TY - JOUR
T1 - Prediction of ground reaction force and joint moments based on optical motion capture data during gait
AU - Mundt, Marion
AU - Koeppe, Arnd
AU - David, Sina
AU - Bamer, Franz
AU - Potthast, Wolfgang
AU - Markert, Bernd
N1 - Copyright © 2020 IPEM. Published by Elsevier Ltd. All rights reserved.
PY - 2020/12/1
Y1 - 2020/12/1
N2 - The standard camera- and force plate-based set-up for motion analysis suffers from the disadvantage of being limited to laboratory settings. Since adaptive algorithms are able to learn the connection between known inputs and outputs and generalise this knowledge to unknown data, these algorithms can be used to leverage motion analysis outside the laboratory. In most biomechanical applications, feedforward neural networks are used, although these networks can only work on time normalised data, while recurrent neural networks can be used for real time applications. Therefore, this study compares the performance of these two kinds of neural networks on the prediction of ground reaction force and joint moments of the lower limbs during gait based on joint angles determined by optical motion capture as input data. The accuracy of both networks when generalising to new data was assessed using the normalised root-mean-squared error, the root-mean-squared error and the correlation coefficient as evaluation metrics. Both neural networks demonstrated a high performance and good capabilities to generalise to new data. The mean prediction accuracy over all parameters applying a feedforward network was higher (r = 0.963) than using a recurrent long short-term memory network (r = 0.935).
AB - The standard camera- and force plate-based set-up for motion analysis suffers from the disadvantage of being limited to laboratory settings. Since adaptive algorithms are able to learn the connection between known inputs and outputs and generalise this knowledge to unknown data, these algorithms can be used to leverage motion analysis outside the laboratory. In most biomechanical applications, feedforward neural networks are used, although these networks can only work on time normalised data, while recurrent neural networks can be used for real time applications. Therefore, this study compares the performance of these two kinds of neural networks on the prediction of ground reaction force and joint moments of the lower limbs during gait based on joint angles determined by optical motion capture as input data. The accuracy of both networks when generalising to new data was assessed using the normalised root-mean-squared error, the root-mean-squared error and the correlation coefficient as evaluation metrics. Both neural networks demonstrated a high performance and good capabilities to generalise to new data. The mean prediction accuracy over all parameters applying a feedforward network was higher (r = 0.963) than using a recurrent long short-term memory network (r = 0.935).
KW - Artificial neural networks
KW - Force plates
KW - Kinetics
KW - LSTM
KW - Supervised learning algorithms
UR - https://www.mendeley.com/catalogue/cbb1c9b5-978a-32b7-a048-d80179877632/
U2 - 10.1016/j.medengphy.2020.10.001
DO - 10.1016/j.medengphy.2020.10.001
M3 - Journal articles
C2 - 33261730
SN - 1873-4030
VL - 86
SP - 29
EP - 34
JO - Medical Engineering Physics
JF - Medical Engineering Physics
ER -