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A Two-Stage Incremental Update Method for Fall Detection with Wearable Device

机译:穿戴式设备跌倒检测的两阶段增量更新方法

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摘要

Falling down is a great threat to the health of the elderly. Existing approaches for fall detection, such as threshold methods and offline classification methods, have been shown to be useful for providing emergency medical care for the elderly. However, those offline models lack generalization and adaptability for all the users in everyday life, which severely restricts their applications in real life situations. In this paper, we propose a cloud computing based fall detection framework which can update the model online with two-stage incremental update step. By applying cloud computing, the framework can take advantage of wearable sensors for more accurate and efficient fall detection. The proposed framework is comprised of a two-stage incremental update, which consists of local and cloud components. The local component updates the detection model with feedback from users, which can make the model more personalized for users in a timely manner. In the cloud component, the model can achieve self-improvement based on the data of daily livings collected from other users. Our simulation experiments show that our framework can achieve higher precision and recall with the incremental update based on data from all users.
机译:跌倒是对老年人健康的巨大威胁。现有的跌倒检测方法,例如阈值方法和离线分类方法,已被证明可为老年人提供紧急医疗服务。但是,这些离线模型缺乏针对日常生活中所有用户的通用性和适应性,这严重限制了他们在现实生活中的应用。在本文中,我们提出了一种基于云计算的跌倒检测框架,该框架可以通过两步增量更新步骤在线更新模型。通过应用云计算,该框架可以利用可穿戴式传感器的优势,以进行更准确,更有效的跌倒检测。提议的框架由两阶段的增量更新组成,增量更新由本地和云组件组成。本地组件会根据用户的反馈来更新检测模型,这可以使模型适时地针对用户进行个性化设置。在云组件中,该模型可以基于从其他用户那里收集的日常生活数据来实现自我完善。我们的仿真实验表明,基于所有用户的数据,通过增量更新,我们的框架可以实现更高的精度和召回率。

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