Nyan M N, Tay Francis E H, Murugasu E
Department of Mechanical Engineering, National University of Singapore, Singapore.
J Biomech. 2008 Dec 5;41(16):3475-81. doi: 10.1016/j.jbiomech.2008.08.009. Epub 2008 Nov 8.
Unique features of body segment kinematics in falls and activities of daily living (ADL) are applied to make automatic detection of a fall in its descending phase, prior to impact, possible. Fall-related injuries can thus be prevented or reduced by deploying fall impact reduction systems, such as an inflatable airbag for hip protection, before the impact. In this application, the authors propose the following hypothesis: "Thigh segments normally do not exceed a certain threshold angle to the side and forward directions in ADL, whereas this abnormal behavior occurs during a fall activity". Torso and thigh wearable inertial sensors (3D accelerometer and 2D gyroscope) are used and the whole system is based on a body area network (BAN) for the comfort of the wearer during a long term application. The hypothesis was validated in an experiment with 21 young healthy volunteers performing both normal ADL and fall activities. Results show that falls could be detected with an average lead-time of 700 ms before the impact occurs, with no false alarms (100% specificity), a sensitivity of 95.2%. This is the longest lead-time achieved so far in pre-impact fall detection.
身体各节段在跌倒和日常生活活动(ADL)中的独特运动学特征被用于在跌倒下降阶段、撞击发生前实现自动检测。通过在撞击前部署诸如用于髋部保护的可充气安全气囊等跌倒冲击减少系统,与跌倒相关的损伤因此可以得到预防或减轻。在本应用中,作者提出以下假设:“在日常生活活动中,大腿节段通常不会向侧面和前方超过某个阈值角度,而在跌倒活动期间会出现这种异常行为”。使用了躯干和大腿可穿戴惯性传感器(3D加速度计和2D陀螺仪),并且整个系统基于身体区域网络(BAN),以便在长期应用期间让佩戴者感到舒适。该假设在一项实验中得到验证,21名年轻健康志愿者进行了正常的日常生活活动和跌倒活动。结果表明,在撞击发生前平均提前700毫秒可以检测到跌倒,无误报(特异性为100%),灵敏度为95.2%。这是迄今为止在撞击前跌倒检测中实现的最长提前时间。