A Novel IoT-based Framework for Non-Invasive Human Hygiene Monitoring using Machine Learning Techniques
Md Jobair Hossain Faruk, Shashank Trivedi, Mohammad Masum, Maria, Valero, Hossain Shahriar, Sheikh Iqbal Ahamed

TL;DR
This paper introduces a non-invasive IoT framework utilizing vibration sensors and machine learning to monitor human hygiene habits, achieving high accuracy in classifying hygiene activities for health monitoring.
Contribution
The study presents a novel, cost-effective sensor-based system combined with machine learning for non-invasive hygiene monitoring, demonstrating high classification accuracy.
Findings
Support Vector Machine achieved ~95% accuracy.
Tree-based classifiers reached 100% accuracy.
Vibration sensors effectively classify hygiene activities.
Abstract
People's personal hygiene habits speak volumes about the condition of taking care of their bodies and health in daily lifestyle. Maintaining good hygiene practices not only reduces the chances of contracting a disease but could also reduce the risk of spreading illness within the community. Given the current pandemic, daily habits such as washing hands or taking regular showers have taken primary importance among people, especially for the elderly population living alone at home or in an assisted living facility. This paper presents a novel and non-invasive framework for monitoring human hygiene using vibration sensors where we adopt Machine Learning techniques. The approach is based on a combination of a geophone sensor, a digitizer, and a cost-efficient computer board in a practical enclosure. Monitoring daily hygiene routines may help healthcare professionals be proactive rather than…
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Taxonomy
TopicsIoT-based Smart Home Systems · Fire Detection and Safety Systems · Video Surveillance and Tracking Methods
