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The effect of window size and lead time on pre-impact fall detection accuracy using support vector machine analysis of waist mounted inertial sensor data

机译:使用腰围安装的惯性传感器数据的支持向量机分析,窗口大小和提前时间对碰撞前跌倒检测精度的影响

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Falls are a major cause of death and morbidity in older adults. In recent years many researchers have examined the role of wearable inertial sensors (accelerometers and/or gyroscopes) to automatically detect falls. The primary goal of such fall monitors is to alert care providers of the fall event, who can then commence earlier treatment. Although such fall detection systems may reduce time until the arrival of medical assistance, they cannot help to prevent or reduce the severity of traumatic injury caused by the fall. In the current study, we extend the application of wearable inertial sensors beyond post-impact fall detection, by developing and evaluating the accuracy of a sensor system for detecting falls prior to the fall impact. We used support vector machine (SVM) analysis to classify 7 fall and 8 non-fall events. In particular, we focused on the effect of data window size and lead time on the accuracy of our pre-impact fall detection system using signals from a single waist sensor. We found that our system was able to detect fall events at between 0.0625–0.1875 s prior to the impact with at least 95% sensitivity and at least 90% specificity for window sizes between 0.125–1 s.
机译:跌倒是老年人死亡和发病的主要原因。近年来,许多研究人员研究了可穿戴惯性传感器(加速度计和/或陀螺仪)在自动检测跌倒中的作用。此类跌倒监护仪的主要目的是提醒护理人员跌倒事件,然后他们可以开始更早的治疗。尽管这样的跌倒检测系统可以减少直到医疗救助到来的时间,但是它们无助于防止或减少由跌倒引起的创伤性伤害的严重性。在当前的研究中,我们通过开发和评估用于在跌倒冲击之前检测跌倒的传感器系统的准确性,将可穿戴惯性传感器的应用范围扩展到撞击后跌倒检测之外。我们使用支持向量机(SVM)分析对7个跌倒事件和8个非跌倒事件进行分类。尤其是,我们重点研究了数据窗口大小和前置时间对使用单个腰部传感器发出的信号的撞击前跌倒检测系统的准确性的影响。我们发现,我们的系统能够在撞击之前的0.0625-0.1875 s之间检测到坠落事件,对于0.125-1 s之间的窗口大小,至少有95%的灵敏度和至少90%的特异性。

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