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足部步态信号的压缩感知及其在临床相关时间序列估计中的应用。

Compressive Sensing of Foot Gait Signals and Its Application for the Estimation of Clinically Relevant Time Series.

作者信息

Pant Jeevan K, Krishnan Sridhar

出版信息

IEEE Trans Biomed Eng. 2016 Jul;63(7):1401-15. doi: 10.1109/TBME.2015.2401512. Epub 2015 Feb 6.

Abstract

A new signal reconstruction algorithm for compressive sensing based on the minimization of a pseudonorm which promotes block-sparse structure on the first-order difference of the signal is proposed. Involved optimization is carried out by using a sequential version of Fletcher-Reeves' conjugate-gradient algorithm, and the line search is based on Banach's fixed-point theorem. The algorithm is suitable for the reconstruction of foot gait signals which admit block-sparse structure on the first-order difference. An additional algorithm for the estimation of stride-interval, swing-interval, and stance-interval time series from the reconstructed foot gait signals is also proposed. This algorithm is based on finding zero crossing indices of the foot gait signal and using the resulting indices for the computation of time series. Extensive simulation results demonstrate that the proposed signal reconstruction algorithm yields improved signal-to-noise ratio and requires significantly reduced computational effort relative to several competing algorithms over a wide range of compression ratio. For a compression ratio in the range from 88% to 94%, the proposed algorithm is found to offer improved accuracy for the estimation of clinically relevant time-series parameters, namely, the mean value, variance, and spectral index of stride-interval, stance-interval, and swing-interval time series, relative to its nearest competitor algorithm. The improvement in performance for compression ratio as high as 94% indicates that the proposed algorithms would be useful for designing compressive sensing-based systems for long-term telemonitoring of human gait signals.

摘要

提出了一种基于伪范数最小化的压缩感知信号重构新算法,该伪范数可促进信号一阶差分的块稀疏结构。通过使用Fletcher-Reeves共轭梯度算法的序列版本进行相关优化,并且线搜索基于巴拿赫不动点定理。该算法适用于重构在一阶差分上具有块稀疏结构的足部步态信号。还提出了一种从重构的足部步态信号估计步幅间隔、摆动间隔和站立间隔时间序列的附加算法。该算法基于找到足部步态信号的过零索引,并使用所得索引来计算时间序列。大量仿真结果表明,相对于几种竞争算法,在广泛的压缩比范围内,所提出的信号重构算法具有更高的信噪比,并且所需的计算量显著减少。对于88%至94%范围内的压缩比,发现所提出的算法在估计临床相关时间序列参数(即步幅间隔、站立间隔和摆动间隔时间序列的平均值、方差和频谱指数)方面比其最接近的竞争算法具有更高的准确性。对于高达94%的压缩比,性能的提升表明所提出的算法将有助于设计基于压缩感知的系统,用于人体步态信号的长期远程监测。

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