Resilient Navigation Based on Multimodal Measurements and Degradation Identification for High-Speed Autonomous Race Cars

Daegyu Lee, Hyunwoo Nam, Chanhoe Ryu, Sun-Young Nah, D. Shim
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Abstract

This paper presents a localization system robust against unreliable measurements and a resilient navigation system recovering from localization failures for Indy autonomous challenge (IAC). The IAC is a competition with full-scale autonomous race cars that drive at speeds up to 300 kph. Owing to high-speed and heavy vibration in the car, a GPS/INS system is prone to degrade causing critical localization errors, which leads to catastrophic accidents.In order to address this issue, we propose a robust localization system that probabilistically evaluates the credibility of multi-modal measurements. At a correction step of the Kalman filter, a degradation identification method with a novel hyper-parameter derived from Bayesian decision theory is introduced to choose the most credible measurement values in real-time. Since the racing condition is so harsh that even our robust localization method can fail for a short period of time, we present a resilient navigation system that enables the race car to continue to follow the race track in the event of a localization failure. Our system uses direct perception information in planning and execution until the completion of localization recovery.The proposed localization system is first validated in a simulation with real measurement data contaminated by large artificial noises. The experimental validation during an actual race is also presented. The last part of our paper shows the results from the real-world tests where our system recovers from failures and prevents accidents in real-time, which proves the resilience of the proposed navigation system.
基于多模态测量和退化识别的高速自动驾驶赛车弹性导航
针对Indy自主挑战(IAC),提出了一种抗不可靠测量的鲁棒定位系统和一种从定位失败中恢复的弹性导航系统。IAC是一项全尺寸自动驾驶赛车的比赛,时速可达300公里。由于汽车高速、剧烈的振动,GPS/INS系统容易退化,导致严重的定位误差,从而导致灾难性事故。为了解决这个问题,我们提出了一个鲁棒的定位系统,该系统可以概率地评估多模态测量的可信度。在卡尔曼滤波的校正步骤中,引入了一种基于贝叶斯决策理论的超参数退化识别方法,实时选择最可信的测量值。由于比赛条件非常恶劣,即使我们稳健的定位方法也可能在短时间内失败,因此我们提出了一种弹性导航系统,使赛车在定位失败的情况下能够继续沿着赛道行驶。我们的系统在计划和执行中使用直接感知信息,直到完成定位恢复。该定位系统首先在受较大人工噪声污染的实测数据中进行了仿真验证。并在实际比赛中进行了实验验证。论文的最后一部分给出了系统从故障中实时恢复并防止事故发生的实际测试结果,证明了所提出的导航系统的弹性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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