Data-based parametric biomechanical models for cyclic motions

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5 Citationer (Scopus)

Abstract

We present a method to convert motion capture data and anthropometric statistics into parametric biomechanical models of cyclic motions, such as walking, cycling and running. The motivation is ease of modelling and the desire to make models prospective. We have developed a data processing pipeline, which precompiles a large amount of motion capture trials into a parametric model relying on the correlations between the input variables. The compilation converts optical motion capture data into anatomical joint angle variations and anatomical body dimensions. Finally, a quadratic programming method with a closed-form solution is developed to predict motion patterns meeting subject-specific requirements. The method is demonstrated on running models, and we conclude that the method can facilitate new uses of biomechanical models.

OriginalsprogEngelsk
TitelDHM 2020 - Proceedings of the 6th International Digital Human Modeling Symposium
RedaktørerLars Hanson, Dan Hogberg, Erik Brolin
Antal sider8
ForlagIOS Press
Publikationsdato24 aug. 2020
Sider372-379
ISBN (Elektronisk)9781614994398
DOI
StatusUdgivet - 24 aug. 2020
Begivenhed6th International Digital Human Modeling Symposium, DHM 2020 - Skovde, Online, Sverige
Varighed: 31 aug. 20202 sep. 2020

Konference

Konference6th International Digital Human Modeling Symposium, DHM 2020
Land/OmrådeSverige
BySkovde, Online
Periode31/08/202002/09/2020
SponsorESI Group, Industrial Path Solutions (IPS), University of Skovde, Volvo Car Corporation
NavnAdvances in Transdisciplinary Engineering
Vol/bind11

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