RNNs on Monitoring Physical Activity Energy Expenditure in Older People
Stylianos Paraschiakos, Cl\'audio Rebelo de S\'a, Jeremiah Okai, Eline, P. Slagboom, Marian Beekman, Arno Knobbe

TL;DR
This study develops an advanced RNN model tailored for estimating physical activity energy expenditure in older adults, integrating static and activity data to improve accuracy over existing methods.
Contribution
It introduces a novel RNN architecture with enhanced data integration and aggregation techniques specifically designed for elderly populations.
Findings
Achieved approximately 10% accuracy improvement over the state of the art.
Reduced training input requirements by a factor of 10.
Demonstrated potential for linking PAEE to health and well-being metrics.
Abstract
Through the quantification of physical activity energy expenditure (PAEE), health care monitoring has the potential to stimulate vital and healthy ageing, inducing behavioural changes in older people and linking these to personal health gains. To be able to measure PAEE in a monitoring environment, methods from wearable accelerometers have been developed, however, mainly targeted towards younger people. Since elderly subjects differ in energy requirements and range of physical activities, the current models may not be suitable for estimating PAEE among the elderly. Because past activities influence present PAEE, we propose a modeling approach known for its ability to model sequential data, the Recurrent Neural Network (RNN). To train the RNN for an elderly population, we used the GOTOV dataset with 34 healthy participants of 60 years and older (mean 65 years old), performing 16…
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Taxonomy
TopicsPhysical Activity and Health · Context-Aware Activity Recognition Systems · Nutritional Studies and Diet
MethodsDense Connections · Feedforward Network · Gated Recurrent Unit
