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An Approach To Enhance Fall Detection Using Machine Learning Classifier

机译:一种使用机器学习分类器增强跌倒检测的方法

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Environmental protection is a concept that uses information and communication technology(ICT) for enhancing people’s daily lives. Human fall detection is an effective environmental support sub-area. One of the critical issues in elderly people is the fall detection. In this work, we have proposed the fall detection algorithms using machine learning which later uses a fog computing approach to send information to the caregiver in real-time. One class method based on a support vector machine is used to build fall detection and a Smartphone accelerometer is used for the data collection. We have considered five features from the Smartphone accelerometer for the building of the fall detection model. Fog computing approach is used to intimate the caregiver about the fall in real-time through the cloud connection even in the absence of fog node. The innovation is that we have used the multiplication of the kernel matrix to enforce a one-class classification. During the detection of human fall, the model has achieved 100% sensitivity and 98.8% specificity.
机译:环境保护是一种利用信息和通信技术(ICT)改善人们日常生活的概念。人体跌倒检测是有效的环境支持子区域。老年人的关键问题之一是跌倒检测。在这项工作中,我们提出了使用机器学习的跌倒检测算法,该算法随后使用雾计算方法将信息实时发送给护理人员。一种基于支持向量机的方法用于构建跌倒检测,而智能手机加速度计则用于数据收集。我们已经考虑了智能手机加速度计的五个功能来构建跌倒检测模型。雾计算方法用于通过云连接实时通知照料者关于跌倒的信息,即使没有雾节点也是如此。创新之处在于我们使用内核矩阵的乘法来执行一类分类。在检测人类跌倒过程中,该模型已达到100%的灵敏度和98.8%的特异性。

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