Jatesiktat Prayook
Annu Int Conf IEEE Eng Med Biol Soc. 2017 Jul;2017:125-130. doi: 10.1109/EMBC.2017.8036778.
As the world population is growing toward an aging society, elderly fall becomes a serious problem. Automatic fall detection and alert systems could shorten their waiting time after a fall and mitigate its physical and mental negative consequences. This work proposes a method that integrates a 3-axis accelerometer and a barometer on a wrist-worn device for the fall detection task. The method focuses on the use of noisy signals from a barometer in both pre-processing steps and feature extractions. A use of free falling events to address the lack of training data in a learning process is also explored. An evaluation using simulated falls and various activities shows a high classification performance except for a few false alarms occurring when sitting on the floor from a standing pose.
随着世界人口向老龄化社会发展,老年人跌倒成为一个严重问题。自动跌倒检测和警报系统可以缩短跌倒后的等待时间,并减轻其身心负面影响。这项工作提出了一种在腕戴设备上集成三轴加速度计和气压计来进行跌倒检测任务的方法。该方法在预处理步骤和特征提取中都注重使用来自气压计的噪声信号。还探索了利用自由落体事件来解决学习过程中训练数据不足的问题。使用模拟跌倒和各种活动进行的评估显示,除了从站立姿势坐在地板上时出现的一些误报外,分类性能很高。