Real-time registration of partially overlapping point clouds has emerging applications in cooperative perception for autonomous vehicles and multi-agent SLAM. The relative translation between point clouds in these applications is higher than in traditional SLAM and odometry applications, which challenges the identification of correspondences and a successful registration. In this paper, we propose a novel registration method for partially overlapping point clouds where correspondences are learned using an efficient point-wise feature encoder, and refined using a graph-based attention network. This attention network exploits geometrical relationships between key points to improve the matching in point clouds with low overlap. At inference time, the relative pose transformation is obtained by robustly fitting the correspondences through sample consensus. The evaluation is performed on the KITTI dataset and a novel synthetic dataset including low-overlapping point clouds with displacements of up to 30m. The proposed method achieves on-par performance with state-of-the-art methods on the KITTI dataset, and outperforms existing methods for low overlapping point clouds. Additionally, the proposed method achieves significantly faster inference times, as low as 410ms, between 5 and 35 times faster than competing methods. Our code and dataset are available at https://github.com/eduardohenriquearnold/fastreg.
翻译:部分重叠点云的实时登记在自主车辆和多试剂 SLAM 的合作观念中出现了新的应用。这些应用中点云的相对翻译高于传统的 SLAM 和 odograph 应用,这对信件的识别和成功登记提出了挑战。在本文中,我们建议了对部分重叠点云的新型登记方法,即使用高效的点点特性编码器学习通信,并使用基于图形的注意网络加以改进。这个关注网络利用了关键点之间的几何关系,以改进点云与低重叠点云的匹配。在推断时,通过抽样共识使信件的匹配变得相对的构成变化。对KITTI数据集和新的合成数据集进行了评估,包括低重叠点云与最多30米的迁移。 拟议的方法在KITTI 数据集上实现了最先进的功能性能,并超越了现有低重叠点云的当前方法。此外,拟议方法的推导时间大大加快了推论时间,在410米之间,在5到35米之间,我们现有的数据节中。