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首页> 外文期刊>IEEE sensors journal >Elderly Fall Detection Using Wearable Sensors: A Low Cost Highly Accurate Algorithm
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Elderly Fall Detection Using Wearable Sensors: A Low Cost Highly Accurate Algorithm

机译:使用可穿戴传感器的老年人跌倒检测:一种低成本,高精度的算法

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摘要

Every year, more than 37 million falls that require medical attention occur. The elderly suffers the greatest number of fatal falls. Therefore, automatic fall detection for the elderly is one of the most important health-care applications as it enables timely medical intervention. The fall detection problem has extensively been studied over the last decade. However, since the hardware resources of wearable devices are limited, designing highly accurate embeddable algorithms with feasible computational cost is still an open research challenge. In this paper, a low-cost highly accurate machine learning-based fall detection algorithm is proposed. Particularly, a novel online feature extraction method that efficiently employs the time characteristics of falls is proposed. In addition, a novel design of a machine learning-based system is proposed to achieve the best accuracyumerical complexity tradeoff. The low computational cost of the proposed algorithm not only enables to embed it in a wearable sensor but also makes the power requirements quite low and hence enhances the autonomy of the wearable device, where the need for battery recharge/replace is minimized. Experimental results on a large open dataset show that the accuracy of the proposed algorithm exceeds 99.9% with a computational cast of less than 500 floating point operations per second.
机译:每年,需要医疗护理的跌倒次数超过3700万次。老年人遭受致命性摔倒的次数最多。因此,老年人的自动跌倒检测是最重要的医疗保健应用之一,因为它可以及时进行医疗干预。在过去十年中,对跌倒检测问题进行了广泛的研究。然而,由于可穿戴设备的硬件资源有限,因此以可行的计算成本设计高度精确的可嵌入算法仍然是一个开放的研究挑战。本文提出了一种基于低成本高精度机器学习的跌倒检测算法。特别地,提出了一种有效利用跌倒的时间特征的新颖的在线特征提取方法。另外,提出了一种基于机器学习的系统的新颖设计,以实现最佳的精度/数值复杂度折衷。所提出算法的低计算成本不仅能够将其嵌入可穿戴式传感器中,而且还使功耗要求非常低,从而提高了可穿戴设备的自主性,从而最大限度地减少了电池的充电/更换需求。在大型开放数据集上的实验结果表明,所提出的算法的准确度超过99.9%,而计算转换每秒少于500个浮点运算。

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