A low-power HAR method for fall and high-intensity ADLs identification using wrist-worn accelerometer devices

E. D. L. Cal, M. Fáñez, Mario Villar, J. Villar, Víctor M. González
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引用次数: 1

Abstract

There are many real-world applications like healthcare systems, job monitoring, well-being and personal fitness tracking, monitoring of elderly and frail people, assessment of rehabilitation and follow-up treatments, affording Fall Detection (FD) and ADL (Activity of Daily Living) identification, separately or even at a time. However, the two main drawbacks of these solutions are that most of the times, the devices deployed are obtrusive (devices worn on not quite common parts of the body like neck, waist and ankle) and the poor battery life. Thus, this work proposes a low-power classification algorithm based on an Ensemble of KNN and K-Means algorithms (EKMeans) to identify Falls and High-Intensity ADL events such as running, jogging and climbing up stairs. The input of EKMeans are triaxial accelerometer data gathered from wrist-wearable devices. The proposal will be validated on the Fall&ADL publicly available datasets UMAFall, UCIFall and FallAllD, considering two kinds of activity labelling: Two-Class and Multi-Class. An exhaustive comparative study between our proposal, and the baseline algorithms KNN and a feed-forward Neural Network (NN) is deployed, where EKMeans outperformed clearly the Specificity (ADL classification) of the KNN and NN for the three datasets. Finally, a comparative battery consumption study has been included deploying the analyzed algorithms in a WearOS smartwatch, where EKMeans drains the battery from 100% to 0% in 27.45 hours, saving 5% and 21% concerning KNN and NN, respectively. Keywords: Human Activity Recognition, ADL Identification, Fall Detection TS Clustering, TS Classification, Wearable Devices, Low-Power HAR.
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一种低功耗HAR方法,用于摔倒和高强度adl识别,使用腕带加速度计设备
有许多现实世界的应用,如医疗保健系统,工作监测,健康和个人健身跟踪,老年人和体弱者监测,康复评估和后续治疗,提供跌倒检测(FD)和ADL(日常生活活动)识别,单独或甚至一次。然而,这些解决方案的两个主要缺点是,大多数时候,部署的设备是突兀的(设备佩戴在不太常见的身体部位,如脖子、腰部和脚踝)和电池寿命短。因此,本研究提出了一种基于KNN和K-Means算法(EKMeans)集成的低功耗分类算法,用于识别跌倒和高强度ADL事件,如跑步、慢跑和爬楼梯。EKMeans的输入是从手腕可穿戴设备收集的三轴加速度计数据。该提案将在Fall&ADL公开可用的数据集umfall, UCIFall和FallAllD上进行验证,考虑两种类型的活动标签:两类和多类。我们的建议与基线算法KNN和前馈神经网络(NN)之间进行了详尽的比较研究,其中EKMeans在三个数据集上明显优于KNN和NN的特异性(ADL分类)。最后,对电池消耗进行了比较研究,将分析的算法部署在WearOS智能手表上,其中EKMeans在27.45小时内将电池从100%消耗到0%,在KNN和NN方面分别节省5%和21%。关键词:人体活动识别,ADL识别,跌倒检测,TS聚类,TS分类,可穿戴设备,低功耗HAR。
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