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Main Authors: Abdullai, Blerim, Wang, Tony, Qiao, Xinyuan, Shkurti, Florian, Barfoot, Timothy D.
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2504.15899
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author Abdullai, Blerim
Wang, Tony
Qiao, Xinyuan
Shkurti, Florian
Barfoot, Timothy D.
author_facet Abdullai, Blerim
Wang, Tony
Qiao, Xinyuan
Shkurti, Florian
Barfoot, Timothy D.
contents GNSS is unreliable, inaccurate, and insufficient in many real-time autonomous field applications. In this work, we present a GNSS-free global localization solution that contains a method of registering imaging radar on the ground with overhead RGB imagery, with joint optimization of relative poses from odometry and global poses from our overhead registration. Previous works have used various combinations of ground sensors and overhead imagery, and different feature extraction and matching methods. These include various handcrafted and deep-learning-based methods for extracting features from overhead imagery. Our work presents insights on extracting essential features from RGB overhead images for effective global localization against overhead imagery using only ground radar and a single georeferenced initial guess. We motivate our method by evaluating it on datasets in diverse geographic conditions and robotic platforms, including on an Unmanned Surface Vessel (USV) as well as urban and suburban driving datasets.
format Preprint
id arxiv_https___arxiv_org_abs_2504_15899
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle RaSCL: Radar to Satellite Crossview Localization
Abdullai, Blerim
Wang, Tony
Qiao, Xinyuan
Shkurti, Florian
Barfoot, Timothy D.
Robotics
Computer Vision and Pattern Recognition
GNSS is unreliable, inaccurate, and insufficient in many real-time autonomous field applications. In this work, we present a GNSS-free global localization solution that contains a method of registering imaging radar on the ground with overhead RGB imagery, with joint optimization of relative poses from odometry and global poses from our overhead registration. Previous works have used various combinations of ground sensors and overhead imagery, and different feature extraction and matching methods. These include various handcrafted and deep-learning-based methods for extracting features from overhead imagery. Our work presents insights on extracting essential features from RGB overhead images for effective global localization against overhead imagery using only ground radar and a single georeferenced initial guess. We motivate our method by evaluating it on datasets in diverse geographic conditions and robotic platforms, including on an Unmanned Surface Vessel (USV) as well as urban and suburban driving datasets.
title RaSCL: Radar to Satellite Crossview Localization
topic Robotics
Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2504.15899