Real-time ground marking analysis for safe trajectories of autonomous mobile robots

Marie-Anne Bauda, Cecile Bazot, Stanislas Larnier
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引用次数: 9

Abstract

Scene understanding is widely linked to the perception of it. Lane detection and tracking are commonly used in the context of autonomous transportation to estimate the drivable area on marked road. Real-time, accurate and efficient analyses are particularly critical when mobile robots are considered. Moreover, safe trajectories are of importance for those robotic vehicles evolving other vehicles or humans interactions. This paper proposes an unsupervised and robust vision-based approach that provides Lane Marking Detection (LMD) to help the positioning system. The approach is applied in two different environments of AKKA Research projects: Link & Go, an autonomous car; and AIR-COBOT, a collaborative mobile robot which inspects aircrafts during maintenance operations. The autonomous car has to travel on roads and to stay in its ego-lane. The mobile robot cooperates with human and has to circulate in the airport and in hangars. In both contexts, painted lanes on the ground could help the navigation system. We demonstrate the benefits of our proposal through an evaluation of the proposed approach on real datasets with appropriate metrics.
自主移动机器人安全轨迹的实时地面标记分析
场景理解与对场景的感知有着广泛的联系。车道检测和跟踪是自动驾驶交通中常用的一种估计标记道路上可行驶区域的方法。当考虑移动机器人时,实时、准确和高效的分析尤为重要。此外,安全轨迹对于机器人车辆与其他车辆或人类的互动至关重要。本文提出了一种基于无监督和鲁棒性视觉的车道标记检测方法来帮助定位系统。该方法应用于AKKA研究项目的两个不同环境:自动驾驶汽车Link & Go;AIR-COBOT是一种协作式移动机器人,可以在维修过程中检查飞机。自动驾驶汽车必须在道路上行驶,并保持在自己的车道上。移动机器人与人合作,在机场和机库中流通。在这两种情况下,地面上的彩绘车道都可以帮助导航系统。我们通过对具有适当指标的真实数据集的建议方法的评估来证明我们建议的好处。
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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