Large-scale incremental mapping is fundamental to the development of robust and reliable autonomous systems, as it underpins incremental environmental understanding with sequential inputs for navigation and decision-making. LiDAR is widely used for this purpose due to its accuracy and robustness. Recently, neural LiDAR mapping has shown impressive performance; however, most approaches rely on dense implicit representations and underutilize geometric structure, while existing voxel-guided methods struggle to achieve real-time performance. To address these challenges, we propose XGrid-Mapping, a hybrid grid framework that jointly exploits explicit and implicit representations for efficient neural LiDAR mapping. Specifically, the strategy combines a sparse grid, providing geometric priors and structural guidance, with an implicit dense grid that enriches scene representation. By coupling the VDB structure with a submap-based organization, the framework reduces computational load and enables efficient incremental mapping on a large scale. To mitigate discontinuities across submaps, we introduce a distillation-based overlap alignment strategy, in which preceding submaps supervise subsequent ones to ensure consistency in overlapping regions. To further enhance robustness and sampling efficiency, we incorporate a dynamic removal module. Extensive experiments show that our approach delivers superior mapping quality while overcoming the efficiency limitations of voxel-guided methods, thereby outperforming existing state-of-the-art mapping methods.
翻译:大规模增量式建图是开发鲁棒可靠自主系统的关键基础,因为它支撑着通过序列输入实现环境理解的逐步更新,以服务于导航与决策。激光雷达因其精度与鲁棒性而被广泛用于此目的。近年来,神经激光雷达建图展现出令人瞩目的性能;然而,大多数方法依赖于稠密的隐式表示且未充分利用几何结构,而现有的体素引导方法则难以实现实时性能。为应对这些挑战,我们提出了XGrid-Mapping,一种联合利用显式与隐式表示以实现高效神经激光雷达建图的混合栅格框架。具体而言,该策略将提供几何先验与结构引导的稀疏栅格,与丰富场景表示的隐式稠密栅格相结合。通过将VDB结构与基于子地图的组织方式相耦合,该框架降低了计算负载,并实现了大规模上的高效增量式建图。为缓解子地图间的非连续性,我们引入了一种基于蒸馏的重叠区域对齐策略,其中先前的子地图监督后续子地图,以确保重叠区域的一致性。为进一步增强鲁棒性与采样效率,我们集成了一个动态移除模块。大量实验表明,我们的方法在提供卓越建图质量的同时,克服了体素引导方法的效率限制,从而超越了现有的先进建图方法。