Fusion Learning on Multiple-Tag RFID Measurements for Respiratory Rate Monitoring.

Stephen Hansen, Daniel Schwartz, Jesse Stover, Md Abu Saleh Tajin, William M Mongan, Kapil R Dandekar
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Abstract

Future advances in the medical Internet of Things (IoT) will require sensors that are unobtrusive and passively powered. With the use of wireless, wearable, and passive knitted smart garment sensors, we monitor infant respiratory activity. We improve the utility of multi-tag Radio Frequency Identification (RFID) measurements via fusion learning across various features from multiple tags to determine the magnitude and temporal information of the artifacts. In this paper, we develop an algorithm that classifies and separates respiratory activity via a Regime Hidden Markov Model compounded with higher-order features of Minkowski and Mahalanobis distances. Our algorithm improves respiratory rate detection by increasing the Signal to Noise Ratio (SNR) on average from 17.12 dB to 34.74 dB. The effectiveness of our algorithm in increasing SNR shows that higher-order features can improve signal strength detection in RFID systems. Our algorithm can be extended to include more feature sources and can be used in a variety of machine learning algorithms for respiratory data classification, and other applications. Further work on the algorithm will include accurate parameterization of the algorithm's window size.

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用于呼吸频率监测的多标签 RFID 测量融合学习。
未来医疗物联网(IoT)的发展需要不显眼、无源供电的传感器。通过使用无线、可穿戴和无源针织智能服装传感器,我们监测了婴儿的呼吸活动。我们通过对来自多个标签的各种特征进行融合学习,来确定工件的大小和时间信息,从而提高多标签射频识别(RFID)测量的实用性。在本文中,我们开发了一种算法,该算法通过时序隐马尔可夫模型与闵科夫斯基距离和马哈拉诺比斯距离的高阶特征相结合,对呼吸活动进行分类和分离。我们的算法平均可将信噪比(SNR)从 17.12 dB 提高到 34.74 dB,从而改善呼吸频率检测。我们的算法在提高信噪比方面的有效性表明,高阶特征可以改善 RFID 系统中的信号强度检测。我们的算法可以扩展到更多的特征源,并可用于呼吸数据分类的各种机器学习算法和其他应用中。该算法的下一步工作将包括算法窗口大小的精确参数化。
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