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Main Authors: Huang, Kun, Wang, Yifu, Zhang, Si'ao, Wang, Zhirui, Ouyang, Zhanpeng, Yu, Zhenghua, Kneip, Laurent
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2503.03230
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author Huang, Kun
Wang, Yifu
Zhang, Si'ao
Wang, Zhirui
Ouyang, Zhanpeng
Yu, Zhenghua
Kneip, Laurent
author_facet Huang, Kun
Wang, Yifu
Zhang, Si'ao
Wang, Zhirui
Ouyang, Zhanpeng
Yu, Zhenghua
Kneip, Laurent
contents The present paper proposes optimization-based solutions to visual SLAM with a vehicle-mounted surround-view camera system. Owing to their original use-case, such systems often only contain a single camera facing into either direction and very limited overlap between fields of view. Our novelty consist of three optimization modules targeting at practical online calibration of exterior orientations from simple two-view geometry, reliable front-end initialization of relative displacements, and accurate back-end optimization using a continuous-time trajectory model. The commonality between the proposed modules is given by the fact that all three of them exploit motion priors that are related to the inherent non-holonomic characteristics of passenger vehicle motion. In contrast to prior related art, the proposed modules furthermore excel in terms of bypassing partial unobservabilities in the transformation variables that commonly occur for Ackermann-motion. As a further contribution, the modules are built into a novel surround-view camera SLAM system that specifically targets deployment on Ackermann vehicles operating in urban environments. All modules are studied in the context of in-depth ablation studies, and the practical validity of the entire framework is supported by a successful application to challenging, large-scale publicly available online datasets. Note that upon acceptance, the entire framework is scheduled for open-source release as part of an extension of the OpenGV library.
format Preprint
id arxiv_https___arxiv_org_abs_2503_03230
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle OpenGV 2.0: Motion prior-assisted calibration and SLAM with vehicle-mounted surround-view systems
Huang, Kun
Wang, Yifu
Zhang, Si'ao
Wang, Zhirui
Ouyang, Zhanpeng
Yu, Zhenghua
Kneip, Laurent
Robotics
The present paper proposes optimization-based solutions to visual SLAM with a vehicle-mounted surround-view camera system. Owing to their original use-case, such systems often only contain a single camera facing into either direction and very limited overlap between fields of view. Our novelty consist of three optimization modules targeting at practical online calibration of exterior orientations from simple two-view geometry, reliable front-end initialization of relative displacements, and accurate back-end optimization using a continuous-time trajectory model. The commonality between the proposed modules is given by the fact that all three of them exploit motion priors that are related to the inherent non-holonomic characteristics of passenger vehicle motion. In contrast to prior related art, the proposed modules furthermore excel in terms of bypassing partial unobservabilities in the transformation variables that commonly occur for Ackermann-motion. As a further contribution, the modules are built into a novel surround-view camera SLAM system that specifically targets deployment on Ackermann vehicles operating in urban environments. All modules are studied in the context of in-depth ablation studies, and the practical validity of the entire framework is supported by a successful application to challenging, large-scale publicly available online datasets. Note that upon acceptance, the entire framework is scheduled for open-source release as part of an extension of the OpenGV library.
title OpenGV 2.0: Motion prior-assisted calibration and SLAM with vehicle-mounted surround-view systems
topic Robotics
url https://arxiv.org/abs/2503.03230