论文标题
关于在极端降水下量化自动驾驶汽车可见性的重要性
On the Importance of Quantifying Visibility for Autonomous Vehicles under Extreme Precipitation
论文作者
论文摘要
在自动驾驶的背景下,车辆本质上肯定会遇到更多的极端天气,在此期间必须确保公共安全。随着气候迅速变化,大暴风雪的频率预计会增加,并成为安全导航的主要威胁。尽管有许多文献旨在提高对冬季状况的导航弹性,但缺乏标准指标来量化与降水有关的LIDAR传感器的可见性丧失。本章提出了一个新颖的指标,以依靠气象研究领域的可见性概念来量化LiDAR可见性损失。我们在加拿大不良驾驶条件(CADC)数据集上评估了该指标,将其与基于最先进的激光痛的本地化算法的性能相关联,并评估在本地化过程之前过滤点云的好处。我们表明,迭代最接近的点(ICP)算法令人惊讶地抵抗降雪,但是突然的事件(例如雪地)可以极大地阻碍其准确性。我们讨论了此类事件,并证明需要更好地关注这些极端事件以量化其效果。
In the context of autonomous driving, vehicles are inherently bound to encounter more extreme weather during which public safety must be ensured. As climate is quickly changing, the frequency of heavy snowstorms is expected to increase and become a major threat to safe navigation. While there is much literature aiming to improve navigation resiliency to winter conditions, there is a lack of standard metrics to quantify the loss of visibility of lidar sensors related to precipitation. This chapter proposes a novel metric to quantify the lidar visibility loss in real time, relying on the notion of visibility from the meteorology research field. We evaluate this metric on the Canadian Adverse Driving Conditions (CADC) dataset, correlate it with the performance of a state-of-the-art lidar-based localization algorithm, and evaluate the benefit of filtering point clouds before the localization process. We show that the Iterative Closest Point (ICP) algorithm is surprisingly robust against snowfalls, but abrupt events, such as snow gusts, can greatly hinder its accuracy. We discuss such events and demonstrate the need for better datasets focusing on these extreme events to quantify their effect.