Please use this identifier to cite or link to this item: https://hdl.handle.net/2440/136643
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Type: Conference paper
Title: Do You Brush Your Teeth Properly? An Off-body Sensor-based Approach for Toothbrushing Monitoring
Author: Hussain, Z.
Waterworth, D.
Aldeer, M.
Zhang, W.E.
Sheng, Q.Z.
Ortiz, J.
Citation: Proceedings of the IEEE International Conference on Digital Health, (ICDH 2021), 2021 / Ahamed, S.I., Atukorala, N., Chang, C., Damiani, E., DePietro, G., Liu, L., Wang, Z., Zhang, J., Zulkernine, F. (ed./s), pp.59-69
Publisher: IEEE
Publisher Place: Piscataway, NJ
Issue Date: 2021
Series/Report no.: IEEE International Workshop on Model-Driven Requirements Engineering
ISBN: 9781665416856
ISSN: 2330-9962
Conference Name: 2021 IEEE International Conference on Digital Health (ICDH) (5 Sep 2021 - 10 Sep 2021 : virtual online)
Editor: Ahamed, S.I.
Atukorala, N.
Chang, C.
Damiani, E.
DePietro, G.
Liu, L.
Wang, Z.
Zhang, J.
Zulkernine, F.
Statement of
Responsibility: 
Zawar Hussain, David Waterworth, Murtadha Aldeery, Wei Emma Zhangz, Quan Z. Sheng and Jorge Ortizy
Abstract: Oral hygiene is very important for a healthy life. Proper toothbrushing is one of the most important measures against dental problems. Poor toothbrushing methods can lead to tooth decay and other gum diseases. Unfortunately, many people do not brush their teeth properly and there is very limited technology available to assist them in compliance with the standard toothbrushing procedure. Sensor-based human activity recognition techniques have seen tremendous growth recently and are being used in various applications. In this work, we treat the compliance to the standard toothbrushing method as an activity recognition problem. We divide the toothbrushing activity into 16 sub-activities and use a machine learning model to recognize those activities. We introduce an off-body sensing solution that uses a detachable Inertial Measurement Unit (IMU), attached to the handle of the brush. The sensor captures the movements of the brush while reaching different parts of the teeth. Then a machine learning pipeline is trained to predict the brushing of different parts of the teeth. We evaluated the performance of the proposed approach in real-world scenarios and performed experiments with 10 different users. We collected our own data set and compared our approach with the wearablebased approach. The results show that our approach performs better than wearable-based approaches and can recognize the toothbrushing activities with 97.15% accuracy. We also evaluated our model for different types of brushes (manual and electric) and the results show that the proposed approach can work independently from the brush types.
Keywords: Toothbrushing; Activity recognition; IMU; e- Health
Rights: ©2021 IEEE
DOI: 10.1109/ICDH52753.2021.00018
Grant ID: http://purl.org/au-research/grants/arc/LP190100140
http://purl.org/au-research/grants/arc/LE180100158
Published version: https://ieeexplore.ieee.org/xpl/conhome/9581155/proceeding
Appears in Collections:Computer Science publications

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