Autonomous driving will become pervasive in the coming decades. iDriving improves the safety of autonomous driving at intersections and increases efficiency by improving traffic throughput at intersections. In iDriving, roadside infrastructure remotely drives an autonomous vehicle at an intersection by offloading perception and planning from the vehicle to roadside infrastructure. To achieve this, iDriving must be able to process voluminous sensor data at full frame rate with a tail latency of less than 100 ms, without sacrificing accuracy. We describe algorithms and optimizations that enable it to achieve this goal using an accurate and lightweight perception component that reasons on composite views derived from overlapping sensors, and a planner that jointly plans trajectories for multiple vehicles. In our evaluations, iDriving always ensures safe passage of vehicles, while autonomous driving can only do so 27% of the time. iDriving also results in 5x lower wait times than other approaches because it enables traffic-light free intersections.
翻译:在未来几十年里, 自动驾驶将变得十分普遍。 iDriping通过改善交叉路口的交通流量,提高了十字路口自动驾驶的安全性,提高了效率。 在 iDriviing 中, 路边基础设施通过卸载感知和从车辆到路边基础设施的规划, 远程驾驶一个十字路口的自主车辆。 要做到这一点, iDrivive 必须能够在不牺牲准确性的情况下, 以尾部延缓不到100米的速度处理全框架传感数据。 我们用精确和轻量的感知部分来描述有助于它实现这一目标的算法和优化, 该部分是来自重叠感应器的综合观点的理由, 以及一个联合规划多部车辆轨迹的规划师。 在我们的评价中, iDriviviviing 总是确保车辆的安全通行, 而自主驾驶只能用27%的时间来完成。 iDrivivive( iDriving) 也比其他方法的等待时间低5x次, 因为它可以让交通- 灯自由交叉。