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Autonomous on-wrist acceleration-based fall detection systems: unsolved challenges

机译:基于自动的手腕加速度的秋季检测系统:取消解决的挑战

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摘要

Fall detection (FD) has been the focus of many research studies during the last years. Developing reliable FD systems is relevant, for instance, to provide support to the elderly population in their everyday life. Besides, the generalization of the use of wearable devices (and more specifically, on-wrist devices) to measure the daily activity strongly suggests that in a short period of time, the elderly people will be making use of this type of devices. On-wrist devices can be used as the FD basic sensing unit; while the intelligent classification can be obtained either autonomously (on the device) or requested to a remote service (via the paired smartphone or via web services). This study tries to analyze the current challenges in autonomous on-wrist wearable devices for producing a reliable and robust FD system. To do so, we analyze the related work; one of the possible solutions is implemented with several alternatives and evaluated with publicly available simulated falls data sets. The most remarkable findings in this research are that i) real fall data sets are needed, at least, a valid merging method to produce real fall like Time Series, ii) generalized solutions might not be enough and research is needed in models that learns from the user, iii) the need of tuning and fitting to the current user performance, iv) the amount of fall types suggests that hybrid and ensemble approaches might be interesting.(c) 2020 Elsevier B.V. All rights reserved.
机译:跌倒检测(FD)是在过去几年中许多研究研究的重点。例如,开发可靠的FD系统是相关的,以便为日常生活中的老年人提供支持。此外,使用可穿戴设备(更具体地说,腕上的装置)的概括,以测量日常活动强烈建议,在短时间内,老年人将利用这种类型的设备。手腕装置可用作FD基本传感单元;虽然可以自主地(在设备上)获得智能分类,或者请求远程服务(通过配对的智能手机或通过Web服务)。本研究试图分析自动腕上可穿戴设备中的当前挑战,用于生产可靠且坚固的FD系统。为此,我们分析相关工作;其中一个可能的解决方案用几种替代方案实现,并通过公开可用的模拟落落数据集进行评估。本研究中最卓越的发现是I)需要真实的秋季数据集,至少,要生成真实秋季的有效合并方法,如时间序列,II)广义解决方案可能不够,并且在学习的模型中需要足够的研究并且研究用户,iii)需要调整和拟合到当前的用户性能,iv)秋季类型的量表明混合和集合方法可能是有趣的。(c)2020 Elsevier BV保留所有权利。

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