Predicting proximity with ambient mobile sensors for non-invasive health diagnostics

S. Orimaye, Foo Chuan Leong, Chen Hui Lee, Eddy Cheng Han Ng
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引用次数: 4

Abstract

Modern smart phones are becoming helpful in the areas of Internet-Of-Things (IoT) and ambient health intelligence. By learning data from several mobile sensors, we detect nearness of the human body to a mobile device in a three-dimensional space with no physical contact with the device for non-invasive health diagnostics. We show that the human body generates wave patterns that interact with other naturally occurring ambient signals that could be measured by mobile sensors, such as, temperature, humidity, magnetic field, acceleration, gravity, and light. This interaction consequentially alters the patterns of the naturally occurring signals, and thus, exhibits characteristics that could be learned to predict the nearness of the human body to a mobile device, hence provide diagnostic information for medical practitioners. Our prediction technique achieved 88.75% accuracy and 88.3% specificity.
预测与环境移动传感器的接近程度,用于非侵入性健康诊断
现代智能手机在物联网(IoT)和环境健康智能领域正变得越来越有用。通过学习来自多个移动传感器的数据,我们在三维空间中检测人体与移动设备的接近程度,而无需与设备进行物理接触,从而进行非侵入性健康诊断。我们表明,人体产生的波形与其他自然发生的环境信号相互作用,这些信号可以通过移动传感器测量,如温度、湿度、磁场、加速度、重力和光。这种相互作用必然会改变自然产生的信号的模式,因此,显示出可以通过学习来预测人体与移动设备的距离的特征,从而为医疗从业者提供诊断信息。我们的预测技术准确率为88.75%,特异性为88.3%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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