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2022 | OriginalPaper | Chapter

Toward On-Device Weight Monitoring from Selfie Face Images Using Smartphones

Authors : Hera Siddiqui, Ajita Rattani, Laila Cure, Nikki Keene Woods, Rhonda Lewis, Janet Twomey, Betty Smith-Campbell, Twyla Hill

Published in: Integrating Artificial Intelligence and IoT for Advanced Health Informatics

Publisher: Springer International Publishing

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Abstract

Obesity is a serious health problem that is on the rise at the global level. Recent studies suggest that BMI can be inferred from facial images using deep learning-based convolutional neural networks (CNNs) for obesity classification with about 85–90% accuracy. However, training and testing these deep learning models involves high computation and storage due to the involvement of millions of parameters. A recent trend is the use of lightweight CNN models to facilitate on-device computation in resource-constrained mobile and wearable devices. In this study, we evaluate several lightweight CNNs such as MobileNet-V2, ShuffleNet-V2, and lightCNN-29 for BMI prediction and obesity classification from facial images captured using smartphones. The comparative analysis is done with heavyweight VGG-16 and ResNet-50-based CNN models. These lightweight models when deployed on smartphones can act as self-diagnostic tool in weight changes and obesity monitoring. These tools can facilitate remote monitoring of patients, obtaining patients’ vital signs, and in improving the quality of care provided. Self-diagnostic tools would also help in keeping users’ health data private, safe, and secure.

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Metadata
Title
Toward On-Device Weight Monitoring from Selfie Face Images Using Smartphones
Authors
Hera Siddiqui
Ajita Rattani
Laila Cure
Nikki Keene Woods
Rhonda Lewis
Janet Twomey
Betty Smith-Campbell
Twyla Hill
Copyright Year
2022
DOI
https://doi.org/10.1007/978-3-030-91181-2_4