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Fall detection system for elderly people using IoT and ensemble machine learning algorithm

机译:利用物联网和集成机器学习算法的老年人跌倒检测系统

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摘要

Falls represent a major public health risk worldwide for the elderly people. A fall not assisted in time can cause functional impairment in an elderly and a significant decrease in his mobility, independence, and life quality. In this sense, we propose IoTE-Fall system, an intelligent system for detecting falls of elderly people in indoor environments that takes advantages of the Internet of Thing and the ensemble machine learning algorithm. IoTE-Fall system employs a 3D-axis accelerometer embedded into a 6LowPAN wearable device capable of capturing in real time the data of the movements of elderly volunteers. To provide high efficiency in fall detection, in this paper, four machine learning algorithms (classifiers): decision trees, ensemble, logistic regression, and Deepnets are evaluated in terms of AUC ROC, training time and testing time. The acceleration readings are processed and analyzed at the edge of the network using an ensemble-based predictor model that is identified as the most suitable predictor for fall detection. The experiment results from collection data, interoperability services, data processing, data analysis, alert emergency service, and cloud services show that our system achieves accuracy, precision, sensitivity, and specificity above 94%.
机译:瀑布是全世界老年人的主要公共健康风险。如果不及时跌倒,可能会导致老年人的功能受损,并严重降低其活动能力,独立性和生活质量。从这个意义上讲,我们提出了IoTE-Fall系统,这是一种利用物联网和集成机器学习算法来检测室内环境中老人跌倒的智能系统。 IoTE-Fall系统采用嵌入6LowPAN可穿戴设备中的3D轴加速度计,能够实时捕获老年志愿者的运动数据。为了提供高效率的跌倒检测,在本文中,根据AUC ROC,训练时间和测试时间评估了四种机器学习算法(分类器):决策树,集成,逻辑回归和Deepnets。使用基于集成的预测器模型在网络边缘处理和分析加速度读数,该模型被认为是最适合跌倒检测的预测器。来自收集数据,互操作性服务,数据处理,数据分析,警报紧急服务和云服务的实验结果表明,我们的系统达到了94%以上的准确性,准确性,敏感性和特异性。

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