Dual Preintegration for Relative State Estimation
Ruican Xia, Hailong Pei

TL;DR
This paper introduces dual preintegration, a novel method for relative state estimation that improves accuracy and robustness in scenarios with large rotations and distances, especially in VR tracking.
Contribution
The paper proposes dual preintegration, combining IMU preintegration from both platforms to enhance relinearization and estimation accuracy in relative state estimation.
Findings
Outperforms existing algorithms in simulations and real-world VR tests.
More accurate and robust in large rotation scenarios.
Reduces positional drift and linearization errors.
Abstract
Relative State Estimation perform mutually localization between two mobile agents undergoing six-degree-of-freedom motion. Based on the principle of circular motion, the estimation accuracy is sensitive to nonlinear rotations of the reference platform, particularly under large inter-platform distances. This phenomenon is even obvious for linearized kinematics, because cumulative linearization errors significantly degrade precision. In virtual reality (VR) applications, this manifests as substantial positional errors in 6-DoF controller tracking during rapid rotations of the head-mounted display. The linearization errors introduce drift in the estimate and render the estimator inconsistent. In the field of odometry, IMU preintegration is proposed as a kinematic observation to enable efficient relinearization, thus mitigate linearized error. Building on this theory, we propose dual…
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Taxonomy
TopicsRobotics and Sensor-Based Localization · Advanced Vision and Imaging · Target Tracking and Data Fusion in Sensor Networks
