SF-Loc: A Visual Mapping and Geo-Localization System based on Sparse Visual Structure Frames
Yuxuan Zhou, Xingxing Li, Shengyu Li, Chunxi Xia, Xuanbin Wang, Shaoquan Feng

TL;DR
SF-Loc is a lightweight visual mapping and geo-localization system that uses sparse visual structure frames with dense depth, enabling efficient, accurate, and compact localization suitable for urban environments.
Contribution
The paper introduces a novel map representation based on sparse visual structure frames with dense depth, improving flexibility, storage efficiency, and re-localization performance.
Findings
Map size reduced to 3 MB per kilometer in urban scenarios.
Achieves stable decimeter-level re-localization accuracy.
Effective in cross-season urban datasets.
Abstract
For high-level geo-spatial applications and intelligent robotics, accurate global pose information is of crucial importance. Map-aided localization is a universal approach to overcome the limitations of global navigation satellite system (GNSS) in challenging environments. However, current solutions face challenges in terms of mapping flexibility, storage burden and re-localization performance. In this work, we present SF-Loc, a lightweight visual mapping and map-aided localization system, whose core idea is the map representation based on sparse frames with dense but compact depth, termed as visual structure frames. In the mapping phase, multi-sensor dense bundle adjustment (MS-DBA) is applied to construct geo-referenced visual structure frames. The local co-visbility is checked to keep the map sparsity and achieve incremental mapping. In the localization phase, coarse-to-fine…
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Taxonomy
TopicsAdvanced Image and Video Retrieval Techniques · Robotics and Sensor-Based Localization · Image Retrieval and Classification Techniques
