道路标记的状况对机器视觉在白天干燥道路上的表现有直接影响吗?

Abdessamad El Krine, M. Redondin, Joffrey Girard, C. Heinkélé, Aude Stresser, V. Muzet
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引用次数: 0

摘要

即将到来的自动驾驶汽车(AV)需要重新评估甚至调整现有的基础设施,因为它们目前是基于人类感知设计的。事实上,先进的驾驶员辅助系统(ADAS)并不一定像驾驶员那样需要检测道路标记。与自动驾驶相关的主要挑战之一是优化车辆-基础设施对,以保证所有用户的安全。在这种情况下,我们比较了一辆配备ADAS机器视觉系统的车辆与动态后向反射仪在白天在一段道路上的性能。我们的研究结果质疑了在阳光条件下干燥道路上亮度对比度的文献阈值的可靠性。尽管存在旧的和磨损的道路标记,但ADAS摄像机能够在90%以上的情况下检测到边缘线。未检测到与标记状况不佳无关,而是与环境条件或基础设施的复杂性有关。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Does the Condition of the Road Markings Have a Direct Impact on the Performance of Machine Vision during the Day on Dry Roads?
The forthcoming arrival of automated vehicles (AV) on the roads requires the re-evaluation or even adaptation of existing infrastructures as they are currently designed on the basis of human perception. Indeed, advanced driver-assistance systems (ADAS) do not necessarily have the same needs as drivers to detect road markings. One of the main challenges related to AV is the optimisation of the vehicle–infrastructure pair in order to guarantee the safety of all users. In this context, we compared the performance of a vehicle equipped with an ADAS machine-vision system with a dynamic retroreflectometer during the daytime on a road section. Our results questioned the reliability of the literature thresholds of the luminance contrast ratio on a dry road under sunny conditions. Despite the presence of old and worn road markings, the ADAS camera was able to detect the edge lines in more than 90% of the cases. The non-detections were not related to the poor condition of the markings but to the environmental conditions or the complexity of the infrastructure.
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