沙宗尧, 王安, 汪辛夷. 利用道路网眼实现路网的增量式更新[J]. 武汉大学学报 ( 信息科学版), 2019, 44(8): 1107-1114. DOI: 10.13203/j.whugis20170185
引用本文: 沙宗尧, 王安, 汪辛夷. 利用道路网眼实现路网的增量式更新[J]. 武汉大学学报 ( 信息科学版), 2019, 44(8): 1107-1114. DOI: 10.13203/j.whugis20170185
SHA Zongyao, WANG An, WANG Xinyi. An Incremental Road Network Update Based on Road Network Meshes[J]. Geomatics and Information Science of Wuhan University, 2019, 44(8): 1107-1114. DOI: 10.13203/j.whugis20170185
Citation: SHA Zongyao, WANG An, WANG Xinyi. An Incremental Road Network Update Based on Road Network Meshes[J]. Geomatics and Information Science of Wuhan University, 2019, 44(8): 1107-1114. DOI: 10.13203/j.whugis20170185

利用道路网眼实现路网的增量式更新

An Incremental Road Network Update Based on Road Network Meshes

  • 摘要: 获取现势性的交通道路数据是数字城市和智慧城市建设的基础,基于传统测绘的道路网更新方法存在一定局限性,而基于众源数据及行车轨迹数据更新道路网近年来则倍受关注。首先提出了一种新的道路变化增量更新方法,该方法先对历史道路网建立面拓扑结构,生成由道路网组成的最小闭合面域(道路网眼);然后以道路网眼为基本控制单元,综合利用轨迹点上下文距离信息和隐马尔可夫模型(hidden Markov model,HMM),提取失配轨迹点和失配轨迹段;最后采用缓冲区分析和最大密度法对失配轨迹提取骨架线,创建新增道路,增量更新历史道路网。实验结果表明,以道路网眼为控制单元,利用轨迹点上下文距离分析和HMM捕获失配轨迹点,可提高失配轨迹点的提取效率,改善道路网更新效果。该方法可用于大规模路网的增量式更新。

     

    Abstract: The development of urbanization has made frequent road network changes and road network updating to its current status is of significant importance for automated transportation navigations. Traditional means of surveying and mapping not only takes long time but is also not cost-effective. However, this situation is undergoing significant difference as the location-based services assisted by mobile devices are being implemented, which can collect huge amount of real-time vehicle trajectories composed of geographic locations (trajectory points). Therefore, updating road networks with the vehicle trajectories and using various extracting algorithms attract much focus from both academia and industries. This paper presents a new method of road network updating based on network meshes and vehicle trajectories. Firstly, minimally closed polygons with road segments as the boundaries, referred to road network meshes (RNM) are built by a topology analysis on historical road networks. RNM covers the whole study area and encloses all the trajectory points. Then spatial distance analysis and a Hidden Markov model (HMM) were combined to extract those trajectory points that are from newly developed road within each road network mesh, also termed as mismatched points. Those extracted mismatched points, indicating the locations of the newly built roads, are used to generate point density skeletons from which new roads are thus built. We conclude that the way that the distance analysis coupled with HMM could significantly reduce the time of finding the mismatched trajectory points while keeping high accuracy. Finally, the method is tested by the Portuguese Porto taxi trajectory data, and the experimental results indicate that the incremental road network updated by the proposed model is a promising tool in a massive scale road network synchronization.

     

/

返回文章
返回