使用陀螺仪和加速度计导出的姿态信息进行准确、快速的跌倒检测

Qiang Li, J. Stankovic, M. Hanson, Adam T. Barth, J. Lach, Gang Zhou
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引用次数: 564

摘要

跌倒对老年人来说是危险的,因为它们会对健康产生不利影响。因此,许多跌落检测系统被开发出来。然而,普遍的方法仅使用加速度计来隔离跌倒与日常生活活动(ADL)。这使得很难区分真正的跌倒和某些类似跌倒的活动,如快速坐下和跳跃,导致许多误报。身体方向也可用作检测跌倒的手段,但当结束位置不是水平时,例如在楼梯上摔倒时,它不是很有用。本文提出了一种采用加速度计和陀螺仪的新型跌倒检测系统。我们将人类活动分为两类:静态姿势和动态转换。通过在不同的身体位置使用两个三轴加速度计,我们的系统可以识别四种静态姿势:站立、弯曲、坐着和躺着。这些静态姿势之间的运动被认为是动态转换。测量线性加速度和角速度以确定运动转换是否有意。如果在躺姿之前的转换不是故意的,就会检测到跌倒事件。我们的算法与加速度计和陀螺仪相结合,减少了假阳性和假阴性,同时提高了跌倒检测的准确性。此外,我们的解决方案具有计算成本低和实时响应的特点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Accurate, Fast Fall Detection Using Gyroscopes and Accelerometer-Derived Posture Information
Falls are dangerous for the aged population as they can adversely affect health. Therefore, many fall detection systems have been developed. However, prevalent methods only use accelerometers to isolate falls from activities of daily living (ADL). This makes it difficult to distinguish real falls from certain fall-like activities such as sitting down quickly and jumping, resulting in many false positives. Body orientation is also used as a means of detecting falls, but it is not very useful when the ending position is not horizontal, e.g. falls happen on stairs. In this paper we present a novel fall detection system using both accelerometers and gyroscopes. We divide human activities into two categories: static postures and dynamic transitions. By using two tri-axial accelerometers at separate body locations, our system can recognize four kinds of static postures: standing, bending, sitting, and lying. Motions between these static postures are considered as dynamic transitions. Linear acceleration and angular velocity are measured to determine whether motion transitions are intentional. If the transition before a lying posture is not intentional, a fall event is detected. Our algorithm, coupled with accelerometers and gyroscopes, reduces both false positives and false negatives, while improving fall detection accuracy. In addition, our solution features low computational cost and real-time response.
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