Unobservable Subspace Evolution and Alignment for Consistent Visual-Inertial Navigation
Chungeng Tian, Fenghua He, and Ning Hao

TL;DR
This paper introduces a new framework called Unobservable Subspace Evolution to analyze how unobservable components change during visual-inertial navigation, leading to a practical alignment method that improves consistency and accuracy.
Contribution
It presents the USE framework for tracking unobservable subspace evolution and proposes the USA alignment methods to correct observability mismatch in VINS.
Findings
USE effectively characterizes subspace evolution.
USA methods improve estimator consistency.
Experimental results show enhanced accuracy and efficiency.
Abstract
The inconsistency issue in the Visual-Inertial Navigation System (VINS) is a long-standing and fundamental challenge. While existing studies primarily attribute the inconsistency to observability mismatch, these analyses are often based on simplified theoretical formulations that consider only prediction and SLAM correction. Such formulations fail to cover the non-standard estimation steps, such as MSCKF correction and delayed initialization, which are critical for practical VINS estimators. Furthermore, the lack of a comprehensive understanding of how inconsistency dynamically emerges across estimation steps has hindered the development of precise and efficient solutions. As a result, current approaches often face a trade-off between estimator accuracy, consistency, and implementation complexity. To address these limitations, this paper proposes a novel analysis framework termed…
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Taxonomy
TopicsRobotics and Sensor-Based Localization · Inertial Sensor and Navigation · Indoor and Outdoor Localization Technologies
