LiDAR odometry and localization has attracted increasing research interest in recent years. In the existing works, iterative closest point (ICP) is widely used since it is precise and efficient. Due to its non-convexity and its local iterative strategy, however, ICP-based method easily falls into local optima, which in turn calls for a precise initialization. In this paper, we propose CoFi, a Coarse-to-Fine ICP algorithm for LiDAR localization. Specifically, the proposed algorithm down-samples the input point sets under multiple voxel resolution, and gradually refines the transformation from the coarse point sets to the fine-grained point sets. In addition, we propose a map based LiDAR localization algorithm that extracts semantic feature points from the LiDAR frames and apply CoFi to estimate the pose on an efficient point cloud map. With the help of the Cylinder3D algorithm for LiDAR scan semantic segmentation, the proposed CoFi localization algorithm demonstrates the state-of-the-art performance on the KITTI odometry benchmark, with significant improvement over the literature.
翻译:近些年来,LiDAR odology和本地化吸引了越来越多的研究兴趣。 在现有的工程中,迭代最接近点(ICP)被广泛使用,因为它是精确而有效的。然而,由于它的非混凝土和它的地方迭代战略,比较方案采用的方法很容易落入本地的奥地玛,这反过来又需要精确的初始化。在本文中,我们提议了LiDAR本地化的CoFi,即CoFi,即一个Coarse-Fine 比较方案算法。具体地说,拟议的算法对多个 voxel 分辨率下调输入点组进行下标,并逐步完善从粗糙点组到精细点数组的转换。此外,我们提议了一个基于LiDAR 本地化的地图算法,从LiDAR 框架中提取出精选特征点,并应用CoFi来估计高效点云图上的方形。在Linder3D 运算法对LIDAR 扫描语系分法的帮助下,拟议的CFiFiFi- 地方化算法展示了KITTIOD 测量基准的状态,大大改进了文献。