Quaternion-based Unscented Kalman Filter for Robust Wrench Estimation of Human-UAV Physical Interaction
Hussein Naser, Hashim A. Hashim, Mojtaba Ahmadi

TL;DR
This paper presents a Quaternion-based Unscented Kalman Filter (QUKF) for accurate, real-time estimation of system states and external forces during human-UAV physical interactions, improving robustness and stability.
Contribution
The paper introduces a novel quaternion-based filtering framework that preserves nonlinear rotational dynamics, outperforming traditional methods like EKF in robustness and accuracy.
Findings
Achieved a 79.41% reduction in torque estimation RMSE.
Significant improvements in position and angular rate RMSEs.
Enhanced robustness to measurement noise and uncertainties.
Abstract
This paper introduces an advanced Quaternion-based Unscented Kalman Filter (QUKF) for real-time, robust estimation of system states and external wrenches in assistive aerial payload transportation systems that engage in direct physical interaction. Unlike conventional filtering techniques, the proposed approach employs a unit-quaternion representation to inherently avoid singularities and ensure globally consistent, drift-free estimation of the platform's pose and interaction wrenches. A rigorous quaternion-based dynamic model is formulated to capture coupled translational and rotational dynamics under interaction forces. Building on this model, a comprehensive QUKF framework is established for state prediction, measurement updates, and external wrench estimation. The proposed formulation fully preserves the nonlinear characteristics of rotational motion, enabling more accurate and…
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