Hz or higher) positioning data from GPS. While applying such map-matching algorithms to low frequency data (such as data from a fleet of private cars, buses or light duty vehicles or smartphones), the performance of these algorithms reduces to in the region of 70% in terms of correct link identification, especially in urban and sub-urban road networks. This level of performance may be insufficient for some real-time Intelligent Transport System (ITS) applications and services such as estimating link travel time and speed from low frequency GPS data. Therefore, this paper develops a new weight-based shortest path and vehicle trajectory aided map-matching (stMM) algorithm that enhances the map-matching of low frequency positioning data on a road map. The well-known A* search algorithm is employed to derive the shortest path between two points while taking into account both link connectivity and turn restrictions at junctions. In the developed stMM algorithm, two additional weights related to the shortest path and vehicle trajectoryudare considered: one shortest path-based weight is related to the distance along the shortest path and the distance along the vehicle trajectory, while the other is associated with the heading difference of the vehicle trajectory.ududThe developed stMM algorithm is tested using a series of real-world datasets of varying frequencies (i.e. 1 s, 5 s, 30 s, 60 s sampling intervals). A high-accuracy integrated navigation system (a high-grade inertial navigation system and a carrier-phase GPS receiver) is used to measure the accuracy of the developed algorithm. The results suggest that the algorithm identifies 98.9% of the links correctly for every 30 s GPS data. Omitting the informationudfrom the shortest path and vehicle trajectory, the accuracy of the algorithm reduces to about 73% in terms of correct link identification. The algorithm can process on average 50udpositioning fixes per second making it suitable for real-time ITS applications and services.
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机译:在地图匹配过程中利用路段连通性以及其他数据(即位置,速度和航向)的地图匹配算法通常适用于GPS的高频(1 Hz或更高)定位数据。在将此类地图匹配算法应用于低频数据(例如来自私家车,公共汽车,轻型车辆或智能手机的数据)时,这些算法的性能在正确的链路识别方面降低到70%左右,尤其是在城市和郊区道路网络中。对于某些实时智能运输系统(ITS)应用程序和服务,例如从低频GPS数据估计链路的行进时间和速度,这种性能水平可能不足。因此,本文开发了一种新的基于权重的最短路径和车辆轨迹辅助地图匹配(stMM)算法,该算法增强了道路地图上低频定位数据的地图匹配。在考虑链接连接性和路口转弯限制的同时,采用了著名的A *搜索算法来得出两点之间的最短路径。在已开发的stMM算法中,考虑了与最短路径和车辆轨迹有关的两个附加权重:一种基于最短路径的权重与沿着最短路径的距离和沿着车辆轨迹的距离有关,而另一个与 ud ud使用一系列不同频率的实际数据集(即1 s,5 s,30 s,60 s采样间隔)测试开发的stMM算法。高精度集成导航系统(高级惯性导航系统和载波相位GPS接收器)用于测量所开发算法的准确性。结果表明,对于每30 s GPS数据,该算法可正确识别98.9%的链接。从最短路径和车辆轨迹中省略信息 ud,就正确的链接识别而言,该算法的准确性降低到约73%。该算法平均每秒可处理50个 udpositioning修复程序,使其适合于实时ITS应用程序和服务。
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