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ROAD SURFACE DETECTION FROM MOBILE LIDAR DATA

机译:来自移动激光器数据的路面检测

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摘要

The accurate three-dimensional road surface information is highly useful for health assessment and maintenance of roads. It is basic information for further analysis in several applications including road surface settlement, pavement condition assessment and slope collapse. Mobile LiDAR system (MLS) is frequently used now a days to collect detail road surface and its surrounding information in terms three-dimensional (3D) point cloud. Extraction of road surface from volumetric point cloud data is still in infancy stage because of heavy data processing requirement and the complexity in the road environment. The extraction of roads especially rural road, where road-curb is not present is very tedious job especially in Indian roadway settings. Only a few studies are available, and none for Indian roads, in the literature for rural road detection. The limitations of existing studies are in terms of their lower accuracy, very slow speed of data processing and detection of other objects having similar characteristics as the road surface. A fast and accurate method is proposed for LiDAR data points of road surface detection, keeping in mind the essence of road surface extraction especially for Indian rural roads. The Mobile LiDAR data in XYZI format is used as input in the proposed method. First square gridding is performed and ground points are roughly extracted. Then planar surface detection using mathematical framework of principal component analysis (PCA) is performed and further road surface points are detected using similarity in intensity and height difference of road surface pointe in their neighbourhood.A case study was performed on the MLS data points captured along wide-street (two-lane road without curb) of 156 m length along rural roadway site in the outskirt of Bengaluru city (South-West of India). The proposed algorithm was implemented on the MLS data of test site and its performance was evaluated it terms of recall, precision and overall accuracy that were 95.27%, 98.85% and 94.23%, respectively. The algorithm was found computationally time efficient. A 7.6 million MLS data points of size 27.1 MB from test site were processed in 24 minutes using the available computational resources. The proposed method is found to work even for worst case scenarios, i.e., complex road environments and rural roads, where road boundary is not clear and generally merged with road-side features.
机译:准确的三维路面信息对于道路的健康评估和维护非常有用。在包括道路表面沉降,路面条件评估和斜坡塌陷,包括路面沉降,路面条件评估和斜坡崩溃等应用是进一步分析的基本信息。移动激光雷达系统(MLS)现在经常使用待收集详细路面及其周围信息的天数及其围绕三维(3D)点云。由于重量的数据处理要求和道路环境中的复杂性,从容积点云数据提取路面仍处于起步阶段。道路的提取尤其是农村公路,道路 - 遏制不存在是非常繁琐的工作,特别是在印度道路环境中。只有几项研究是可用的,而不是印度道路,在农村公路检测的文献中。现有研究的局限性在于其较低的精度,数据处理的速度非常慢,以及检测具有与路面具有相似特性的其他物体的速度。提出了一种快速准确的方法,用于LIDAR数据点检测,牢记道路表面提取的本质,尤其适用于印度农村道路。 XYZI格式中的移动LIDAR数据用作所提出的方法中的输入。执行第一方形网格,粗略提取地点。然后使用主成分分析(PCA)的数学框架进行平面表面检测,并使用其邻近的路面引脚的强度和高度差异的相似性来检测进一步的道路表面点。在沿捕获的MLS数据点进行案例研究沿着孟加拉堡市郊(印度西南部)的农村巷道座位,宽街(两车道路)156米长。所提出的算法在测试现场的MLS数据上实施,其性能分别评估了召回,精度和整体准确性的条款,分别为95.27%,98.85%和94.23%。算法发现计算上的时间效率。使用可用的计算资源,在24分钟内处理760万MLS尺寸27.1 MB的数据点。拟议的方法甚至可以为最坏情况下工作,即复杂的道路环境和农村道路,道路边界不明确,通常与道路侧特征合并。

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