Estimating Lower Limb Kinematics using a Reduced Wearable Sensor Count
Luke Sy, Michael Raitor, Michael Del Rosario, Heba Khamis, Lauren, Kark, Nigel H. Lovell, Stephen J. Redmond

TL;DR
This paper introduces a novel algorithm using a constrained Kalman filter to accurately estimate lower limb kinematics during walking with only three wearable inertial sensors, enabling real-time gait analysis.
Contribution
The study presents a new CKF-based method that reduces sensor count while maintaining accurate lower limb kinematic estimation during gait.
Findings
Achieved mean position RMSE of 5.21 cm and orientation RMSE of 16.1°.
Knee and hip joint angle RMSEs were approximately 10°, with high correlation coefficients.
System enables real-time, remote gait monitoring with low computational cost.
Abstract
Goal: This paper presents an algorithm for accurately estimating pelvis, thigh, and shank kinematics during walking using only three wearable inertial sensors. Methods: The algorithm makes novel use of a constrained Kalman filter (CKF). The algorithm iterates through the prediction (kinematic equation), measurement (pelvis position pseudo-measurements, zero velocity update, flat-floor assumption, and covariance limiter), and constraint update (formulation of hinged knee joints and ball-and-socket hip joints). Results: Evaluation of the algorithm using an optical motion capture-based sensor-to-segment calibration on nine participants ( men and women, weight kg, height m, age years old), with no known gait or lower body biomechanical abnormalities, who walked within a m capture area shows that it can track motion…
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