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首页> 外文期刊>Journal of Medical Imaging and Health Informatics >Accommodate Data Loss in Monitoring Vital Signs Through Autoregressive Model
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Accommodate Data Loss in Monitoring Vital Signs Through Autoregressive Model

机译:通过自回归模型,适应监测生命体征的数据丢失

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摘要

In this paper, the measurement of two vital signs including heartbeat and respiratory rate are discussed under two critical scenarios; namely subjection to noise and intermittent observations. Previously adopted scheme for finding the above mentioned vital signs was Fourier Transform which couldn't handle non-stationary process. For a broader perspective, Wavelet Transform is employed in this paper which is equally applicable to stationary and non-stationary processes. In addition, the intermittent observation is a malfunction which may result in severe consequences in measuring vital signs. In past, only noise-free data has been incorporated in tracing vital signs parameters. A Modified Robust Kalman Filter (MRKF) is designed to obtain optimum results in the presence of above two critical scenarios. Simulation results obtained on real data show that the performance of MRKF produces similar vital signs as with clean and undistorted data.
机译:在本文中,在两个临界情景下讨论了包括心跳和呼吸率的两个生命体征的测量; 即使噪声和间歇性观察。 以前采用的寻找上述生命体征的方案是傅里叶变换,无法处理非稳定过程。 为了更广泛的角度,本文采用小波变换,其同样适用于静止和非静止过程。 此外,间歇观察是一种可能导致测量生命体征的严重后果。 过去,仅在跟踪生命体征参数中才能结合无噪声数据。 修改的强大卡尔曼滤波器(MRKF)旨在在存在上述两个临界情景中获得最佳结果。 实际数据中获得的仿真结果表明,MRKF的性能产生类似的生命体征,如清洁和未变化的数据。

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