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Lane Marking Detection and Reconstruction with Line-Scan Imaging Data

机译:使用线扫描成像数据进行车道标记检测和重建

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摘要

Lane marking detection and localization are crucial for autonomous driving and lane-based pavement surveys. Numerous studies have been done to detect and locate lane markings with the purpose of advanced driver assistance systems, in which image data are usually captured by vision-based cameras. However, a limited number of studies have been done to identify lane markings using high-resolution laser images for road condition evaluation. In this study, the laser images are acquired with a digital highway data vehicle (DHDV). Subsequently, a novel methodology is presented for the automated lane marking identification and reconstruction, and is implemented in four phases: (1) binarization of the laser images with a new threshold method (multi-box segmentation based threshold method); (2) determination of candidate lane markings with closing operations and a marching square algorithm; (3) identification of true lane marking by eliminating false positives (FPs) using a linear support vector machine method; and (4) reconstruction of the damaged and dash lane marking segments to form a continuous lane marking based on the geometry features such as adjacent lane marking location and lane width. Finally, a case study is given to validate effects of the novel methodology. The findings indicate the new strategy is robust in image binarization and lane marking localization. This study would be beneficial in road lane-based pavement condition evaluation such as lane-based rutting measurement and crack classification.
机译:车道标记检测和定位对于自动驾驶和基于车道的路面测量至关重要。为了高级驾驶员辅助系统的目的,已经进行了许多研究来检测和定位车道标记,其中图像数据通常由基于视觉的相机捕获。然而,已经进行了有限数量的研究,以使用高分辨率激光图像进行道路状况评估来识别车道标记。在这项研究中,激光图像是用数字高速公路数据车(DHDV)采集的。随后,提出了一种用于自动车道标记识别和重建的新颖方法,并在四个阶段中实施:(1)使用新的阈值方法(基于多盒分割的阈值方法)对激光图像进行二值化; (2)通过关闭操作和行进平方算法确定候选车道标记; (3)通过使用线性支持向量机方法消除假阳性(FP)来识别真车道标记; (4)基于几何特征(例如相邻车道标记位置和车道宽度)重建受损车道标记和破折车道标记段以形成连续车道标记。最后,通过案例研究验证了该新方法的有效性。研究结果表明,该新策略在图像二值化和车道标记定位方面表现出色。这项研究对基于车道的路面状况评估(如基于车道的车辙测量和裂缝分类)将是有益的。

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