使用可穿戴传感器进行跌倒检测——安全(智能跌倒检测)

O. Ojetola, E. Gaura, J. Brusey
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引用次数: 77

摘要

老年人的高跌倒发生率要求开发可靠和强大的跌倒检测系统。已经提出了许多这样的系统,声称基于加速度计和陀螺仪的跌倒检测精度超过90%。然而,大多数此类跌倒检测算法都是基于对所收集数据的观察分析而开发的,这导致了跌倒/非跌倒情况的阈值设置。虽然报告的跌倒检测精度似乎很高,但几乎没有证据表明所提出的基于阈值的方法可以很好地概括不同的受试者和不同的数据收集策略或实验场景。此外,似乎很少有人尝试在现实场景中验证所提出的方法,或者实时提供可靠的秋季决策。这里的研究使用机器学习,特别是决策树来检测四种类型的摔倒(向前、向后、右和左)。当应用于8名男性受试者的实验数据时,基于加速度计和陀螺仪的系统区分日常生活活动(ADLs)和跌倒的准确率为81%,召回率为92%。进一步分析了该方法的性能和鲁棒性,包括对被试身体轮廓和训练集大小的敏感性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fall Detection with Wearable Sensors--Safe (Smart Fall Detection)
The high rate of falls incidence among the elderly calls for the development of reliable and robust fall detection systems. A number of such systems have been proposed, with claims of fall detection accuracy of over 90% based on accelerometers and gyroscopes. However, most such fall detection algorithms have been developed based on observational analysis of the data gathered, leading to thresholds setting for fall/non-fall situations. Whilst the fall detection accuracies reported appear to be high, there is little evidence that the threshold based methods proposed generalise well with different subjects and different data gathering strategies or experimental scenarios. Moreover, few attempts appear to have been made to validate the proposed methods in real-life scenarios or to deliver robust fall decisions in real-time. The research here uses machine learning and particularly decision trees to detect 4 types of falls (forward, backward, right and left). When applied to experimental data from 8 male subjects, the accelerometers and gyroscopes based system discriminates between activities of daily living (ADLs) and falls with a precision of 81% and recall of 92%. The performance and robustness of the method proposed has been further analysed in terms its sensitivity to subject physical profile and training set size.
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