基于传感器的远程健康监测决策推理系统

V. D. Poorani, K. Ganapathy, V. Vaidehi
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引用次数: 13

摘要

老年人跌倒是医疗环境关注的主要问题,因为他们更容易发生意外和不可预测的跌倒。这种跌落经常导致老年人受伤和死亡。因此,需要一种使用多种传感和事件检测方法的自动跌倒检测机制来分析老年人的活动。提出了一种基于三轴加速度传感器的家庭跌倒检测系统。本文采用自适应神经模糊推理系统(ANFIS)分类器等智能建模技术来检测跌倒,降低了计算复杂度,提高了准确率。利用ANFIS,将三轴加速度计获取的数据分类为站、坐、走、倒、卧五种状态之一,并采用反向传播法进行权重更新。在去模糊化过程中采用加权平均法,该方法提供了清晰的值。在训练神经网络时考虑了均值、中位数和标准差等特征。当识别为跌倒时,检查患者心率和心电图,发现异常并发出警报。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sensor based decision making inference system for remote health monitoring
Fall occurring in older people is of major concern in medical environment as they are more prone to unexpected and unpredictable falls. Such falls often leads to injury and death in elderly. Hence, an automated fall detection mechanism using multiple sensing and event detection methods are required to analyze the activities of elderly. This paper presents a system considering 3-axis accelerometer sensor to detect the fall in home environment. Intelligent modeling technique such as ANFIS (Adaptive Neuro-Fuzzy Inference System) classifier is employed in this paper to detect the fall with reduced computational complexity and more accuracy. Using ANFIS, the data obtained from 3-axis accelerometer is classified under one of the five states (standing, sitting, walking, falling and lying) and backpropogation method is used for weight updation. Weighted average method which provides crisp value is used for de-fuzzification process. Features such as mean, median and standard deviation are considered for training the neural network. When the activity is recognized as fall, the patient heart rate and ECG are examined to detect abnormality and alarm is raised.
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