Intelligent intersection managers can improve safety by detecting dangerous drivers or failure modes in autonomous vehicles, warning oncoming vehicles as they approach an intersection. In this work, we present FailureNet, a recurrent neural network trained end-to-end on trajectories of both nominal and reckless drivers in a scaled miniature city. FailureNet observes the poses of vehicles as they approach an intersection and detects whether a failure is present in the autonomy stack, warning cross-traffic of potentially dangerous drivers. FailureNet can accurately identify control failures, upstream perception errors, and speeding drivers, distinguishing them from nominal driving. The network is trained and deployed with autonomous vehicles in the MiniCity. Compared to speed or frequency-based predictors, FailureNet's recurrent neural network structure provides improved predictive power, yielding upwards of 84% accuracy when deployed on hardware.
翻译:智能化的路口管理系统可以通过检测自主驾驶车辆中的危险驾驶者或故障模式,提醒靠近路口的车辆,从而提升安全性。本文提出了FailureNet,它是一个经过端到端训练的递归神经网络,可在缩小的小型城市中观察车辆的姿态并检测自主驾驶系统中是否存在故障,提示横向交通流可能存在危险驾驶者。FailureNet能够精确地识别控制故障、上游感知错误和超速驾驶,并将其与正常驾驶区分开来。该网络是由MiniCity中的自主驾驶汽车进行训练和部署的。与基于速度或频率的预测方法相比,FailureNet的递归神经网络结构提供了更强的预测能力,在硬件上部署后可获得高达84%的准确率。