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An IoT-based framework for remote fall monitoring

机译:基于物联网的远程监测框架

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Fall detection is a serious healthcare issue that needs to be solved. Falling without quick medical intervention would lower elderly?s chances of survival, especially if living alone. Hence, the need is there for developing fall detection algorithms with high accuracy. This paper presents a novel IoT-based system for fall detection that includes a sensing device transmitting data to a mobile application through a cloud-connected gateway device. Then, the focus is shifted to the algorithmic aspect where multiple features are extracted from 3-axis accelerometer data taken from existing datasets. The results emphasize on the significance of Continuous Wavelet Transform (CWT) as an influential feature for determining falls. CWT, Signal Energy (SE), Signal Magnitude Area (SMA), and Signal Vector Magnitude (SVM) features have shown promising classification results using K-Nearest Neighbors (KNN) and E-Nearest Neighbors (ENN). For all performance metrics (accuracy, recall, precision, specificity, and F-1 score), the achieved results are higher than 95% for a dataset of small size, while more than 98.47% score is achieved in the aforementioned criteria over the UniMiB-SHAR dataset by the same algorithms, where the classification time for a single test record is extremely efficient and is real-time.
机译:跌倒检测是一个需要解决的严重医疗保健问题。没有快速医疗干预就会降低老年人生存的机会,特别是如果独自生活。因此,需要具有高精度的下降检测算法。本文提出了一种基于新的基于物联网的下降检测系统,其包括通过云连接的网关设备将数据发送到移动应用程序的传感设备。然后,将焦点移位到算法方面,其中从从现有数据集中拍摄的3轴加速度计数据中提取多个特征。结果强调了连续小波变换(CWT)作为确定跌落的影响特征的重要性。 CWT,信号能量(SE),信号幅度区域(SMA)和信号矢量幅度(SVM)特征已经示出了使用K-CORMATE邻居(KNN)和E-CORMALE邻居(ENN)的有前途的分类结果。对于所有性能指标(准确性,召回,精确,特异性和F-1分),所达到的结果高于小尺寸的数据集的95%,而在UNIMIB上上述标准中可以获得超过98.47%的分数-Shar DataSet由相同的算法,其中单个测试记录的分类时间非常有效,是实时的。

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