跌落检测边缘推理的最优位置。

Christopher Paolini, Davit Soselia, Harsimran Baweja, Mahasweta Sarkar
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引用次数: 3

摘要

老年人身体受伤的一个主要原因是无意中跌倒在坚硬的表面上。在70岁及以上的老年人中,大约32-42%的人每年至少跌倒一次,而那些生活在辅助生活设施中的人每年跌倒的频率高于那些生活在住宅社区的人。如果跌倒导致脑震荡、创伤性脑损伤或骨折,那么跌倒时间和就医时间之间的延迟可能会加剧损伤。移动、无线、可穿戴、低功耗跌倒检测传感器(FDS)的几种实现已经商业化。这些设备通常作为垂饰戴在脖子上,或者像手表一样戴在手腕上。基于从放置在16个身体位置的IMU传感器收集的特征,并用于训练四种不同的机器学习模型,我们的研究结果表明,FDS在身体上的最佳位置是在胫骨的前面。
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Optimal Location for Fall Detection Edge Inferencing.

A leading cause of physical injury sustained by elderly persons is the event of unintentionally falling onto a hard surface. Approximately 32-42% of those 70 and over fall at least once each year, and those who live in assisted living facilities fall with greater frequency per year than those who live in residential communities. Delay between the time of fall and the time of medical attention can exacerbate injury if the fall resulted in concussion, traumatic brain injury, or bone fracture. Several implementations of mobile, wireless, wearable, low-power fall detection sensors (FDS) have become commercially available. These devices are typically worn around the neck as a pendant, or on the wrist, as a watch is worn. Based on features collected from IMU sensors placed at sixteen body locations, and used to train four different machine learning models, our findings show the optimal placement for an FDS on the body is in front of the shinbone.

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