Uni-Mapper: Unified Mapping Framework for Multi-modal LiDARs in Complex and Dynamic Environments
Gilhwan Kang, Hogyun Kim, Byunghee Choi, Seokhwan Jeong, Young-Sik Shin, Younggun Cho

TL;DR
Uni-Mapper introduces a comprehensive framework for merging multi-modal LiDAR maps in dynamic environments, enabling robust, accurate, and scalable multi-robot mapping through dynamic object removal, loop closure, and pose graph optimization.
Contribution
It presents a novel unified mapping framework that effectively handles multi-modal LiDAR data and dynamic scenes for consistent multi-session map merging.
Findings
Superior loop detection across sensor modalities.
Robust mapping in dynamic environments.
Accurate multi-map alignment demonstrated on real-world datasets.
Abstract
The unification of disparate maps is crucial for enabling scalable robot operation across multiple sessions and collaborative multi-robot scenarios. However, achieving a unified map robust to sensor modalities and dynamic environments remains a challenging problem. Variations in LiDAR types and dynamic elements lead to differences in point cloud distribution and scene consistency, hindering reliable descriptor generation and loop closure detection essential for accurate map alignment. To address these challenges, this paper presents Uni-Mapper, a dynamic-aware 3D point cloud map merging framework for multi-modal LiDAR systems. It comprises dynamic object removal, dynamic-aware loop closure, and multi-modal LiDAR map merging modules. A voxel-wise free space hash map is built in a coarse-to-fine manner to identify and reject dynamic objects via temporal occupancy inconsistencies. The…
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