Bourke A K, O'Donovan K J, Olaighin G
Biomedical Electronics Laboratory, Department of Electronic and Computer Engineering, University of Limerick, Limerick, Ireland.
Med Eng Phys. 2008 Sep;30(7):937-46. doi: 10.1016/j.medengphy.2007.12.003. Epub 2008 Feb 20.
This study investigates distinguishing falls from normal Activities of Daily Living (ADL) by thresholding of the vertical velocity of the trunk. Also presented is the design and evaluation of a wearable inertial sensor, capable of accurately measuring these vertical velocity profiles, thus providing an alternative to optical motion capture systems. Five young healthy subjects performed a number of simulated falls and normal ADL and their trunk vertical velocities were measured by both the optical motion capture system and the inertial sensor. Through vertical velocity thresholding (VVT) of the trunk, obtained from the optical motion capture system, at -1.3 m/s, falls can be distinguished from normal ADL, with 100% accuracy and with an average of 323 ms prior to trunk impact and 140 ms prior to knee impact, in this subject group. The vertical velocity profiles obtained using the inertial sensor, were then compared to those obtained using the optical motion capture system. The signals from the inertial sensor were combined to produce vertical velocity profiles using rotational mathematics and integration. Results show high mean correlation (0.941: Coefficient of Multiple Correlations) and low mean percentage error (6.74%) between the signals generated from the inertial sensor to those from the optical motion capture system. The proposed system enables vertical velocity profiles to be measured from elderly subjects in a home environment where as this has previously been impractical.
本研究通过对躯干垂直速度进行阈值处理来区分跌倒与正常日常生活活动(ADL)。此外,还介绍了一种可穿戴惯性传感器的设计与评估,该传感器能够准确测量这些垂直速度曲线,从而为光学运动捕捉系统提供了一种替代方案。五名年轻健康受试者进行了多次模拟跌倒和正常ADL,其躯干垂直速度由光学运动捕捉系统和惯性传感器测量。通过光学运动捕捉系统获得的躯干垂直速度阈值(VVT)为-1.3 m/s时,在该受试者组中,跌倒可与正常ADL区分开来,准确率达100%,且在躯干撞击前平均有323毫秒,在膝盖撞击前平均有140毫秒。然后将使用惯性传感器获得的垂直速度曲线与使用光学运动捕捉系统获得的曲线进行比较。利用旋转数学和积分将惯性传感器的信号组合起来,以生成垂直速度曲线。结果表明,惯性传感器产生的信号与光学运动捕捉系统产生的信号之间具有较高的平均相关性(多重相关系数为0.941)和较低的平均百分比误差(6.74%)。所提出的系统能够在家庭环境中测量老年受试者的垂直速度曲线,而这在以前是不切实际的。