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Prediction of gait trajectories based on the Long Short Term Memory neural networks

The forecasting of lower limb trajectories can improve the operation of assistive devices and minimise the risk of tripping and balance loss. The aim of this work was to examine four Long Short Term Memory (LSTM) neural network architectures (Vanilla, Stacked, Bidirectional and Autoencoders) in pred...

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Autores principales: Zaroug, Abdelrahman, Garofolini, Alessandro, Lai, Daniel T. H., Mudie, Kurt, Begg, Rezaul
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8341582/
https://www.ncbi.nlm.nih.gov/pubmed/34351994
http://dx.doi.org/10.1371/journal.pone.0255597
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author Zaroug, Abdelrahman
Garofolini, Alessandro
Lai, Daniel T. H.
Mudie, Kurt
Begg, Rezaul
author_facet Zaroug, Abdelrahman
Garofolini, Alessandro
Lai, Daniel T. H.
Mudie, Kurt
Begg, Rezaul
author_sort Zaroug, Abdelrahman
collection PubMed
description The forecasting of lower limb trajectories can improve the operation of assistive devices and minimise the risk of tripping and balance loss. The aim of this work was to examine four Long Short Term Memory (LSTM) neural network architectures (Vanilla, Stacked, Bidirectional and Autoencoders) in predicting the future trajectories of lower limb kinematics, i.e. Angular Velocity (AV) and Linear Acceleration (LA). Kinematics data of foot, shank and thigh (LA and AV) were collected from 13 male and 3 female participants (28 ± 4 years old, 1.72 ± 0.07 m in height, 66 ± 10 kg in mass) who walked for 10 minutes at preferred walking speed (4.34 ± 0.43 km.h(-1)) and at an imposed speed (5km.h(-1), 15.4% ± 7.6% faster) on a 0% gradient treadmill. The sliding window technique was adopted for training and testing the LSTM models with total kinematics time-series data of 10,500 strides. Results based on leave-one-out cross validation, suggested that the LSTM autoencoders is the top predictor of the lower limb kinematics trajectories (i.e. up to 0.1s). The normalised mean squared error was evaluated on trajectory predictions at each time-step and it obtained 2.82–5.31% for the LSTM autoencoders. The ability to predict future lower limb motions may have a wide range of applications including the design and control of bionics allowing improved human-machine interface and mitigating the risk of falls and balance loss.
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spelling pubmed-83415822021-08-06 Prediction of gait trajectories based on the Long Short Term Memory neural networks Zaroug, Abdelrahman Garofolini, Alessandro Lai, Daniel T. H. Mudie, Kurt Begg, Rezaul PLoS One Research Article The forecasting of lower limb trajectories can improve the operation of assistive devices and minimise the risk of tripping and balance loss. The aim of this work was to examine four Long Short Term Memory (LSTM) neural network architectures (Vanilla, Stacked, Bidirectional and Autoencoders) in predicting the future trajectories of lower limb kinematics, i.e. Angular Velocity (AV) and Linear Acceleration (LA). Kinematics data of foot, shank and thigh (LA and AV) were collected from 13 male and 3 female participants (28 ± 4 years old, 1.72 ± 0.07 m in height, 66 ± 10 kg in mass) who walked for 10 minutes at preferred walking speed (4.34 ± 0.43 km.h(-1)) and at an imposed speed (5km.h(-1), 15.4% ± 7.6% faster) on a 0% gradient treadmill. The sliding window technique was adopted for training and testing the LSTM models with total kinematics time-series data of 10,500 strides. Results based on leave-one-out cross validation, suggested that the LSTM autoencoders is the top predictor of the lower limb kinematics trajectories (i.e. up to 0.1s). The normalised mean squared error was evaluated on trajectory predictions at each time-step and it obtained 2.82–5.31% for the LSTM autoencoders. The ability to predict future lower limb motions may have a wide range of applications including the design and control of bionics allowing improved human-machine interface and mitigating the risk of falls and balance loss. Public Library of Science 2021-08-05 /pmc/articles/PMC8341582/ /pubmed/34351994 http://dx.doi.org/10.1371/journal.pone.0255597 Text en © 2021 Zaroug et al https://creativecommons.org/licenses/by/4.0/This is an open access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
Zaroug, Abdelrahman
Garofolini, Alessandro
Lai, Daniel T. H.
Mudie, Kurt
Begg, Rezaul
Prediction of gait trajectories based on the Long Short Term Memory neural networks
title Prediction of gait trajectories based on the Long Short Term Memory neural networks
title_full Prediction of gait trajectories based on the Long Short Term Memory neural networks
title_fullStr Prediction of gait trajectories based on the Long Short Term Memory neural networks
title_full_unstemmed Prediction of gait trajectories based on the Long Short Term Memory neural networks
title_short Prediction of gait trajectories based on the Long Short Term Memory neural networks
title_sort prediction of gait trajectories based on the long short term memory neural networks
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8341582/
https://www.ncbi.nlm.nih.gov/pubmed/34351994
http://dx.doi.org/10.1371/journal.pone.0255597
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