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Removal of Electrocardiogram Interference from Diaphragmatic Electromyogram Signals using Sliding Singular Spectrum Analysis

机译:使用滑动奇异谱分析从隔膜电晶图中去除心电图干扰

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Over recent years, Singular Spectrum Analysis (SSA) has gained popularity as an effective means to denoise biologically sourced single channel signals, especially Electromyogram (EMG) and Electrocardiogram (ECG) signals amongst others. There are numerous applications whereby the signal acquisition process results in the mixing of both types of signals along with body motion artifacts and the inevitable electromagnetic interference. Both ECG and EMG signals are very useful to physicians, though preferably in isolation, though they rarely present themselves in this manner. Simple filtering techniques are ineffective in their separation as both signal spectra overlap in the frequency domain. In this paper, we propose a technique based on a sliding SSA algorithm which proves to be more successful in separating real mixed EMG and ECG signals than traditional block based approaches on single channel data. SSA is a non-parametric technique that decomposes the original time series into a number of additive components, each of which can then be readily identified based on statistical analysis as belonging to EMG or ECG signals. This approach could be applied equally to other signal types using different statistical methods as required, moreover, this technique is relatively straight-forward to implement and does not require any reference signals or training.
机译:近年来,奇异频谱分析(SSA)已经获得了普及,作为用于在其他人之间进行生物学源单通道信号,尤其是电灰度(EMG)和心电图信号(ECG)信号的有效手段。存在许多应用,其中信号采集过程导致两种类型的信号以及体内运动伪像和不可避免的电磁干扰混合。 ECG和EMG信号都对医生非常有用,但优选地是隔离,尽管它们很少以这种方式呈现自己。随着频域中的信号光谱重叠,简单的过滤技术在它们的分离中是无效的。在本文中,我们提出了一种基于滑动SSA算法的技术,该技术在将真实混合的EMG和ECG信号分离而不是在单通道数据上的传统块的方法中,以更成功。 SSA是一种非参数化技术,其将原始时间序列分解成多个添加剂组件,然后可以基于属于EMG或ECG信号的统计分析容易地识别。这种方法可以同样地应用于使用不同统计方法的其他信号类型,而且,该技术相对直接实现,并且不需要任何参考信号或训练。

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