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SparseLoc: Sparse Open-Set Landmark-based Global Localization for Autonomous Navigation

SparseLoc: Sparse Open-Set Landmark-based Global Localization for Autonomous Navigation

来源:Arxiv_logoArxiv
英文摘要

Global localization is a critical problem in autonomous navigation, enabling precise positioning without reliance on GPS. Modern global localization techniques often depend on dense LiDAR maps, which, while precise, require extensive storage and computational resources. Recent approaches have explored alternative methods, such as sparse maps and learned features, but they suffer from poor robustness and generalization. We propose SparseLoc, a global localization framework that leverages vision-language foundation models to generate sparse, semantic-topometric maps in a zero-shot manner. It combines this map representation with a Monte Carlo localization scheme enhanced by a novel late optimization strategy, ensuring improved pose estimation. By constructing compact yet highly discriminative maps and refining localization through a carefully designed optimization schedule, SparseLoc overcomes the limitations of existing techniques, offering a more efficient and robust solution for global localization. Our system achieves over a 5X improvement in localization accuracy compared to existing sparse mapping techniques. Despite utilizing only 1/500th of the points of dense mapping methods, it achieves comparable performance, maintaining an average global localization error below 5m and 2 degrees on KITTI sequences.

Pranjal Paul、Vineeth Bhat、Tejas Salian、Mohammad Omama、Krishna Murthy Jatavallabhula、Naveen Arulselvan、K. Madhava Krishna

自动化技术、自动化技术设备计算技术、计算机技术

Pranjal Paul,Vineeth Bhat,Tejas Salian,Mohammad Omama,Krishna Murthy Jatavallabhula,Naveen Arulselvan,K. Madhava Krishna.SparseLoc: Sparse Open-Set Landmark-based Global Localization for Autonomous Navigation[EB/OL].(2025-03-30)[2025-05-21].https://arxiv.org/abs/2503.23465.点此复制

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