GNSS位置不准确的分布式异步协同定位

Elwan Héry, Philippe Xu, P. Bonnifait
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引用次数: 3

摘要

对于自动驾驶汽车来说,本地化仍然是一个主要问题。对于许多导航任务来说,相对于道路和其他车辆的精确定位是必不可少的。当车辆通过无线通信进行合作和信息交换时,它们可以相互提高定位。提出了一种基于局部动态地图交换的分布式协同定位方法。每个LDM都包含所有协作agent的位姿和运动学动态信息。不同来源的信息,如来自CAN总线的航位推算,不准确的(即有偏差的)GNSS位置,激光雷达和道路边界检测使用异步卡尔曼滤波策略合并。从其他车辆接收的ldm使用协方差交叉滤波器合并,以避免数据乱伦。在队列行驶场景下对实验结果进行了评价。它们显示了估计GNSS偏差和精确的相对测量对改进绝对定位过程的重要性。这些结果还表明,即使对于无法感知周围车辆但被其他车辆感知的车辆,每个ldm中车辆之间的相对定位也得到了改善。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Distributed asynchronous cooperative localization with inaccurate GNSS positions
Localization remains a major issue for autonomous vehicles. Accurate localization relative to the road and other vehicles is essential for many navigation tasks. When vehicles cooperate and exchange information through wireless communications, they can improve mutually their localization. This paper presents a distributed cooperative localization method based on the exchange of Local Dynamic Maps (LDMs). Every LDM contains dynamic information on the pose and kinematic of all the cooperating agents. Different sources of information such as dead-reckoning from the CAN bus, inaccurate (i.e. biased) GNSS positions, LiDAR and road border detections are merged using an asynchronous Kalman filter strategy. The LDMs received from the other vehicles are merged using a Covariance Intersection Filter to avoid data incest. Experimental results are evaluated on platooning scenarios. They show the importance of estimating GNSS biases and having accurate relative measurements to improve the absolute localization process. These results also illustrate that the relative localization between vehicles is improved in every LDMs even for vehicles not able to perceive surrounding vehicles but which are instead perceived by others.
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