Creating virtual force platforms for cutting maneuvers from kinematic data based on LSTM neural networks

The precise measurement of ground reaction forces and moments (GRF/M) usually requires stationary equipment and is, therefore, only partly feasible for field measurements. In this work we propose a method to derive GRF/M time series from motion capture marker trajectories for cutting maneuvers (CM) using a long short-term memory (LSTM) neural network. We used a dataset containing 637 CM motion files from 70 participants and trained two-layer LSTM neural networks to predict the GRF/M signals of two force platforms. A five-fold cross-validation resulted in correlation coefficients ranging from 0.870 to 0.977 and normalized root mean square errors from 3.51 to 9.99% between predicted and measured GRF/M. In future, this method can be used not only to simplify lab measurements but also to allow for determining biomechanical parameters during real-world situations.
© Copyright 2020 ISBS Proceedings Archive (Michigan). Northern Michigan University. Published by International Society of Biomechanics in Sports. All rights reserved.

Bibliographic Details
Subjects:
Notations:training science sports facilities and sports equipment
Tagging:virtuell
Published in:ISBS Proceedings Archive (Michigan)
Language:English
Published: Liverpool International Society of Biomechanics in Sports 2020
Online Access:https://commons.nmu.edu/isbs/vol38/iss1/109
Volume:38
Issue:1
Pages:Article 109
Document types:congress proceedings
Level:advanced