论文标题
iWash:在传染病的背景下,具有实时反馈的智能手表质量评估和提醒系统
iWash: A Smartwatch Handwashing Quality Assessment and Reminder System with Real-time Feedback in the Context of Infectious Disease
论文作者
论文摘要
正确和经常洗手是防止传染病传播的最简单,最具成本效益的干预措施。人们通常对在不同情况下适当洗手不知道,并且不知道他们是否正确洗手。发现智能手表可有效评估洗手的质量。但是,现有的基于智能手表的系统在达到准确性方面不够全面,并提醒人们洗手并向用户提供手洗质量的反馈。通常需要进行设备处理以向用户提供实时反馈,因此,开发一个在智能手表(例如智能手表)上有效运行的系统很重要。但是,没有针对在设备处理中进行优化的洗手质量评估系统。我们提出了IWASH,这是一种综合系统,用于质量评估和上下文感知的提醒,用于使用智能手表实时反馈进行洗手。 IWASH是一种基于混合的深神经网络系统,可针对内部设备处理进行优化,以确保使用最小的处理时间和电池使用情况高精度。此外,这是一个上下文感知的系统,可检测用户何时使用蓝牙信标进入家中,并提供清洗手的提醒。 iWash还提供了用户和智能手表之间的无触摸互动,可最大程度地减少细菌传输的风险。我们收集了一个现实生活中的数据集,并进行了广泛的评估以证明iWash的性能。与现有的洗手质量评估系统相比,我们的质量评估准确性提高了约12%,并且分别将处理时间和电池使用率降低了37%和10%。
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 for quality assessment and context-aware reminder for handwashing with real-time feedback using smartwatches. iWash is a hybrid deep neural network based system that is optimized for on-device processing to ensure high accuracy with minimal processing time and battery usage. Additionally, it is a context-aware system that detects when the user is entering home using a Bluetooth beacon and provides reminders to wash hands. iWash also offers touch-free interaction between the user and the smartwatch that minimizes the risk of germ transmission. We collected a real-life dataset and conducted extensive evaluations to demonstrate the performance of iWash. Compared to the existing handwashing quality assessment systems, we achieve around 12% higher accuracy for quality assessment, as well as we reduce the processing time and battery usage by around 37% and 10%, respectively.