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LiteVLoc: Map-Lite Visual Localization for Image Goal Navigation

6 October 2024
Jianhao Jiao
Jinhao He
Changkun Liu
Sebastian Aegidius
Xiangcheng Hu
Tristan Braud
Dimitrios Kanoulas
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Abstract

This paper presents LiteVLoc, a hierarchical visual localization framework that uses a lightweight topo-metric map to represent the environment. The method consists of three sequential modules that estimate camera poses in a coarse-to-fine manner. Unlike mainstream approaches relying on detailed 3D representations, LiteVLoc reduces storage overhead by leveraging learning-based feature matching and geometric solvers for metric pose estimation. A novel dataset for the map-free relocalization task is also introduced. Extensive experiments including localization and navigation in both simulated and real-world scenarios have validate the system's performance and demonstrated its precision and efficiency for large-scale deployment. Code and data will be made publicly available.

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