Online Self-Calibration for Visual-Inertial Navigation Systems: Models, Analysis and Degeneracy
Yulin Yang, Patrick Geneva, Xingxing Zuo, Guoquan Huang

TL;DR
This paper provides a comprehensive observability analysis of online self-calibration in visual-inertial navigation systems, identifying degenerate motions and demonstrating improved accuracy and robustness through extensive simulations and real-world experiments.
Contribution
It offers the first detailed analysis of degeneracy in IMU and camera calibration for VINS, along with practical guidelines for online self-calibration.
Findings
Full calibration has four unobservable directions.
Identified primitive degenerate motions cause specific calibration parameters to be unobservable.
Online self-calibration outperforms offline methods like Kalibr in accuracy and consistency.
Abstract
In this paper, we study in-depth the problem of online self-calibration for robust and accurate visual-inertial state estimation. In particular, we first perform a complete observability analysis for visual-inertial navigation systems (VINS) with full calibration of sensing parameters, including IMU and camera intrinsics and IMU-camera spatial-temporal extrinsic calibration, along with readout time of rolling shutter (RS) cameras (if used). We investigate different inertial model variants containing IMU intrinsic parameters that encompass most commonly used models for low-cost inertial sensors. The observability analysis results prove that VINS with full sensor calibration has four unobservable directions, corresponding to the system's global yaw and translation, while all sensor calibration parameters are observable given fully-excited 6-axis motion. Moreover, we, for the first time,…
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Taxonomy
TopicsAdvanced Vision and Imaging · Robotics and Sensor-Based Localization · 3D Surveying and Cultural Heritage
