Third-order SVD based denoising of multi-channel ECG

Thomas Schanze
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Abstract

Abstract Denoising of time series is still a challenge, especially when the spectral components of wanted signal and noise overlap. However, denoising is an inverse problem and its solution is of often ambiguous. Standard methods often use predefined functions, e.g., sine waves, to decompose a time series into wanted and unwanted parts. More recent methods calculate the basis for the representation of a time series by the time series itself. Such a method is singular spectrum analysis (SSA). SSA uses Hankel matrix embedding of a time series and singular value decomposition to determine wanted and unwanted components, e.g., noise. The wanted components are then used to compute the wanted part of the time series. Here we present a method that provides an extension of SSA for analyzing and - in particular - denoising multi-channel time series, i.e., multi-channel SSA-based denoising of multi-channel time series (MSSAD). The performance of the new method, which is based on Hankel embedding and tensor decomposition, is demonstrated on a 12-lead ECG.
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基于三阶奇异值分解的多通道心电信号去噪
时间序列的去噪仍然是一个挑战,特别是当所需信号和噪声的频谱成分重叠时。然而,去噪是一个反向问题,其解决方案往往是模糊的。标准方法通常使用预定义的函数,例如正弦波,将时间序列分解为需要和不需要的部分。较新的方法是通过时间序列本身来计算时间序列表示的基。这种方法就是奇异谱分析(SSA)。SSA使用时间序列的汉克尔矩阵嵌入和奇异值分解来确定需要和不需要的成分,例如噪声。然后使用所需分量来计算时间序列的所需部分。本文提出了一种扩展SSA的方法来分析多通道时间序列,特别是去噪多通道时间序列,即基于多通道SSA的多通道时间序列去噪(MSSAD)。基于Hankel嵌入和张量分解的新方法在12导联心电图上的性能得到了验证。
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来源期刊
Current Directions in Biomedical Engineering
Current Directions in Biomedical Engineering Engineering-Biomedical Engineering
CiteScore
0.90
自引率
0.00%
发文量
239
审稿时长
14 weeks
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