Feature-Centric Approach for Learning-Based Prediction of Pavement Marking Retroreflectivity from Mobile LiDAR Data

IF 3.1 3区 工程技术 Q2 CONSTRUCTION & BUILDING TECHNOLOGY Buildings Pub Date : 2023-12-25 DOI:10.3390/buildings14010062
Dmitry Manasreh, Munir D. Nazzal, A. Abbas
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Abstract

Given the crucial importance of pavement marking retroreflectivity in ensuring visibility for road safety, this research investigates the correlation between pavement marking reflectivity and LiDAR data. Empirical data were collected from eight road sections using both a handheld retroreflectometer and a mobile LiDAR. The approach proposed focuses on extracting important features from pavement marking regions of the LiDAR point cloud. A comprehensive feature extraction and feature selection process was employed. In addition, a well-rounded selection of learning algorithms was evaluated. A rigorous hold-out evaluation was incorporated, ensuring that the reported performance metrics were robustly generalizable. The best performing model was able to achieve an R2 of 0.824 on unseen data. The findings of this study illuminate the potential for leveraging relatively inexpensive mobile LiDAR sensors in combination with machine learning techniques in conducting efficient pavement marking assessments, not only to detect completely degraded markings, but to accurately estimate retroreflective properties.
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从移动激光雷达数据中基于学习预测路面标线反射率的以特征为中心的方法
鉴于路面标线的反射率对确保道路安全能见度至关重要,本研究调查了路面标线反射率与激光雷达数据之间的相关性。使用手持式逆反射仪和移动式激光雷达从八个路段收集了经验数据。所提出的方法侧重于从激光雷达点云的路面标记区域提取重要特征。该方法采用了全面的特征提取和特征选择过程。此外,还对学习算法的全面选择进行了评估。此外,还进行了严格的保持评估,以确保报告的性能指标具有强大的通用性。表现最好的模型在未见数据上的 R2 值达到了 0.824。这项研究的结果阐明了利用相对廉价的移动激光雷达传感器结合机器学习技术进行高效路面标线评估的潜力,不仅能检测完全退化的标线,还能准确估计逆反射特性。
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来源期刊
Buildings
Buildings Multiple-
CiteScore
3.40
自引率
26.30%
发文量
1883
审稿时长
11 weeks
期刊介绍: BUILDINGS content is primarily staff-written and submitted information is evaluated by the editors for its value to the audience. Such information may be used in articles with appropriate attribution to the source. The editorial staff considers information on the following topics: -Issues directed at building owners and facility managers in North America -Issues relevant to existing buildings, including retrofits, maintenance and modernization -Solution-based content, such as tips and tricks -New construction but only with an eye to issues involving maintenance and operation We generally do not review the following topics because these are not relevant to our readers: -Information on the residential market with the exception of multifamily buildings -International news unrelated to the North American market -Real estate market updates or construction updates
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