论文标题
自动驾驶从天上开车:设计和端到端性能评估
Autonomous Driving From the Sky: Design and End-to-End Performance Evaluation
论文作者
论文摘要
为了使自动驾驶汽车无需人工干预即可操作,来自当地传感器的信息共享起着基本作用。通过带宽受限的通信系统来应对这可能是一项挑战,该系统要求采用新的无线技术,例如在MMWave频段中解决容量问题。另一种方法是利用无人机,能够为人类用户及其汽车提供空中鸟类的眼光,原本无法使用,从而提供更广泛,更集中的观察结果。在本文中,我们结合了一个方面和设计一个新颖的框架,在该框架中,在MMWave运行的无人机将感官信息广播到地面,以扩展(当地)感知范围的车辆。为此,我们使用NS-3进行了全股端到端模拟活动,考虑了来自斯坦福无人机数据集中的真实无人机数据,并研究了代表不同无人机到地面通信策略的四个方案。我们的结果集中在天空中的集中数据处理与地面分布式本地处理之间的权衡,以及与通信过程的吞吐量,延迟和可靠性有关的考虑。
For autonomous vehicles to operate without human intervention, information sharing from local sensors plays a fundamental role. This can be challenging to handle with bandwidth-constrained communication systems, which calls for the adoption of new wireless technologies, like in the mmwave bands, to solve capacity issues. Another approach is to exploit uav, able to provide human users and their cars with an aerial bird's-eye view of the scene otherwise unavailable, thus offering broader and more centralized observations. In this article we combine both aspects and design a novel framework in which uav, operating at mmwave, broadcast sensory information to the ground as a means to extend the (local) perception range of vehicles. To do so, we conduct a full-stack end-to-end simulation campaign with ns-3 considering real UAV data from the Stanford Drone Dataset, and study four scenarios representing different uav-to-ground communication strategies. Our results focus on the trade-off between centralized data processing in the sky vs. distributed local processing on the ground, with considerations related to the throughput, latency and reliability of the communication process.