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通过评估激光雷达能力和手持式后向反射率评估来改进自动驾驶车辆感知。

Improving Autonomous Vehicle Perception through Evaluating LiDAR Capabilities and Handheld Retroreflectivity Assessments.

作者信息

Aldoski Ziyad N, Koren Csaba

机构信息

Department of Highway and Bridge, Technical College of Engineering, Duhok Polytechnic University, 61 Zakho Road, Duhok 1006, Kurdistan Region, Iraq.

Department of Transport Infrastructure and Water Resources Engineering, Faculty of Architecture, Civil Engineering and Transportation Sciences, Széchenyi István University, Egyetem tér 1, 9026 Győr, Hungary.

出版信息

Sensors (Basel). 2024 May 22;24(11):3304. doi: 10.3390/s24113304.

Abstract

Road safety is a serious concern worldwide, and traffic signs play a critical role in confirming road safety, particularly in the context of AVs. Therefore, there is a need for ongoing advancements in traffic sign evaluation methodologies. This paper comprehensively analyzes the relationship between traffic sign retroreflectivity and LiDAR intensity to enhance visibility and communication on road networks. Using Python 3.10 programming and statistical techniques, we thoroughly analyzed handheld retroreflectivity coefficients alongside LiDAR intensity data from two LiDAR configurations: 2LRLiDAR and 1CLiDAR systems. The study focused specifically on RA1 and RA2 traffic sign classes, exploring correlations between retroreflectivity and intensity and identifying factors that may impact their performance. Our findings reveal variations in retroreflectivity compliance rates among different sign categories and color compositions, emphasizing the necessity for targeted interventions in sign design and production processes. Additionally, we observed distinct patterns in LiDAR intensity distributions, indicating the potential of LiDAR technology for assessing sign visibility. However, the limited correlations between retroreflectivity and LiDAR intensity underscore the need for further investigation and standardization efforts. This study provides valuable insights into optimizing traffic sign effectiveness, ultimately contributing to improved road safety conditions.

摘要

道路安全是全球范围内的一个严重问题,交通标志在确保道路安全方面发挥着关键作用,尤其是在自动驾驶汽车的背景下。因此,交通标志评估方法需要不断进步。本文全面分析了交通标志反光性与激光雷达强度之间的关系,以提高道路网络上的可见性和通信效果。使用Python 3.10编程和统计技术,我们深入分析了手持反光系数以及来自两种激光雷达配置(2LRLiDAR和1CLiDAR系统)的激光雷达强度数据。该研究特别关注RA1和RA2交通标志类别,探索反光性与强度之间的相关性,并确定可能影响其性能的因素。我们的研究结果揭示了不同标志类别和颜色组成之间反光性合规率的差异,强调了在标志设计和生产过程中进行有针对性干预的必要性。此外,我们观察到激光雷达强度分布存在明显模式,表明激光雷达技术在评估标志可见性方面的潜力。然而,反光性与激光雷达强度之间有限的相关性凸显了进一步研究和标准化工作的必要性。这项研究为优化交通标志有效性提供了有价值的见解,最终有助于改善道路安全状况。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/5197/11175066/4c9165d5575e/sensors-24-03304-g001.jpg

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