Estimation of Tri-Axial Walking Ground Reaction Forces of Left and Right Foot from Total Forces in Real-Life Environments
Continuous monitoring of natural human gait in real-life environments is essential in many applications including disease monitoring, rehabilitation, and professional sports. Wearable inertial measurement units are successfully used to measure body kinematics in real-life environments and to estimat...
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doaj-0e815480e48c4d6183fd5ae238f799fa2020-11-25T01:05:58ZengMDPI AGSensors1424-82202018-06-01186196610.3390/s18061966s18061966Estimation of Tri-Axial Walking Ground Reaction Forces of Left and Right Foot from Total Forces in Real-Life EnvironmentsErfan Shahabpoor0Aleksandar Pavic1Department of Architecture and Civil Engineering, University of Bath, Claverton Down, Bath BA2 7AY, UKCollege of Engineering, Mathematics and Physical Sciences, University of Exeter, Exeter EX4 4QF, UKContinuous monitoring of natural human gait in real-life environments is essential in many applications including disease monitoring, rehabilitation, and professional sports. Wearable inertial measurement units are successfully used to measure body kinematics in real-life environments and to estimate total walking ground reaction forces GRF(t) using equations of motion. However, for inverse dynamics and clinical gait analysis, the GRF(t) of each foot is required separately. Using an experimental dataset of 1243 tri-axial separate-foot GRF(t) time histories measured by the authors across eight years, this study proposes the ‘Twin Polynomial Method’ (TPM) to estimate the tri-axial left and right foot GRF(t) signals from the total GRF(t) signals. For each gait cycle, TPM fits polynomials of degree five, eight, and nine to the known single-support part of the left and right foot vertical, anterior-posterior, and medial-lateral GRF(t) signals, respectively, to extrapolate the unknown double-support parts of the corresponding GRF(t) signals. Validation of the proposed method both with force plate measurements (gold standard) in the laboratory, and in real-life environment showed a peak-to-peak normalized root mean square error of less than 2.5%, 6.5% and 7.5% for the estimated GRF(t) signals in the vertical, anterior-posterior and medial-lateral directions, respectively. These values show considerable improvement compared with the currently available GRF(t) decomposition methods in the literature.http://www.mdpi.com/1424-8220/18/6/1966GRFpolynomialcurve fittingdouble supportclosed kinematic chainindeterminacy problem |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Erfan Shahabpoor Aleksandar Pavic |
spellingShingle |
Erfan Shahabpoor Aleksandar Pavic Estimation of Tri-Axial Walking Ground Reaction Forces of Left and Right Foot from Total Forces in Real-Life Environments Sensors GRF polynomial curve fitting double support closed kinematic chain indeterminacy problem |
author_facet |
Erfan Shahabpoor Aleksandar Pavic |
author_sort |
Erfan Shahabpoor |
title |
Estimation of Tri-Axial Walking Ground Reaction Forces of Left and Right Foot from Total Forces in Real-Life Environments |
title_short |
Estimation of Tri-Axial Walking Ground Reaction Forces of Left and Right Foot from Total Forces in Real-Life Environments |
title_full |
Estimation of Tri-Axial Walking Ground Reaction Forces of Left and Right Foot from Total Forces in Real-Life Environments |
title_fullStr |
Estimation of Tri-Axial Walking Ground Reaction Forces of Left and Right Foot from Total Forces in Real-Life Environments |
title_full_unstemmed |
Estimation of Tri-Axial Walking Ground Reaction Forces of Left and Right Foot from Total Forces in Real-Life Environments |
title_sort |
estimation of tri-axial walking ground reaction forces of left and right foot from total forces in real-life environments |
publisher |
MDPI AG |
series |
Sensors |
issn |
1424-8220 |
publishDate |
2018-06-01 |
description |
Continuous monitoring of natural human gait in real-life environments is essential in many applications including disease monitoring, rehabilitation, and professional sports. Wearable inertial measurement units are successfully used to measure body kinematics in real-life environments and to estimate total walking ground reaction forces GRF(t) using equations of motion. However, for inverse dynamics and clinical gait analysis, the GRF(t) of each foot is required separately. Using an experimental dataset of 1243 tri-axial separate-foot GRF(t) time histories measured by the authors across eight years, this study proposes the ‘Twin Polynomial Method’ (TPM) to estimate the tri-axial left and right foot GRF(t) signals from the total GRF(t) signals. For each gait cycle, TPM fits polynomials of degree five, eight, and nine to the known single-support part of the left and right foot vertical, anterior-posterior, and medial-lateral GRF(t) signals, respectively, to extrapolate the unknown double-support parts of the corresponding GRF(t) signals. Validation of the proposed method both with force plate measurements (gold standard) in the laboratory, and in real-life environment showed a peak-to-peak normalized root mean square error of less than 2.5%, 6.5% and 7.5% for the estimated GRF(t) signals in the vertical, anterior-posterior and medial-lateral directions, respectively. These values show considerable improvement compared with the currently available GRF(t) decomposition methods in the literature. |
topic |
GRF polynomial curve fitting double support closed kinematic chain indeterminacy problem |
url |
http://www.mdpi.com/1424-8220/18/6/1966 |
work_keys_str_mv |
AT erfanshahabpoor estimationoftriaxialwalkinggroundreactionforcesofleftandrightfootfromtotalforcesinreallifeenvironments AT aleksandarpavic estimationoftriaxialwalkinggroundreactionforcesofleftandrightfootfromtotalforcesinreallifeenvironments |
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