Assessment of traffic sign retroreflectivity for autonomous vehicles: a comparison between handheld retroreflectometer and LiDAR data

Authors

  • Ziyad N. Aldoski Department of Highway and Bridge, Technical College of Engineering, Duhok Polytechnic University, Mazi Qr Duhok, Kurdistan-Iraq; Department of Transport Infrastructure and Water Resources Engineering, Faculty of Architecture, Civil Engineering and Transportation Sciences, Széchenyi István University, Győr, Hungary Author https://orcid.org/0000-0002-3362-7657
  • Csaba Koren Department of Transport Infrastructure and Water Resources Engineering, Faculty of Architecture, Civil Engineering and Transportation Sciences, Széchenyi István University, Győr, Hungary Author https://orcid.org/0000-0002-1034-0557

DOI:

https://doi.org/10.61089/aot2024.qxy24g93

Keywords:

traffic signs, retroreflectivity, autonomous vehicles, LIDAR, traffic safety

Abstract

This study investigates the critical role of retroreflectivity in traffic signs, particularly in the context of autonomous vehicles (AVs), where accurate detection is paramount for road safety. Retroreflectivity, influencing visibility and legibility, is essential for ensuring safe road conditions. The study aims to assess traffic sign retroreflectivity using handheld retroreflectometers and LiDAR data, offering a comprehensive comparison of results with a specific focus on the RA1 and RA2 traffic sign classes. In a real-world setting, an AV equipped with LiDAR sensors, GPS units, and a stereo camera collects data on traffic signs, including point cloud attributes such as intensity and density. Simultaneously, a handheld retroreflectometer measures retroreflectivity coefficients from identified traffic signs. While retroreflectometers provide precision, they face limitations regarding time-consuming measurements and handling large or elevated signs. In contrast, LiDAR systems efficiently evaluate retroreflective features for numerous signs without such constraints. Despite both methods consistently yielding accurate retroreflectivity, the study reveals a limited correlation between LiDAR point cloud data and handheld retroreflectivity coefficients. The implications of these findings are significant, particularly in the selection and maintenance of retroreflective materials in traffic signs, with direct repercussions on overall road safety. The results offer valuable insights into leveraging LiDAR technology to enhance AVs' detection capabilities. Recommendations for further research include exploring factors influencing LiDAR intensity, establishing a more accurate relationship between intensity and retroreflectivity, correcting the point cloud during intensity calibration, and testing empirical prediction models with a larger sample size. These endeavors aim to generate a robust regression graph and determine correlation coefficients, providing a more nuanced understanding of the intricate relationship between LiDAR data and handheld retroreflectivity coefficients in the context of traffic sign assessment.

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Published

2024-06-30

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Section

Original articles

How to Cite

Aldoski, Z. N., & Koren, C. (2024). Assessment of traffic sign retroreflectivity for autonomous vehicles: a comparison between handheld retroreflectometer and LiDAR data. Archives of Transport, 70(2), 7-26. https://doi.org/10.61089/aot2024.qxy24g93

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