iWash: A Smartwatch Handwashing Quality Assessment and Reminder System with Real-time Feedback in the Context of Infectious Disease
Sirat Samyoun, Sudipta Saha Shubha, Md Abu Sayeed Mondol, John A., Stankovic

TL;DR
iWash is a smartwatch-based system that accurately assesses handwashing quality, provides real-time feedback, and offers context-aware reminders to promote better hygiene and prevent disease spread.
Contribution
It introduces a hybrid deep neural network optimized for on-device processing, improving accuracy and efficiency over existing systems.
Findings
12% higher accuracy in handwashing quality assessment
37% reduction in processing time
10% reduction in battery usage
Abstract
Washing hands properly and frequently is the simplest and most cost-effective interventions to prevent the spread of infectious diseases. People are often ignorant about proper handwashing in different situations and do not know if they wash hands properly. Smartwatches are found to be effective for assessing the quality of handwashing. However, the existing smartwatch based systems are not comprehensive enough in terms of achieving accuracy as well as reminding people to handwash and providing feedback to the user about the quality of handwashing. On-device processing is often required to provide real-time feedback to the user, and so it is important to develop a system that runs efficiently on low-resource devices like smartwatches. However, none of the existing systems for handwashing quality assessment are optimized for on-device processing. We present iWash, a comprehensive system…
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