协同驾驶的协同感知与定位

Aaron Miller, Kyungzun Rim, Parth Chopra, Paritosh Kelkar, M. Likhachev
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引用次数: 21

摘要

预计在相当长的一段时间内,全自动驾驶汽车将与不那么先进的汽车共享道路。此外,道路上越来越多的车辆配备了各种低保真传感器,这些传感器可以提供一些感知和定位数据,但质量不够高,无法实现完全自主。在本文中,我们开发了一种感知和定位系统,该系统允许具有低保真传感器的车辆结合来自前方车辆的高保真观测,从而使两辆车都能完全自主运行。由此产生的系统产生的感知和定位信息在高保真传感器覆盖的区域是低噪声的,在只有低保真传感器观察到的区域避免了误报,同时处理了两车之间通信链路的延迟和中断。该系统的核心是使用一组扩展卡尔曼滤波器,该滤波器结合了两辆车传感器的观测结果,并利用道路几何信息进行推断。感知和定位算法在仿真和真实车辆上作为全协同驾驶系统的一部分进行了评估。
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Cooperative Perception and Localization for Cooperative Driving
Fully autonomous vehicles are expected to share the road with less advanced vehicles for a significant period of time. Furthermore, an increasing number of vehicles on the road are equipped with a variety of low-fidelity sensors which provide some perception and localization data, but not at a high enough quality for full autonomy. In this paper, we develop a perception and localization system that allows a vehicle with low-fidelity sensors to incorporate high-fidelity observations from a vehicle in front of it, allowing both vehicles to operate with full autonomy. The resulting system generates perception and localization information that is both low-noise in regions covered by high-fidelity sensors and avoids false negatives in areas only observed by low-fidelity sensors, while dealing with latency and dropout of the communication link between the two vehicles. At its core, the system uses a set of Extended Kalman filters which incorporate observations from both vehicles’ sensors and extrapolate them using information about the road geometry. The perception and localization algorithms are evaluated both in simulation and on real vehicles as part of a full cooperative driving system.
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