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Dynamic Bayesian Networks for Context-Aware Fall Risk Assessment

机译:动态贝叶斯网络用于情境感知跌落风险评估

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摘要

Fall incidents among the elderly often occur in the home and can cause serious injuries affecting their independent living. This paper presents an approach where data from wearable sensors integrated in a smart home environment is combined using a dynamic Bayesian network. The smart home environment provides contextual data, obtained from environmental sensors, and contributes to assessing a fall risk probability. The evaluation of the developed system is performed through simulation. Each time step is represented by a single user activity and interacts with a fall sensors located on a mobile device. A posterior probability is calculated for each recognized activity or contextual information. The output of the system provides a total risk assessment of falling given a response from the fall sensor.
机译:老年人跌倒事件经常发生在家里,并可能导致严重伤害,影响他们的独立生活。本文提出了一种使用动态贝叶斯网络将来自集成在智能家居环境中的可穿戴式传感器的数据进行组合的方法。智能家居环境提供从环境传感器获得的上下文数据,并有助于评估跌倒风险的可能性。通过仿真对开发的系统进行评估。每个时间步长都由单个用户活动表示,并与位于移动设备上的跌倒传感器进行交互。为每个识别的活动或上下文信息计算后验概率。给定跌倒传感器的响应,系统的输出可提供跌倒的总风险评估。

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