The SLIM system is designed to address the challenges of high memory consumption and reduced maintainability faced by dense LiDAR point cloud maps in long-term urban operations. The key contributions are:
Parameterization of point clouds into memory-efficient line and plane representations that encode geometric information and are suitable for map merging.
Pose graph optimization (PGO) and bundle adjustment (BA) to refine the LiDAR mapping in a coarse-to-fine manner using the parameterized lines and planes.
A map-centric nonlinear graph sparsification method to manage map size as sessions increase, ensuring scalability for long-term maintenance.
The SLIM system first converts raw LiDAR point clouds into parameterized lines and planes, which are then used for map merging, PGO, and BA. To address scalability, a map-centric nonlinear factor recovery method is introduced to sparsify poses while preserving mapping accuracy. The system is validated on three different multi-session datasets, demonstrating its capabilities in accuracy, lightweightness, and scalability.
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by Zehuan Yu, Z... alle arxiv.org 09-16-2024
https://arxiv.org/pdf/2409.08681.pdfDomande più approfondite