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Roadway feature mapping from point cloud data: A graph-based clustering approach

机译:从点云数据映射道路特征:基于图的聚类方法

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Connected and automated vehicle applications are facilitated by Enhanced Digital Maps (EDMs) of the roadway environment. Due to the high numbers of roadway miles and signalized intersections, there is significant research interest in the automatic extraction of such maps from georectified LiDAR data. Most existing methods convert the LiDAR point cloud to a set of images for feature extraction and mapping. This rasterization step loses information that could be retained if new methods were developed that work directly on the LiDAR point could for feature extraction and mapping, without rasterization. This article presents one such approach that operates on a road surface point cloud, processing small patches at a time using a locally adaptive version of Otsu's method to discard low intensity reflections while retaining reflections from roadway markings. The main new aspect of the approach is a graph-based clustering algorithm implemented directly on the point cloud. A cluster growing method is used to group similar road markings into the same group to enable detection of the stop bars and lane edges. Finally, a SAE-J2735 map message is created from the extracted roadway features.
机译:通过巷道环境的增强数字地图(EDMS)促进了连接和自动化车辆应用。由于巷道里程数量高,信号交叉口数量高,因此对来自Geectified LIDAR数据的自动提取此类地图具有显着的研究兴趣。大多数现有方法将LIDAR点云转换为特征提取和映射的一组图像。如果在LIDAR点直接工作的新方法开发新方法,则丢失可以保留的信息可以为特征提取和映射,而无光栅化。本文介绍了一种在路面点云上运行的这样一种方法,一次使用局部自适应版本的OTSU方法处理小块,以丢弃低强度反射,同时保持来自巷道标记的反射。该方法的主要新方面是直接在点云上实现的基于图形的聚类算法。群集生长方法用于将类似的道路标记分组到同一组中,以便检测止动杆和车道边缘。最后,从提取的道路特征中创建了SAE-J2735映射消息。

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