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Predictive fatigue estimation for exercise monitoring

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thesis
posted on 2022-10-24, 00:07 authored by YANRAN JIANG
This thesis aims to develop predictive fatigue monitoring frameworks leveraging machine learning/deep learning techniques. Increasingly sophisticated approaches are presented in this thesis, which are able to: (1) perform accurate user-specific fatigue detection from wearable sensing, (2) perform accurate user-independent fatigue detection, based on musculo-skeletal simulations, and (3) perform short-term prediction of user-independent fatigue. The outcomes of this research suggest that the proposed fatigue recognition frameworks could be used in the future to monitor fatigue changes in mobility online utilising wearable sensors for athletes and patients. Additionally, a real-time application for feedback during at-home workouts becomes feasible.

History

Campus location

Australia

Principal supervisor

Dana Kulic

Additional supervisor 1

Peter Malliaras

Additional supervisor 2

Bernard Chen

Year of Award

2022

Department, School or Centre

Mechanical and Aerospace Engineering

Course

Doctor of Philosophy

Degree Type

DOCTORATE

Faculty

Faculty of Engineering

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