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Bed Position Classification by a Neural Network and Bayesian Network Using Noninvasive Sensors for Fall Prevention

机译:通过Neural Network和Bayesian网络使用非侵入式传感器进行床位分类

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Falls from a bed often occur when an elderly patient attempts to get out of bed or comes close to the edge of a bed. These mishaps have a high possibility of serious injuries, such as bruises, soreness, and bone fractures. Moreover, a lack of repositioning the body of a bedridden elderly person may cause bedsores. To avoid such a risk, a continuous activity monitoring system is needed for taking care of the elderly. In this study, we propose a bed position classification method based on the sensor signals collected from only four sensors that are embedded in a panel (composed of two piezoelectric sensors and two pressure sensors). It is installed under the mattress on the bed. The bed positions considered are classified into five different classes, i.e., off-bed, sitting, lying center, lying left, and lying right. To collect the training dataset, three elderly patients were asked for consent to participate in the experiment. In our approach, a neural network combined with a Bayesian network is adopted to classify the bed positions and put a constraint on the possible sequences of the bed positions. The results from both the neural network and Bayesian network are combined by the weighted arithmetic mean. The experimental results have a maximum accuracy of position classification of 97.06% when the proportion of coefficients for the neural network and the Bayesian network is 0.3 and 0.7, respectively.
机译:当老年患者试图起床或靠近床边的床上时,落在床上经常出现。这些事故的可能性很高,严重伤害,如瘀伤,酸痛和骨折。此外,缺乏重新定位的卧床患者的身体可能导致褥疮。为避免这种风险,需要持续的活动监测系统来照顾老人。在本研究中,我们提出了一种基于仅从面板中的四个传感器收集的传感器信号的床位位置分类方法(由两个压电传感器和两个压力传感器组成)。它安装在床上的床垫下。考虑的床位被分为五种不同的课程,即,脱床,坐着,撒谎,躺着,躺着躺着。要收集培训数据集,请三名老年患者同意参加实验。在我们的方法中,采用与贝叶斯网络相结合的神经网络来分类床位并对床位的可能序列进行约束。神经网络和贝叶斯网络的结果由加权算术平均组合。当神经网络的系数和贝叶斯网络的比例分别为0.3和0.7时,实验结果具有97.06%的位置分类的最高精度为97.06%。

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