Musculoskeletal Inverse Kinematics Tool for Inertial Motion Capture Data Based on the Adaptive Unscented Kalman Smoother: An Implementation for OpenSim
Matti J. Kortelainen, Paavo Vartiainen, Alexander Beattie, Jere Lavikainen, Pasi A. Karjalainen

TL;DR
A new tool called AUKSMIKT improves the accuracy of estimating human movement using inertial motion capture data by using advanced statistical methods.
Contribution
AUKSMIKT is a novel Bayesian framework tool for kinematics estimation that outperforms traditional least squares methods in accuracy.
Findings
AUKSMIKT reduced errors in angular position estimation for three joints compared to the native OpenSim tool.
AUKSMIKT showed higher accuracy in estimating lower-body kinematics from inertial motion capture data.
The tool produced larger errors in angular positions and velocities for some joints compared to the optical motion capture standard.
Abstract
Conventional tools for human kinematics estimation presume that observations are subject to uncorrelated, zero-mean Gaussian noise, and they provide no estimate for the uncertainty of their solutions. This paper presents AUKSMIKT—a tool for whole-body kinematics estimation in the Bayesian framework to account for these shortcomings. We implemented AUKSMIKT as a C++ class that extends the OpenSim (v4.5) application programming interface. AUKSMIKT is based on the unscented Kalman filter combined with a run-time estimator of process and observation noises, and a fixed-lag Rauch-Tung-Striebel smoother. We tested the performance of AUKSMIKT using data from a public dataset consisting of both optical and inertial motion capture data recorded from overground walking subjects. We computed the mean absolute errors of estimated angular positions, velocities, and accelerations with respect to the…
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Taxonomy
TopicsBalance, Gait, and Falls Prevention · Non-Invasive Vital Sign Monitoring · Sports Performance and Training
