ECG feature detection using randomly compressed samples for stable HRV analysis over low rate links

Ju Gao, Diyan Teng, Emre Ertin
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引用次数: 4

Abstract

Wireless biosensors enable continuous monitoring of physiology and can provide early signs of imminent problems allowing for quick intervention and improved outcomes. Wireless communication of the sensor data for remote storage and analysis dominates the device power budget and puts severe constraints on lifetime and size of these sensors. Traditionally, to minimize the wireless communication bandwidth, data compression at the sensor node and signal reconstruction at the remote terminal is utilized. Here we consider an alternative strategy of feature detection with compressed samples without the intermediate step of signal reconstruction. Specifically, we present a compressed matched subspace detection algorithm to detect fiducial points of ECG waveform from streaming random projections of the data. We provide a theoretical analysis to compare the performance of the compressed matched detector performance to that of a matched detector operating with uncompressed data. We present extensive experimental results with ECG data collected in the field illustrating that the proposed system can provide high quality heart rate variability indices and achieve an order of magnitude better RMSE in beat-to-beat heart rate estimation than the traditional filter/downsample solutions at low data rates.
在低速率链路上使用随机压缩样本进行稳定HRV分析的ECG特征检测
无线生物传感器能够持续监测生理状况,并能提供迫在眉睫的问题的早期迹象,从而实现快速干预和改善结果。用于远程存储和分析的传感器数据的无线通信主导了设备的功率预算,并严重限制了这些传感器的使用寿命和尺寸。传统上,为了使无线通信带宽最小化,采用了传感器节点数据压缩和远程终端信号重构的方法。在这里,我们考虑了一种不需要信号重构中间步骤的压缩样本特征检测的替代策略。具体来说,我们提出了一种压缩匹配子空间检测算法,从数据的随机流投影中检测心电波形的基点。我们提供了一个理论分析来比较压缩匹配检测器的性能与使用未压缩数据的匹配检测器的性能。我们展示了大量现场收集的心电数据的实验结果,表明所提出的系统可以提供高质量的心率变异性指标,并且在低数据率下,与传统的滤波/下采样解决方案相比,在心跳对心跳的估计中获得了一个数量级更好的RMSE。
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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