Machine Learning for Personalisation of Biomechanical Movement Simulations (C01)
Acronym: SFB 1483 EmpkinS C01
Project leader: Anne Koelewijn
Project members: Eva Dorschky, Markus Gambietz, Marlies Nitschke
Start date: 1. July 2021
End date: 30. June 2025
Funding source: DFG / Sonderforschungsbereich (SFB)
Abstract
The extent to which a neural network can be used to effectively personalise gait simulations using motion data is explored. We first investigate the influence of body parameters on gait simulation. An initial version of the personalisation is trained with simulated motion data, since ground truth data is known for this purpose. We then explore gradient-free methods to fit the network for experimental motion data. The resulting network is validated with magnetic resonance imaging, electromyography and intra-body variables.
Students
https://www.mad.tf.fau.de/2023/03/23/id-2320/
Prajjwal Nag
Smartphone-Based Human Model Personalisation
Anne Dröge
Optimal Control Radar Tracking
Akat Altan
"In the wild" Movement Analysis Using Physics-Informed Neural Networks
Nico Weber
BioMAC Group
Linus Hötzel
EmpkinS
Daniel Janischowsky
Predictive simulations of gait with ankle exoskeleton that alters energetics
