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Main Authors: Yu, Youwei, Liu, Yanqing, Fu, Fengjie, He, Sihan, Zhu, Dongchen, Wang, Lei, Zhang, Xiaolin, Li, Jiamao
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2409.16228
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author Yu, Youwei
Liu, Yanqing
Fu, Fengjie
He, Sihan
Zhu, Dongchen
Wang, Lei
Zhang, Xiaolin
Li, Jiamao
author_facet Yu, Youwei
Liu, Yanqing
Fu, Fengjie
He, Sihan
Zhu, Dongchen
Wang, Lei
Zhang, Xiaolin
Li, Jiamao
contents In this paper, we propose a fast extrinsic calibration method for fusing multiple inertial measurement units (MIMU) to improve visual-inertial odometry (VIO) localization accuracy. Currently, data fusion algorithms for MIMU highly depend on the number of inertial sensors. Based on the assumption that extrinsic parameters between inertial sensors are perfectly calibrated, the fusion algorithm provides better localization accuracy with more IMUs, while neglecting the effect of extrinsic calibration error. Our method builds two non-linear least-squares problems to estimate the MIMU relative position and orientation separately, independent of external sensors and inertial noises online estimation. Then we give the general form of the virtual IMU (VIMU) method and propose its propagation on manifold. We perform our method on datasets, our self-made sensor board, and board with different IMUs, validating the superiority of our method over competing methods concerning speed, accuracy, and robustness. In the simulation experiment, we show that only fusing two IMUs with our calibration method to predict motion can rival nine IMUs. Real-world experiments demonstrate better localization accuracy of the VIO integrated with our calibration method and VIMU propagation on manifold.
format Preprint
id arxiv_https___arxiv_org_abs_2409_16228
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Fast Extrinsic Calibration for Multiple Inertial Measurement Units in Visual-Inertial System
Yu, Youwei
Liu, Yanqing
Fu, Fengjie
He, Sihan
Zhu, Dongchen
Wang, Lei
Zhang, Xiaolin
Li, Jiamao
Robotics
In this paper, we propose a fast extrinsic calibration method for fusing multiple inertial measurement units (MIMU) to improve visual-inertial odometry (VIO) localization accuracy. Currently, data fusion algorithms for MIMU highly depend on the number of inertial sensors. Based on the assumption that extrinsic parameters between inertial sensors are perfectly calibrated, the fusion algorithm provides better localization accuracy with more IMUs, while neglecting the effect of extrinsic calibration error. Our method builds two non-linear least-squares problems to estimate the MIMU relative position and orientation separately, independent of external sensors and inertial noises online estimation. Then we give the general form of the virtual IMU (VIMU) method and propose its propagation on manifold. We perform our method on datasets, our self-made sensor board, and board with different IMUs, validating the superiority of our method over competing methods concerning speed, accuracy, and robustness. In the simulation experiment, we show that only fusing two IMUs with our calibration method to predict motion can rival nine IMUs. Real-world experiments demonstrate better localization accuracy of the VIO integrated with our calibration method and VIMU propagation on manifold.
title Fast Extrinsic Calibration for Multiple Inertial Measurement Units in Visual-Inertial System
topic Robotics
url https://arxiv.org/abs/2409.16228