Multi-Visual-Inertial System: Analysis, Calibration and Estimation
Yulin Yang, Patrick Geneva, Guoquan Huang

TL;DR
This paper presents a comprehensive analysis and calibration method for multi-visual-inertial systems, enabling optimal sensor fusion, full calibration, and improved accuracy through novel algorithms and extensive real-world validation.
Contribution
It introduces a new analytic IMU preintegration method, models multi-inertial measurements with all intrinsic and extrinsic parameters, and provides the first observability analysis for MVIS, validated by real-world data.
Findings
Proposed calibration achieves competitive accuracy with better convergence.
Validated algorithms through extensive simulations and real-world datasets.
Open-sourced calibration method benefits the community.
Abstract
In this paper, we study state estimation of multi-visual-inertial systems (MVIS) and develop sensor fusion algorithms to optimally fuse an arbitrary number of asynchronous inertial measurement units (IMUs) or gyroscopes and global and(or) rolling shutter cameras. We are especially interested in the full calibration of the associated visual-inertial sensors, including the IMU or camera intrinsics and the IMU-IMU(or camera) spatiotemporal extrinsics as well as the image readout time of rolling-shutter cameras (if used). To this end, we develop a new analytic combined IMU integration with intrinsics-termed ACI3-to preintegrate IMU measurements, which is leveraged to fuse auxiliary IMUs and(or) gyroscopes alongside a base IMU. We model the multi-inertial measurements to include all the necessary inertial intrinsic and IMU-IMU spatiotemporal extrinsic parameters, while leveraging IMU-IMU…
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Taxonomy
TopicsRobotics and Sensor-Based Localization · Advanced Vision and Imaging · 3D Surveying and Cultural Heritage
MethodsBalanced Selection
