Real-time fall detection system by using mobile robots in smart homes

L. Ciabattoni, F. Ferracuti, G. Foresi, A. Freddi, A. Monteriù, D. P. Pagnotta
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引用次数: 11

Abstract

An unobtrusive method to realize human fall detection by using bluetooth beacons, a smartphone and a low cost mobile robot is presented. The method is composed by five steps. The first consists in extracting features from the smartphone acceleration data, which are then analysed online by the fall detection algorithm. Once the fall event is detected, then the location is determined by using the bluetooth signal received from beacons. Then, the mobile robot moves towards the user's location, and finally verifies if the detected fall event is a true positive or not, through a procedure based on voice interaction with the potentially fallen user. The method has been tested in laboratory, proving to be a viable solution to perform fall detection in smart homes via consumer devices.
智能家居中使用移动机器人的实时跌倒检测系统
提出了一种利用蓝牙信标、智能手机和低成本移动机器人实现人体跌倒检测的方法。该方法由五个步骤组成。第一步是从智能手机加速度数据中提取特征,然后通过跌倒检测算法在线分析这些特征。一旦检测到坠落事件,就会使用从信标接收到的蓝牙信号来确定位置。然后,移动机器人向用户所在位置移动,最后通过基于与潜在跌倒用户语音交互的过程验证检测到的跌倒事件是否为真阳性。该方法已在实验室进行了测试,证明是通过消费设备在智能家居中执行跌倒检测的可行解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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