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Robust Vehicle Infrastructure Cooperative Localization in Presence of Clutter

机译:杂乱无章的鲁棒车辆基础设施合作本地化

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One of the primary challenges for a successful Highly Assisted and/or Autonomous Vehicle is its localization. To improve the precision of location of the vehicle, not only the internal sensors are being used, but also using data from external sensors is attracting increasing attention from the research community. One such proposed sensor is an infrastructure RADAR which can be used to improve the localization of the ego-vehicle. Although a RADAR indeed is a supplementary source of information, it suffers a unique type of clutter which have trajectories like real objects and can therefore result in “ghost measurements”, i.e., measurements which do not correspond to any real vehicles. This deteriorates the quality of the fused state estimates. This paper proposes a robust method to fuse the RADAR readings in presence of such outliers. This methodology builds upon a previously proposed solution where the problem was formulated as a factor graph. The RADAR measurements were added as a novel constraint of sum of inter-vehicle distance, called Topology Factor. Our previous work assumed clutter free environment. This paper proposes a novel robust Topology Factor which is also resilient against above mentioned outliers. Simulations (based on real data) show promising results in the direction of lowering the degradation of fused state estimates in presence of such clutter.
机译:成功的高辅助和/或自动驾驶汽车的主要挑战之一是其本地化。为了提高车辆的定位精度,不仅使用内部传感器,而且使用来自外部传感器的数据也越来越引起研究界的关注。一种这样提出的传感器是基础设施雷达,其可用于改善自我车辆的定位。尽管RADAR确实是信息的补充来源,但它具有独特的杂波类型,其杂波具有类似于真实物体的轨迹,因此可能导致“幻影测量”,即与任何真实车辆都不对应的测量。这降低了融合状态估计的质量。本文提出了一种鲁棒的方法,可以在存在此类异常值的情况下融合RADAR读数。这种方法建立在先前提出的解决方案的基础上,该解决方案将问题公式化为因子图。增加了RADAR测量值,以作为车辆间距离总和的新约束,称为拓扑因子。我们以前的工作假设环境整洁。本文提出了一种新颖的鲁棒拓扑因子,该因子还可以抵抗上述异常值。仿真(基于真实数据)显示出在降低此类杂波存在下的融合状态估计值降低的方向上有希望的结果。

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