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Road pothole extraction and safety evaluation by integration of point cloud and images derived from mobile mapping sensors

机译:通过整合点云和移动测绘传感器得出的图像,对道路坑洼进行提取和安全性评估

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摘要

The automatic detection and extraction of road pothole distress is an important issue regarding healthy road structures, monitoring, and maintenance. In this paper, a new algorithm that integrates the mobile point cloud and images is proposed for the detection of road potholes. The algorithm includes three steps: 2D candidate pothole extraction from the images using a deep learning method, 3D candidate pothole extraction via a point cloud, and pothole determination by depth analysis. Because the texture features of the pothole and asphalt or concrete patches greatly differ from those of a normal road, pothole or patch distress images are used to establish a training set and train and test the deep learning system. Subsequently, the 2D candidate pothole is extracted from the images and labeled via the trained DeepLabv3 + , a state-of-the-art pixel-wise classification (semantic segmentation) network. The edge of the candidate pothole in the image is then used to establish the relationship between the mobile point cloud and images. The original road point cloud around the edge of the candidate pothole is categorized into two groups, that is, interior and exterior points, according to the relationship between the point cloud and images. The exterior points are used to fit the road plane and calculate the accurate 3D shape of the candidate potholes. Finally, the interior points of a candidate pothole are used to analyze the depth distribution to determine if the candidate pothole is a pothole or patch. To verify the proposed method, two cases, including real and simulation cases, are selected. The real case is an expressway in Shanghai with a length of 26.4 km. Based on the proposed method, 77 candidate potholes are extracted by the DeepLabv3 + system; 49 potholes and 28 patches are finally filtered. The affected lanes and pothole locations are analyzed. The simulation case is selected to verify the geometric accuracy of the detected potholes. The results show that the mean accuracy of the detected potholes is similar to 1.5-2.8 cm.
机译:道路坑洼窘迫的自动检测和提取是与健康的道路结构,监测和维护有关的重要问题。本文提出了一种结合移动点云和图像的新算法来检测道路坑洼。该算法包括三个步骤:使用深度学习方法从图像中提取2D候选坑洼,通过点云提取3D候选坑洼以及通过深度分析确定坑洼。由于坑洼和沥青或混凝土斑块的纹理特征与正常道路的纹理特征有很大不同,因此使用坑洼或斑块窘迫图像来建立训练集并训练和测试深度学习系统。随后,从图像中提取2D候选坑洼,并通过训练有素的DeepLabv3 +(一种最新的像素级分类(语义分割)网络)进行标记。然后使用图像中候选坑洞的边缘建立移动点云与图像之间的关系。根据点云和图像之间的关系,将候选坑洞边缘周围的原始道路点云分为两类,即内部点和外部点。外部点用于拟合道路平面并计算候选坑洞的准确3D形状。最后,使用候选坑洼的内部点来分析深度分布,以确定候选坑洼是坑洼还是斑块。为了验证所提出的方法,选择了两种情况,包括实际情况和模拟情况。实际案例是上海的一条高速公路,全长26.4公里。根据所提出的方法,DeepLabv3 +系统提取了77个候选坑洞。最终过滤了49个坑洼和28个斑点。分析受影响的车道和坑洞位置。选择模拟情况以验证检测到的坑洞的几何精度。结果表明,所检测到的坑洞的平均精度与1.5-2.8 cm相似。

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