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Using Mobile LiDAR Data for Rapidly Updating Road Markings

机译:使用移动LiDAR数据快速更新道路标记

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Updating road markings is one of the routine tasks of transportation agencies. Compared with traditional road inventory mapping techniques, vehicle-borne mobile light detection and ranging (LiDAR) systems can undertake the job safely and efficiently. However, current hurdles include software and computing challenges when handling huge volumes of highly dense and irregularly distributed 3-D mobile LiDAR point clouds. This paper presents the development and implementation aspects of an automated object extraction strategy for rapid and accurate road marking inventory. The proposed road marking extraction method is based on 2-D georeferenced feature (GRF) images, which are interpolated from 3-D road surface points through a modified inverse distance weighted (IDW) interpolation. Weighted neighboring difference histogram (WNDH)-based dynamic thresholding and multiscale tensor voting (MSTV) are proposed to segment and extract road markings from the noisy corrupted GRF images. The results obtained using 3-D point clouds acquired by a RIEGL VMX-450 mobile LiDAR system in a subtropical urban environment are encouraging.
机译:更新道路标记是运输机构的日常任务之一。与传统道路清单制图技术相比,车载移动光检测和测距(LiDAR)系统可以安全有效地承担这项工作。但是,当前的障碍包括在处理大量高密度和不规则分布的3-D移动LiDAR点云时的软件和计算挑战。本文介绍了用于快速准确的道路标记清单的自动对象提取策略的开发和实施方面。所提出的道路标记提取方法基于2-D地理参考特征(GRF)图像,该图像是通过修改的反距离加权(IDW)插值从3-D路面点进行插值的。提出了基于加权邻域差异直方图(WNDH)的动态阈值和多尺度张量投票(MSTV),以从嘈杂的GRF图像中分割并提取道路标记。 RIEGL VMX-450移动LiDAR系统在亚热带城市环境中使用3-D点云获得的结果令人鼓舞。

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