Wang Changhong, Redmond Stephen J, Lu Wei, Stevens Michael C, Lord Stephen R, Lovell Nigel H
Graduate School of Biomedical EngineeringUniversity of New South Wales.
Neuroscience Research AustraliaUniversity of New South Wales.
IEEE Trans Biomed Eng. 2017 Nov;64(11):2729-2736. doi: 10.1109/TBME.2017.2669338.
Falls are a serious threat to the health of older people. A wearable fall detector can automatically detect the occurrence of a fall and alert a caregiver or an emergency response service so they may deliver immediate assistance, improving the chances of recovering from fall-related injuries. One constraint of such a wearable technology is its limited battery life. Thus, minimization of power consumption is an important design concern, all the while maintaining satisfactory accuracy of the fall detection algorithms implemented on the wearable device. This paper proposes an approach for selecting power-efficient signal features such that the minimum desirable fall detection accuracy is assured. Using data collected in simulated falls, simulated activities of daily living, and real free-living trials, all using young volunteers, the proposed approach selects four features from a set of ten commonly used features, providing a power saving of 75.3%, while limiting the error rate of a binary classification decision tree fall detection algorithm to 7.1%.Falls are a serious threat to the health of older people. A wearable fall detector can automatically detect the occurrence of a fall and alert a caregiver or an emergency response service so they may deliver immediate assistance, improving the chances of recovering from fall-related injuries. One constraint of such a wearable technology is its limited battery life. Thus, minimization of power consumption is an important design concern, all the while maintaining satisfactory accuracy of the fall detection algorithms implemented on the wearable device. This paper proposes an approach for selecting power-efficient signal features such that the minimum desirable fall detection accuracy is assured. Using data collected in simulated falls, simulated activities of daily living, and real free-living trials, all using young volunteers, the proposed approach selects four features from a set of ten commonly used features, providing a power saving of 75.3%, while limiting the error rate of a binary classification decision tree fall detection algorithm to 7.1%.
跌倒对老年人的健康构成严重威胁。可穿戴式跌倒探测器能够自动检测跌倒的发生,并向护理人员或应急响应服务机构发出警报,以便他们能够立即提供援助,从而提高从跌倒相关损伤中恢复的几率。这种可穿戴技术的一个限制是其电池续航时间有限。因此,在保持可穿戴设备上所实施的跌倒检测算法具有令人满意的准确性的同时,将功耗降至最低是一个重要的设计考量。本文提出了一种选择节能信号特征的方法,以确保达到最低期望的跌倒检测准确率。利用在模拟跌倒、模拟日常生活活动以及真实自由生活试验中收集的数据(所有这些试验均使用年轻志愿者),该方法从一组十个常用特征中选取了四个特征,实现了75.3%的节能效果,同时将二元分类决策树跌倒检测算法的错误率限制在7.1%。跌倒对老年人的健康构成严重威胁。可穿戴式跌倒探测器能够自动检测跌倒的发生,并向护理人员或应急响应服务机构发出警报,以便他们能够立即提供援助,从而提高从跌倒相关损伤中恢复的几率。这种可穿戴技术的一个限制是其电池续航时间有限。因此,在保持可穿戴设备上所实施的跌倒检测算法具有令人满意的准确性的同时,将功耗降至最低是一个重要的设计考量。本文提出了一种选择节能信号特征的方法,以确保达到最低期望的跌倒检测准确率。利用在模拟跌倒、模拟日常生活活动以及真实自由生活试验中收集的数据(所有这些试验均使用年轻志愿者),该方法从一组十个常用特征中选取了四个特征,实现了75.3%的节能效果,同时将二元分类决策树跌倒检测算法的错误率限制在7.1%。