Point cloud registration is a fundamental problem in 3D computer vision. Outdoor LiDAR point clouds are typically large-scale and complexly distributed, which makes the registration challenging. In this paper, we propose an efficient hierarchical network named HRegNet for large-scale outdoor LiDAR point cloud registration. Instead of using all points in the point clouds, HRegNet performs registration on hierarchically extracted keypoints and descriptors. The overall framework combines the reliable features in deeper layer and the precise position information in shallower layers to achieve robust and precise registration. We present a correspondence network to generate correct and accurate keypoints correspondences. Moreover, bilateral consensus and neighborhood consensus are introduced for keypoints matching and novel similarity features are designed to incorporate them into the correspondence network, which significantly improves the registration performance. Besides, the whole network is also highly efficient since only a small number of keypoints are used for registration. Extensive experiments are conducted on two large-scale outdoor LiDAR point cloud datasets to demonstrate the high accuracy and efficiency of the proposed HRegNet. The project website is https://ispc-group.github.io/hregnet.
翻译:3D 计算机视图中, 点云登记是一个根本性问题。 门外的LIDAR点云通常分布得大而复杂, 使得登记工作具有挑战性。 在本文中, 我们提出一个名为 HRegNet 的高效等级网络, 用于大型户外的LIDAR点云登记。 HRegNet 不是使用点云中的所有点, 而是在分级抽取的关键点和描述符上进行注册。 总体框架将更深层的可靠特征和浅层的准确位置信息结合起来, 以实现稳健和准确的注册。 我们提出了一个通信网络, 以生成正确和准确的密钥通信。 此外, 为关键点匹配和新颖相似性特征设计了双边共识和邻里共识, 以将其纳入通信网络, 大大改进了注册工作绩效。 此外, 整个网络也非常高效, 因为注册工作只使用少量关键点。 在两个大型户外的LDAR 点云层数据集上进行了广泛的实验, 以证明拟议的 HRegNet 网站是 https://ispc- group.github.io/ egnet. 。 项目网站是 。