王舒曼, 应申, 蒋跃文, 张闯, 李霖, 刘经南. 智能驾驶场景中高精地图动静态数据关联方法[J]. 武汉大学学报 ( 信息科学版), 2024, 49(4): 640-650. DOI: 10.13203/j.whugis20230224
引用本文: 王舒曼, 应申, 蒋跃文, 张闯, 李霖, 刘经南. 智能驾驶场景中高精地图动静态数据关联方法[J]. 武汉大学学报 ( 信息科学版), 2024, 49(4): 640-650. DOI: 10.13203/j.whugis20230224
WANG Shuman, YING Shen, JIANG Yuewen, ZHANG Chuang, LI Lin, LIU Jingnan. High Definition Map Dynamic and Static Data Association Method for Intelligent Driving Scenarios[J]. Geomatics and Information Science of Wuhan University, 2024, 49(4): 640-650. DOI: 10.13203/j.whugis20230224
Citation: WANG Shuman, YING Shen, JIANG Yuewen, ZHANG Chuang, LI Lin, LIU Jingnan. High Definition Map Dynamic and Static Data Association Method for Intelligent Driving Scenarios[J]. Geomatics and Information Science of Wuhan University, 2024, 49(4): 640-650. DOI: 10.13203/j.whugis20230224

智能驾驶场景中高精地图动静态数据关联方法

High Definition Map Dynamic and Static Data Association Method for Intelligent Driving Scenarios

  • 摘要: 在智能驾驶场景中,对高精地图的实时动态信息和静态数据的协同调用可以支持智能驾驶系统准确地重构道路行驶场景,并针对复杂的道路环境和突发事件做出安全高效的决策。因此,动态数据与静态数据之间的关联和实时重构是实现智能驾驶车辆路径规划及决策的关键技术。针对目前高精地图模型中动静态数据关联原则共识不够造成耦合实时性弱的问题,提出并论述了动静态数据的关联原则,依此原则,且基于关系数据理论和高精地图的属性属地区块更新机制,进一步提出了高精地图动静态数据的关联和重构的强、弱两种关联方法。通过自动驾驶宏观、中观、微观3种场景决策支持应用分析了动静态数据关联方法对智能驾驶的影响,说明高精地图动静态数据关联关系的建立能够支持智能驾驶系统的规划决策和控制,为车辆实现安全、高效、舒适的智能驾驶奠定了基础。

     

    Abstract:
    Objectives In the intelligent driving scene, the collaborative calls of real-time dynamic information and static data of high definition maps can support the intelligent driving system to accurately reconstruct the road driving scenes, and make safe and efficient decisions for complex road environment and emergencies. Therefore, the correlation between dynamic data and static data is a key technique for achieving vehicle's intelligent path planning and decision-making.
    Methods To solve the problem of weak real-time coupling of dynamic and static data in current high definition map model, we propose an association method of dynamic and static data within high definition map based on the association principles of dynamic and static data, and this association method depends and can be triggered by update mechanism upon custom attributes and specific geographic locations.
    Results We propose a high definition map dynamic and static data correlation method and analyze the impacts on intelligent driving through different macro-, meso- and microscales driving levels to verify the method's validity.
    Conclusions The establishment of the dynamic and static data association relationship of the high definition map not only supports the planning, decision-making and control of the auto-driving system, but also lays the foundation for the realization of safe, efficient and comfortable intelligent driving of vehicles.

     

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