Department of Computer Science, Texas State University, 601 University Drive, San Marcos 78666, TX, USA.
Department of Sociology, Texas State University, 601 University Drive, San Marcos 78666, TX, USA.
Int J Neural Syst. 2022 Dec;32(12):2250048. doi: 10.1142/S0129065722500484. Epub 2022 Aug 15.
The majority of current smart health applications are deployed on a smartphone paired with a smartwatch. The phone is used as the computation platform or the gateway for connecting to the cloud while the watch is used mainly as the data sensing device. In the case of fall detection applications for older adults, this kind of setup is not very practical since it requires users to always keep their phones in proximity while doing the daily chores. When a person falls, in a moment of panic, it might be difficult to locate the phone in order to interact with the Fall Detection App for the purpose of indicating whether they are fine or need help. This paper demonstrates the feasibility of running a real-time personalized deep-learning-based fall detection system on a smartwatch device using a collaborative edge-cloud framework. In particular, we present the software architecture we used for the collaborative framework, demonstrate how we automate the fall detection pipeline, design an appropriate UI on the small screen of the watch, and implement strategies for the continuous data collection and automation of the personalization process with the limited computational and storage resources of a smartwatch. We also present the usability of such a system with nine real-world older adult participants.
目前大多数智能健康应用程序都部署在智能手机上,并与智能手表配合使用。手机用作计算平台或连接云端的网关,而手表主要用作数据感应设备。在针对老年人的跌倒检测应用程序中,这种设置不太实用,因为它要求用户在做日常家务时始终将手机放在附近。当一个人跌倒时,在恐慌的瞬间,可能很难找到手机来与跌倒检测应用程序交互,以表明他们是否安好或需要帮助。本文展示了在使用协作边缘云框架的智能手表设备上运行实时个性化深度学习跌倒检测系统的可行性。特别是,我们展示了我们用于协作框架的软件架构,演示了如何自动执行跌倒检测管道,在手表的小屏幕上设计适当的用户界面,并实现使用智能手表有限的计算和存储资源进行连续数据收集和个性化过程自动化的策略。我们还展示了该系统在九名实际老年人参与者中的可用性。