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Efficient and robust lane marking extraction from mobile lidar point clouds

机译:从移动激光雷达点云中高效而强大地提取车道标记

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Surveys of roadways with Mobile Laser Scanning (MLS) are now being conducted on a regular basis by many transportation agencies to provide detailed geometric information to support a wide range of applications, including asset management. Most MLS systems provide intensity (return signal strength) data as a point attribute in georeferenced point clouds, which may be used to estimateretro-reflectivity of pavement markings for effective maintenance. Nevertheless, the extraction of pavement markings from mobile lidar data remains an open challenge, due to variable noise, degree of wear on the markings, and road conditions. This paper addresses these challenges, presenting a novel approach for efficient, reliable extraction of lane markings, including those that have been significantly worn. First, using the MLS trajectory information, the lidar data is discretized into smaller sections, and then transformed to the local coordinate system, such that the road surface is near-horizontal for reliable extraction on roads with significant grade. Subsequently, the road surface is extracted using the constrained Random Sampling and Consensus (RANSAC) algorithm and then rasterized into a 2D intensity image to apply image processing techniques, namely: image segmentation to separate the lane markings from the road pavement, and a morphological opening operation to remove small objects. However, the extracted lane markings are prone to over-segmentation, due to occlusions or worn portions caused by moving vehicles. To rectify this, topologically-similar lane markings are associated with each other by computing line parameters (i.e., orientation and distance from the origin), which enables the gaps to be filled among the associated lanes. Finally, the remaining incorrect lane markings are detected and removed through a noise filtering phase using Dip test statistics. Examples of the effectiveness and application of the methodology are shown for a variety of sites with stripes of variable condition to highlight the robustness of the approach. Using optimized parameter values, the algorithm achieved F1 scores of 89–97% when tested on a variety of datasets encompassing a wide range of road scene types.
机译:许多运输机构现在定期使用移动激光扫描(MLS)进行道路勘测,以提供详细的几何信息,以支持包括资产管理在内的广泛应用。大多数MLS系统提供强度(回波信号强度)数据作为地理参考点云中的点属性,可用于估计路面标记的反光性,以进行有效维护。然而,由于噪声,标记的磨损程度和道路状况的影响,从移动激光雷达数据中提取路面标记仍然是一个挑战。本文针对这些挑战,提出了一种有效,可靠地提取车道标记(包括已严重磨损的标记)的新颖方法。首先,使用MLS轨迹信息,将激光雷达数据离散为较小的部分,然后转换为局部坐标系,以使路面接近水平,以便在坡度较大的道路上可靠地提取。随后,使用受约束的随机抽样和共识(RANSAC)算法提取路面,然后栅格化为2D强度图像以应用图像处理技术,即:图像分割以将车道标记与路面分开,并进行形态学开放清除小物件的操作。然而,由于由移动的车辆引起的遮挡或磨损部分,提取的车道标记易于过度分割。为了纠正这种情况,通过计算线参数(即,方向和距原点的距离)将拓扑相似的车道标记彼此关联,这使得能够在关联的车道之间填充间隙。最后,使用Dip测试统计信息,通过噪声过滤阶段检测并消除剩余的不正确车道标记。展示了该方法的有效性和适用性的示例,这些条件适用于条件可变的条带的各种站点,以突出该方法的鲁棒性。使用优化的参数值,在包含各种道路场景类型的各种数据集上进行测试时,该算法的F1分数达到89–97%。

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