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Using Hidden Markov Models and Rule-based Sensor Mediation on Wearable eHealth Devices

机译:使用隐马尔可夫模型和基于规则的可穿戴电子医疗设备调解

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Improvements in sensor miniaturization allow wearable devices to provide more functionality while also being more comfortable for users to wear. The Samsung Simband, for example, has 6 different sensors Electrocardiogram (ECG), Photoplethysmogram (PPG), Galvanic Skin Response (GSR), Bio-Impedance (Bio-Z), Accelerometer and a thermometer as well as a modular sensor hub to easily add additional ones. This increased number of sensors for wearable devices opens new possibilities for a more precise monitoring of patients by integrating the data from the different sensors. This integration can be influenced by failing or malfunctioning sensors and noise. In this paper, we propose an approach that uses Hidden Markov Models (HMM) in combination with a rule-based engine to mediate among the different sensors' data in order to allow the eHealth system to compute a diagnosis on the basis of the selected reliable sensors. We also show some preliminary results about the accuracy of the first stage of the proposed model.
机译:传感器小型化的改进允许可穿戴设备提供更多功能,同时对用户佩戴也更舒适。例如,三星SIMBAND具有6种不同的传感器心电图(ECG),光增性肌谱(PPG),电流性皮肤响应(GSR),生物阻抗(BIO-Z),加速度计和温度计以及模块化传感器中心添加额外的。可穿戴设备的这种传感器数量增加,通过将数据从不同的传感器集成数据,为患者提供更精确的监测的新可能性。这种集成可能会受到传感器和噪声发生故障或故障的影响。在本文中,我们提出了一种方法,该方法使用隐马尔可夫模型(HMM)与基于规则的引擎结合使用,以在不同的传感器的数据中介断,以便允许EHEALTE系统基于所选可靠的基础计算诊断传感器。我们还显示了一些关于所提出的模型第一阶段的准确性的初步结果。

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