mORAL

Author:

Akther Sayma1,Saleheen Nazir1,Samiei Shahin Alan1,Shetty Vivek2,Ertin Emre3,Kumar Santosh1

Affiliation:

1. University of Memphis, Memphis, Tennessee

2. University of California, Los Angeles, Los Angeles, California

3. The Ohio State University, Columbus, Ohio

Abstract

We address the open problem of reliably detecting oral health behaviors passively from wrist-worn inertial sensors. We present our model named mORAL (pronounced em oral) for detecting brushing and flossing behaviors, without the use of instrumented toothbrushes so that the model is applicable to brushing with still prevalent manual toothbrushes. We show that for detecting rare daily events such as toothbrushing, adopting a model that is based on identifying candidate windows based on events, rather than fixed-length timeblocks, leads to significantly higher performance. Trained and tested on 2,797 hours of sensor data collected over 192 days on 25 participants (using video annotations for ground truth labels), our brushing model achieves 100% median recall with a false positive rate of one event in every nine days of sensor wearing. The average error in estimating the start/end times of the detected event is 4.1% of the interval of the actual toothbrushing event.

Funder

National Institutes of Health

National Science Foundation

National Institute of Biomedical Imaging and Bioengineering

National Institute of Dental and Craniofacial Research

Publisher

Association for Computing Machinery (ACM)

Subject

Computer Networks and Communications,Hardware and Architecture,Human-Computer Interaction

Reference51 articles.

1. Lal Gamze Bozgeyikli Evren Can Bozgeyikli and Andrew Raij. {n. d.}. Keep Brushing! Developing Healthy Oral Hygiene Habits in Young Children with an Interactive Toothbrush. ({n. d.}). Lal Gamze Bozgeyikli Evren Can Bozgeyikli and Andrew Raij. {n. d.}. Keep Brushing! Developing Healthy Oral Hygiene Habits in Young Children with an Interactive Toothbrush. ({n. d.}).

2. Barbara Bruno Fulvio Mastrogiovanni and Antonio Sgorbissa. 2014. A public domain dataset for ADL recognition using wrist-placed accelerometers.. In RO-MAN. 738--743. Barbara Bruno Fulvio Mastrogiovanni and Antonio Sgorbissa. 2014. A public domain dataset for ADL recognition using wrist-placed accelerometers.. In RO-MAN. 738--743.

3. Human motion modelling and recognition: A computational approach

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