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Zigbee-Based Wearable Device for Elderly Health Monitoring with Fall Detection

机译:基于Zigbee的可穿戴装置,用于坠落检测的老年健康监测

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Health monitoring devices have flooded the market. But there are very few that cater specifically to the needs of elderly people. Continuously monitoring some critical health parameters like heart rate, body temperature can be lifesaving when the elderly is not physically monitored by a caretaker. An important difference between a general health tracking device and one meant specifically for the elderly is the pressing need in the latter to be able to detect a fall. In case of an elderly person or a critical patient, an unexpected fall, if not attended to within a very short time span, can lead to disastrous consequences including death. We present a solution in the form of a wearable device which, along with monitoring the critical health parameters of the elderly person, can also detect an event of a fall and alert the caretaker. We make use of a 3-axis accelerometer embedded into the wearable to collect acceleration data from the movements of the elderly. We have presented two algorithms for fall detections--one based on a threshold and the other based on a neural network and provided a detailed comparison of the two in terms of accuracy, performance, and robustness.
机译:健康监测设备已淹没市场。但是,很少有迎合老年人的需求。连续监测心率等一些关键的健康参数,当老年人没有被看护人身体监测时,体温可以救命。一般健康跟踪装置和一个专门对老年人意味着的重要区别是后者的压迫需求能够检测到秋季。如果是老年人或关键患者,一个意外的秋天,如果没有在很短的时间内参加,可以导致包括死亡的灾难性后果。我们以可穿戴设备的形式提出了一种解决方案,以及监测老年人的临界健康参数,也可以检测一个跌倒并提醒护理人员的事件。我们利用嵌入穿戴的3轴加速度计,从老年人的运动中收集加速度数据。我们介绍了两个用于坠落检测的算法 - 基于阈值和基于神经网络的另一个算法,并且在准确性,性能和鲁棒性方面提供了两者的详细比较。

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