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A machine learning approach to measure and monitor physical activity in children to help fight overweight and obesity

Version 2 2024-06-03, 14:22
Version 1 2015-12-14, 10:44
conference contribution
posted on 2024-06-03, 14:22 authored by P Fergus, A Hussain, J Hearty, S Fairclough, L Boddy, KA Mackintosh, G Stratton, Nicky RidgersNicky Ridgers, N Radi
Physical Activity is important for maintaining healthy lifestyles. Recommendations for physical activity levels are issued by most governments as part of public health measures. As such, reliable measurement of physical activity for regulatory purposes is vital. This has lead research to explore standards for achieving this using wearable technology and artificial neural networks that produce classifications for specific physical activity events. Applied from a very early age, the ubiquitous capture of physical activity data using mobile and wearable technology may help us to understand how we can combat childhood obesity and the impact that this has in later life. A supervised machine learning approach is adopted in this paper that utilizes data obtained from accelerometer sensors worn by children in free-living environments. The paper presents a set of activities and features suitable for measuring physical activity and evaluates the use of a Multilayer Perceptron neural network to classify physical activities by activity type. A rigorous reproducible data science methodology is presented for subsequent use in physical activity research. Our results show that it was possible to obtain an overall accuracy of 96 % with 95 % for sensitivity, 99 % for specificity and a kappa value of 94 % when three and four feature combinations were used.

History

Volume

9226

Pagination

676-688

Location

Fuzhou, China

Start date

2015-08-20

End date

2015-08-23

ISSN

0302-9743

eISSN

1611-3349

ISBN-13

9783319221854

Language

eng

Publication classification

E1 Full written paper - refereed, E Conference publication

Copyright notice

2015, Springer

Editor/Contributor(s)

Huang D, Jo K, Hussain A

Title of proceedings

ICIC 2015 : Intelligent Computing Theories, Proceedings Part II

Event

Intelligent Compuation. International Conference (11th : 2015 : Fuzhou, China)

Publisher

Springer

Place of publication

Cham, Switzerland

Series

Lecture notes in computer science

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