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Data fusion of single-tag rfid measurements for respiratory rate monitoring

机译:单标签RFID测量的数据融合,用于呼吸频率监测

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Using wireless, passive, wearable, knitted, smart garment devices, we monitor biofeedback that can be observed via strain gauge sensors. This biofeedback includes respiratory activity, uterine monitoring during labor and delivery, and regular movements to prevent Deep Vein Thrombosis (DVT). Due to noise artifacts present in a wireless strain gauge monitor and the possibly non-stationary nature of the signal itself, signal analysis beyond the Fourier transform is needed to extract the properties of the observed motion artifacts. We improve the utility of a single Radio Frequency Identification (RFID) tag by fusing multiple features of the tag, in order to precisely determine the frequency and magnitude of motion artifacts. In this paper, we motivate the need for a multi-feature approach to RFID-based strain gauge analysis, correct raw RFID interrogator measurements into features, fuse those features using a Gaussian Mixture Model and expectation maximization, and improve respiratory rate detection from 9 to 6 mean squared error over prior work.
机译:通过使用无线,无源,可穿戴,针织,智能服装设备,我们可以监视生物反馈,该反馈可以通过应变仪传感器进行观察。这种生物反馈包括呼吸活动,分娩和分娩期间的子宫监测以及定期运动以防止深静脉血栓形成(DVT)。由于无线应变仪监视器中存在噪声伪像,并且信号本身可能具有非平稳性,因此,需要进行傅立叶变换之外的信号分析来提取观察到的运动伪像的特性。我们通过融合标签的多个功能来提高单个射频识别(RFID)标签的效用,以便精确确定运动伪像的频率和大小。在本文中,我们激发了对基于RFID的应变仪分析采用多特征方法,将原始RFID询问器测量值正确校正为特征,使用高斯混合模型和期望最大化来融合这些特征以及将呼吸频率检测从9提高到9的需求。 6均方误差超过先前的工作。

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