Predicting 3d ground reaction force from 2d video via neural networks in sidestepping tasks

Sports science practitioners often measure ground reaction forces (GRFs) to assess performance, rehabilitation and injury risk. However, recording of GRFs during dynamic tasks has historically been limited to lab settings. This work aims to use neural networks (NN) to predict three-dimensional (3D) GRF via pose estimation keypoints as inputs, determined from 2D video data. Two different NN were trained on a dataset containing 1474 samples from 14 participants and their prediction accuracy compared with ground truth force data. Results for both NN showed correlation coefficients ranging from 0.936 to 0.954 and normalised root mean square errors from 11.05% to 13.11% for anterior-posterior and vertical GRFs, with poorer results found in the medio-lateral direction. This study demonstrates the feasibility and utility of predicting GRFs from 2D video footage.
© Copyright 2021 ISBS Proceedings Archive (Michigan). Northern Michigan University. Published by International Society of Biomechanics in Sports. All rights reserved.

Bibliographic Details
Subjects:
Notations:training science technical and natural sciences sport games biological and medical sciences
Tagging:neuronale Netze künstliche Intelligenz
Published in:ISBS Proceedings Archive (Michigan)
Language:English
Published: Canberra International Society of Biomechanics in Sports 2021
Online Access:https://commons.nmu.edu/isbs/vol39/iss1/77
Volume:39
Issue:1
Pages:Article 77
Document types:congress proceedings
Level:advanced