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Fall Detection Using Smartwatch Sensor Data with Accessor Architecture

机译:使用具有访问器架构的Smartwatch传感器数据进行跌倒检测

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This paper proposes using a commodity-based smartwatch paired with a smartphone for developing a fall detection IoT application which is non-invasive and privacy preserving. The majority of current fall detection applications require specially designed hardware and software which make them expensive and inaccessible to the general public. We demonstrated that by collecting accelerometer data from a smartwatch and processing those data in a paired smartphone, it is possible to reliability detect (93.8% accuracy) whether a person has encountered a fall in real-time. By wearing a smartwatch as a piece of jewelry, the well-being of a person can be monitored in real-time at anytime and anywhere as contrasted to being confined in a particular facility installed with special sensors and cameras. Using simulated fall data acquired from volunteers, we trained a fall detection model off-line that can be composed with a data collection accessor to continuously analyze accelerometer data gathered from a smartwatch to detect minor or serious fall at anytime and anywhere. The accessor-based architecture allows easy composition of the fall-detection IoT application tailored to heterogeneity of devices and variation of user's need.
机译:本文提出将基于商品的智能手表与智能手机搭配使用,以开发跌倒检测物联网应用程序,该应用程序是非侵入性的并且可以保护隐私。当前的大多数跌倒检测应用程序都需要专门设计的硬件和软件,这使得它们昂贵且公众无法访问。我们证明,通过从智能手表收集加速度计数据并在配对的智能手机中处理这些数据,可以可靠地检测(准确度93.8%)人是否实时跌倒。通过将智能手表当作珠宝来佩戴,可以在任何时间,任何地点实时监控人的健康状况,这与将其限制在安装有特殊传感器和摄像头的特定设施中形成了鲜明的对比。使用从志愿者那里获得的模拟跌倒数据,我们离线训练了跌倒检测模型,该模型可以与数据收集访问器结合使用,以连续分析从智能手表收集的加速度计数据,以便随时随地检测出轻微或严重的跌倒。基于访问器的架构可轻松组成针对设备异构性和用户需求变化量身定制的跌倒检测物联网应用程序。

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