Cooperative Road Geometry Estimation via Sharing Processed Camera Data

A. Sakr
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引用次数: 1

Abstract

Traffic in the near future is expected to be a mix of legacy vehicles with limited number of on-board sensors and sensor-rich vehicles with advanced sensing capabilities and different levels of automation. In this work, we propose a novel framework to leverage the existence of sensor-rich vehicles to assist legacy vehicles in estimating the road geometry which is an essential task for advanced driver assistance systems (ADAS). In the proposed method, the legacy vehicle, which is not necessarily equipped with any cameras or ranging sensors, receives processed camera data related to the road geometry from nearby sensor-rich vehicles. Then, the legacy vehicle fuses this data to build a local map of the road ahead for up to 200 m. Using experimental data, we show that the proposed method reduces the root mean square estimation error by 209% and the mean absolute estimation error by 857% compared to camera-based systems. The results also show that sensor-rich vehicles benefit from sharing the processed camera data and can significantly improve the accuracy of the road geometry estimate at much higher distances.
预计在不久的将来,交通将混合使用数量有限的车载传感器的传统车辆和具有先进传感能力和不同自动化水平的传感器丰富的车辆。在这项工作中,我们提出了一个新的框架,利用现有的传感器丰富的车辆来帮助传统车辆估计道路几何形状,这是高级驾驶员辅助系统(ADAS)的一项基本任务。在提出的方法中,传统车辆不一定配备任何摄像头或测距传感器,从附近传感器丰富的车辆接收处理过的与道路几何形状相关的摄像头数据。然后,传统车辆将这些数据融合在一起,建立一个200米以内的本地道路地图。实验数据表明,与基于摄像机的系统相比,该方法将均方根估计误差降低了209%,平均绝对估计误差降低了857%。结果还表明,传感器丰富的车辆受益于共享处理后的相机数据,并且可以显着提高道路几何形状估计的准确性。
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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