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首页> 外文期刊>International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences >LIDAR-BASED LANE MARKING EXTRACTION THROUGH INTENSITY THRESHOLDING AND DEEP LEARNING APPROACHES: A PAVEMENT-BASED ASSESSMENT
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LIDAR-BASED LANE MARKING EXTRACTION THROUGH INTENSITY THRESHOLDING AND DEEP LEARNING APPROACHES: A PAVEMENT-BASED ASSESSMENT

机译:基于LIDAR的车道标记通过强度阈值和深度学习方法提取:基于路面的评估

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With the rapid development of autonomous vehicles (AV) and high-definition (HD) maps, up-to-date lane marking information is necessary. Over the years, several lane marking extraction approaches have been proposed with many of them based on accurate and dense Light Detection and Ranging (LiDAR) point cloud data collected by mobile mapping systems (MMS). This study proposes a normalized intensity thresholding strategy and a deep learning strategy with automatically generated labels. The former extracts lane markings directly from LiDAR point clouds while the latter utilizes 2D intensity images generated from the LiDAR point cloud. Additionally, the proposed approaches are also compared with state-of-the-art strategies such as original intensity thresholding and a deep learning approach based on manually established labels. Finally, each strategy is evaluated in asphalt and concrete pavements separately to assess their sensitivity to the nature of pavement surface. The results show that the deep learning model trained with automatically generated labels performs the best in both asphalt and concrete pavement area with an F1-score of 84.9% and 85.1%. In asphalt pavement area, original intensity thresholding strategy shows a lane marking extraction performance comparable to the other strategies while in concrete pavement area, it is significantly poor with an F1-score of 65.1%. Between the proposed normalized intensity thresholding and deep learning model trained with manually labeled data, the former performs better in asphalt pavement area while the latter obtains better results in concrete pavements.
机译:随着自动车辆(AV)和高清(HD)地图的快速发展,最新的车道标记信息是必要的。多年来,基于由移动映射系统(MMS)收集的准确和密集的光检测和测距(LIDAR)点云数据,提出了许多泳道标记提取方法。本研究提出了标准化的强度阈值策略和自动生成标签的深度学习策略。前者直接从LIDAR点云提取车道标记,而后者利用了激光雷云生成的2D强度图像。此外,还将所提出的方法与最先进的策略进行比较,例如原始强度阈值和基于手动建立的标签的深度学习方法。最后,每种策略在沥青和混凝土路面中分别评估,以评估它们对路面表面性质的敏感性。结果表明,随着自动生成的标签训练的深度学习模型在沥青和混凝土路面区域中表现出最佳的F1分数为84.9%和85.1%。在沥青路面区域中,原始强度阈值策略显示了与其他策略相当的车道标记型换油性能,而在混凝土路面区域,其F1分数为65.1%。在采用手动标记数据培训的建议的归一化强度阈值和深度学习模型之间,前者在沥青路面区域进行更好的时间,而后者在混凝土路面上获得更好的结果。

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