A Tightly Coupled IMU-Based Motion Capture Approach for Estimating Multibody Kinematics and Kinetics
Hassan Osman, Daan de Kanter, Jelle Boelens, Manon Kok, Ajay Seth

TL;DR
This paper introduces a tightly integrated IMU-based motion capture method using an IEKF to accurately estimate multibody kinematics and kinetics, validated against ground truth data from a pendulum and a robot.
Contribution
It presents a novel approach that directly fuses IMU data with dynamic models via IEKF, improving accuracy in estimating kinematics and kinetics in multibody systems.
Findings
Maximum joint angle RMSD of 3.75 degrees for pendulum
Maximum joint angle RMSD of 3.24 degrees for Kuka robot
Maximum joint torque RMSD of 2 Nm for pendulum
Abstract
Inertial Measurement Units (IMUs) enable portable, multibody motion capture (MoCap) in diverse environments beyond the laboratory, making them a practical choice for diagnosing mobility disorders and supporting rehabilitation in clinical or home settings. However, challenges associated with IMU measurements, including magnetic distortions and drift errors, complicate their broader use for MoCap. In this work, we propose a tightly coupled motion capture approach that directly integrates IMU measurements with multibody dynamic models via an Iterated Extended Kalman Filter (IEKF) to simultaneously estimate the system's kinematics and kinetics. By enforcing kinematic and kinetic properties and utilizing only accelerometer and gyroscope data, our method improves IMU-based state estimation accuracy. Our approach is designed to allow for incorporating additional sensor data, such as optical…
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