Robust Guardrail Instantiation and Trajectory Optimization of Complex Highways Based on Mobile Laser Scanning Point Clouds

Xin Jia, Qing Zhu, X. Ge, Ruifeng Ma, Da Zhang, Tao Liu
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Abstract

As a basic asset of highways, guardrails are essential objects in the digital modeling of highways. Therefore, generating the vectorial 3D trajectory of a guardrail from mobile laser scanning (MLS) point clouds is required for real digital modeling. However, most methods limit straight-line guardrails without considering the continuity and accuracy of the guardrails in turnoff and bend areas; thus, a completed 3D trajectory of a guardrail is not available. We use RANDLA-Net for extracting guardrails as preprocessing of MLS point clouds. We perform a region growth strategy based on linear constraints to obtain correct instantiations and a forward direction. The improved Douglas– Puke algorithm is used to simplify the center points of guardrail, and the 3D trajectory of every guardrail can be vectorized using cubic spline curve fitting. The proposed approach is validated on two 3-km case data sets that can completely instantiate MLS point clouds with remarkable effects. Quantitative evaluations demonstrate that the proposed guardrail instantiation algorithm achieves an overall precision and recall of 98.80% and 97.5%, respectively. The generated 3D trajectory can provide a high-precision design standard for the 3D modeling of the guardrail and has been applied to a long highway scene.
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基于移动激光扫描点云的复杂公路稳健护栏实例化与轨迹优化
护栏作为高速公路的基础资产,是高速公路数字化建模的重要对象。因此,需要利用移动激光扫描(MLS)点云生成护栏的矢量三维轨迹,以实现真正的数字建模。然而,大多数方法限制了直线护栏,而没有考虑护栏在岔道和弯道区域的连续性和准确性;因此,一个完整的3D轨迹的护栏是不可用的。我们使用RANDLA-Net提取护栏作为MLS点云的预处理。我们执行一种基于线性约束的区域增长策略,以获得正确的实例化和前进方向。采用改进的Douglas - Puke算法对护栏中心点进行简化,并利用三次样条曲线拟合对每个护栏的三维轨迹进行矢量化。在两个3公里的实例数据集上验证了该方法的有效性,结果表明该方法可以完全实例化MLS点云,效果显著。定量评价表明,本文提出的护栏实例化算法总体精度和召回率分别达到98.80%和97.5%。所生成的三维轨迹可以为护栏的三维建模提供高精度的设计标准,并已应用于长公路场景。
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