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基于机器学习策略利用激光雷达和图像衍生移动测量系统点云进行的三维道路边界提取

3D Road Boundary Extraction Based on Machine Learning Strategy Using LiDAR and Image-Derived MMS Point Clouds.

作者信息

Suleymanoglu Baris, Soycan Metin, Toth Charles

机构信息

Department of Civil, Environmental and Geodetic Engineering, The Ohio State University, 470 Hitchcock Hall, 2070 Neil Ave., Columbus, OH 43210, USA.

出版信息

Sensors (Basel). 2024 Jan 13;24(2):503. doi: 10.3390/s24020503.

DOI:10.3390/s24020503
PMID:38257597
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC10820060/
Abstract

The precise extraction of road boundaries is an essential task to obtain road infrastructure data that can support various applications, such as maintenance, autonomous driving, vehicle navigation, and the generation of high-definition maps (HD map). Despite promising outcomes in prior studies, challenges persist in road extraction, particularly in discerning diverse road types. The proposed methodology integrates state-of-the-art techniques like DBSCAN and RANSAC, aiming to establish a universally applicable approach for diverse mobile mapping systems. This effort represents a pioneering step in extracting road information from image-based point cloud data. To assess the efficacy of the proposed method, we conducted experiments using a large-scale dataset acquired by two mobile mapping systems on the Yıldız Technical University campus; one system was configured as a mobile LiDAR system (MLS), while the other was equipped with cameras to operate as a photogrammetry-based mobile mapping system (MMS). Using manually measured reference road boundary data, we evaluated the completeness, correctness, and quality parameters of the road extraction performance of our proposed method based on two datasets. The completeness rates were 93.2% and 84.5%, while the correctness rates were 98.6% and 93.6%, respectively. The overall quality of the road curb extraction was 93.9% and 84.5% for the two datasets. Our proposed algorithm is capable of accurately extracting straight or curved road boundaries and curbs from complex point cloud data that includes vehicles, pedestrians, and other obstacles in urban environment. Furthermore, our experiments demonstrate that the algorithm can be applied to point cloud data acquired from different systems, such as MLS and MMS, with varying spatial resolutions and accuracy levels.

摘要

精确提取道路边界是获取道路基础设施数据的一项重要任务,这些数据可支持各种应用,如维护、自动驾驶、车辆导航以及高清地图(HD地图)的生成。尽管先前的研究取得了不错的成果,但道路提取仍存在挑战,尤其是在辨别不同道路类型方面。所提出的方法集成了DBSCAN和RANSAC等先进技术,旨在为各种移动测绘系统建立一种普遍适用的方法。这一努力代表了从基于图像的点云数据中提取道路信息的开创性一步。为了评估所提方法的有效性,我们使用了由两个移动测绘系统在伊斯坦布尔技术大学校园获取的大规模数据集进行实验;一个系统配置为移动激光雷达系统(MLS),另一个配备摄像头以作为基于摄影测量的移动测绘系统(MMS)运行。利用手动测量的参考道路边界数据,我们基于两个数据集评估了所提方法道路提取性能的完整性、正确性和质量参数。完整性率分别为93.2%和84.5%,而正确率分别为98.6%和93.6%。两个数据集的道路路缘提取总体质量分别为93.9%和84.5%。我们提出的算法能够从包含城市环境中的车辆、行人及其他障碍物的复杂点云数据中准确提取直线或曲线道路边界和路缘。此外,我们的实验表明,该算法可应用于从不同系统(如MLS和MMS)获取的具有不同空间分辨率和精度水平的点云数据。

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本文引用的文献

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