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首页> 外文期刊>IEEE Transactions on Biomedical Engineering >A transform domain SVD filter for suppression of muscle noise artefacts in exercise ECG's
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A transform domain SVD filter for suppression of muscle noise artefacts in exercise ECG's

机译:用于抑制运动ECG中肌肉噪声伪影的变换域SVD滤波器

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摘要

The proposed filter assumes the noisy electrocardiography (ECG) to be modeled as a signal of deterministic nature, corrupted by additive muscle noise artefact. The muscle noise component is treated to be stationary with known second-order characteristics. Since noise-free ECG is shown to possess a narrow-band structure in discrete cosine transform (DCT) domain and the second-order statistical properties of the additive noise component is preserved due to the orthogonality property of DCT, noise abatement is easily accomplished via subspace decomposition in the transform domain. The subspace decomposition is performed using singular value decomposition (SVD), The order of the transform domain SVD filter required to achieve the desired degree of noise abatement is compared to that of a suboptimal Wiener filter using DCT. Since the Wiener filter assumes both the signal and noise structures to be statistical, with a priori known second-order characteristics, it yields a biased estimate of the ECG beat as compared to the SVD filter for a given value of mean-square error (mse). The filter order required for performing the subspace smoothing is shown to exceed a certain minimal value for which the mse profile of the SVD filter follows the minimum-mean-square error (mmse) performance warranted by the suboptimal Wiener filter. The effective filter order required for reproducing clinically significant features in the noisy ECG is then set by an upper bound derived by means of a finite precision linear perturbation model. A significant advantage resulting from the application of the proposed SVD filter lies in its ability to perform noise suppression independently on a single lead ECG record with only a limited number of data samples.
机译:提出的滤波器假设将有噪声的心电图(ECG)建模为确定性信号,并被附加的肌肉噪声伪像破坏。肌肉噪声成分被认为具有已知的二阶特征是静止的。由于无噪声ECG在离散余弦变换(DCT)域中显示为具有窄带结构,并且由于DCT的正交性而保留了加性噪声分量的二阶统计特性,因此可通过以下方式轻松实现噪声消除变换域中的子空间分解。使用奇异值分解(SVD)进行子空间分解。将实现期望的噪声消除程度所需的变换域SVD滤波器的阶次与使用DCT的次优Wiener滤波器的阶次进行比较。由于维纳滤波器假定信号和噪声结构都是统计的,具有先验已知的二阶特性,因此对于给定的均方误差值(mse )。示出执行子空间平滑所需的滤波器阶数超过某个最小值,为此,SVD滤波器的mse轮廓遵循次优Wiener滤波器所保证的最小均方误差(mmse)性能。然后,通过有限精度线性摄动模型得出的上限来设置在嘈杂的ECG中重现临床显着特征所需的有效滤波器阶数。应用建议的SVD滤波器所带来的显着优势在于,它能够仅对有限数量的数据样本在单个前导ECG记录上独立执行噪声抑制。

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