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Main Authors: Zhao, Hongxu, Zeng, Guangyang, Shao, Yunling, Zhang, Tengfei, Wu, Junfeng
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2510.24571
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author Zhao, Hongxu
Zeng, Guangyang
Shao, Yunling
Zhang, Tengfei
Wu, Junfeng
author_facet Zhao, Hongxu
Zeng, Guangyang
Shao, Yunling
Zhang, Tengfei
Wu, Junfeng
contents The calibration of extrinsic parameters and clock offsets between sensors for high-accuracy performance in underwater SLAM systems remains insufficiently explored. Existing methods for Doppler Velocity Log (DVL) calibration are either constrained to specific sensor configurations or rely on oversimplified assumptions, and none jointly estimate translational extrinsics and time offsets. We propose a Unified Iterative Calibration (UIC) framework for general DVL sensor setups, formulated as a Maximum A Posteriori (MAP) estimation with a Gaussian Process (GP) motion prior for high-fidelity motion interpolation. UIC alternates between efficient GP-based motion state updates and gradient-based calibration variable updates, supported by a provably statistically consistent sequential initialization scheme. The proposed UIC can be applied to IMU, cameras and other modalities as co-sensors. We release an open-source DVL-camera calibration toolbox. Beyond underwater applications, several aspects of UIC-such as the integration of GP priors for MAP-based calibration and the design of provably reliable initialization procedures-are broadly applicable to other multi-sensor calibration problems. Finally, simulations and real-world tests validate our approach.
format Preprint
id arxiv_https___arxiv_org_abs_2510_24571
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Spatiotemporal Calibration of Doppler Velocity Logs for Underwater Robots
Zhao, Hongxu
Zeng, Guangyang
Shao, Yunling
Zhang, Tengfei
Wu, Junfeng
Robotics
The calibration of extrinsic parameters and clock offsets between sensors for high-accuracy performance in underwater SLAM systems remains insufficiently explored. Existing methods for Doppler Velocity Log (DVL) calibration are either constrained to specific sensor configurations or rely on oversimplified assumptions, and none jointly estimate translational extrinsics and time offsets. We propose a Unified Iterative Calibration (UIC) framework for general DVL sensor setups, formulated as a Maximum A Posteriori (MAP) estimation with a Gaussian Process (GP) motion prior for high-fidelity motion interpolation. UIC alternates between efficient GP-based motion state updates and gradient-based calibration variable updates, supported by a provably statistically consistent sequential initialization scheme. The proposed UIC can be applied to IMU, cameras and other modalities as co-sensors. We release an open-source DVL-camera calibration toolbox. Beyond underwater applications, several aspects of UIC-such as the integration of GP priors for MAP-based calibration and the design of provably reliable initialization procedures-are broadly applicable to other multi-sensor calibration problems. Finally, simulations and real-world tests validate our approach.
title Spatiotemporal Calibration of Doppler Velocity Logs for Underwater Robots
topic Robotics
url https://arxiv.org/abs/2510.24571