LiDAR odometry plays an important role in self-localization and mapping for autonomous navigation, which is usually treated as a scan registration problem. Although having achieved promising performance on KITTI odometry benchmark, the conventional searching tree-based approach still has the difficulty in dealing with the large scale point cloud efficiently. The recent spherical range image-based method enjoys the merits of fast nearest neighbor search by spherical mapping. However, it is not very effective to deal with the ground points nearly parallel to LiDAR beams. To address these issues, we propose a novel efficient LiDAR odometry approach by taking advantage of both non-ground spherical range image and bird's-eye-view map for ground points. Moreover, a range adaptive method is introduced to robustly estimate the local surface normal. Additionally, a very fast and memory-efficient model update scheme is proposed to fuse the points and their corresponding normals at different time-stamps. We have conducted extensive experiments on KITTI odometry benchmark, whose promising results demonstrate that our proposed approach is effective.
翻译:LiDAR odology在自我定位和自动导航绘图方面起着重要作用,这通常被视为扫描登记问题。虽然常规搜索树法在KITTI odology基准上取得了有希望的绩效,但常规搜索树法在有效处理大型点云方面仍然有困难。最近的球范围图像法具有通过球形绘图快速近邻搜索的优点。然而,处理与LIDAR 光束几乎平行的地面点并不十分有效。为了解决这些问题,我们建议采用创新的高效LIDAR odology方法,利用非地面球形图像和鸟类眼观地面图。此外,还引入了范围适应方法,以稳健地估计当地表面正常度。此外,还提出了一种非常快速和记忆高效的模型更新计划,以在不同时间点及其相应的正常度连接这些点。我们已经对KITTI 测量基准进行了广泛的实验,这些实验有望显示我们拟议的方法是有效的。