In this work, we propose the LiDAR Road-Atlas, a compactable and efficient 3D map representation, for autonomous robot or vehicle navigation in general urban environment. The LiDAR Road-Atlas can be generated by an online mapping framework based on incrementally merging local 2D occupancy grid maps (2D-OGM). Specifically, the contributions of our LiDAR Road-Atlas representation are threefold. First, we solve the challenging problem of creating local 2D-OGM in non-structured urban scenes based on a real-time delimitation of traversable and curb regions in LiDAR point cloud. Second, we achieve accurate 3D mapping in multiple-layer urban road scenarios by a probabilistic fusion scheme. Third, we achieve very efficient 3D map representation of general environment thanks to the automatic local-OGM induced traversable-region labeling and a sparse probabilistic local point-cloud encoding. Given the LiDAR Road-Atlas, one can achieve accurate vehicle localization, path planning and some other tasks. Our map representation is insensitive to dynamic objects which can be filtered out in the resulting map based on a probabilistic fusion. Empirically, we compare our map representation with a couple of popular map representation methods in robotics and autonomous driving societies, and our map representation is more favorable in terms of efficiency, scalability and compactness. In addition, we also evaluate localization accuracy extensively given the created LiDAR Road-Atlas representations on several public benchmark datasets. With a 16-channel LiDAR sensor, our method achieves an average global localization errors of 0.26m (translation) and 1.07 degrees (rotation) on the Apollo dataset, and 0.89m (translation) and 1.29 degrees (rotation) on the MulRan dataset, respectively, at 10Hz, which validates the promising performance of our map representation for autonomous driving.
翻译:在这项工作中,我们建议使用LiDAR Road-Atlas, 这是一种紧凑而高效的3D地图代表, 用于在一般城市环境中进行自主机器人或车辆导航。 LiDAR Road-Atlas 可以通过一个基于逐步合并当地2D占用网格地图 (2D-OGM) 的在线制图框架产生。 具体地说,我们的LiDAR Road-Atlas 代表的贡献是三倍。 首先,我们解决了在非结构化城市场景中创建地方 2D-OGM (LiDAR Ralistalalalalality laderations) 的一个棘手问题。第二,我们通过一个概率整合方案,在多层城市道路假设中实现准确的 3D 映像 3A Road-Atal-Atlas 代表(Lial-Aralityal-Orationalationality), 并且通过一个更精准的地图工具, 将一个更精准的地图代表系统 和数字化方法 实现我们的自动代表。</s>