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Wavelet-based variational Bayesian ECG denoising

机译:基于小波的变分贝叶斯心电图去噪

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Electrocardiogram is an important biomedical signal for analysing the electrical activity of the heart during its contraction and expansion. The analysis of Electrocardiogram becomes difficult if noise is augmented to the signal during acquisition. In this paper, the wavelet-based variational Bayesian estimation theory for signal denoising is used. Non-stationary signals such as Electrocardiogram can be represented as a model through their wavelet coefficients. In this method, we assume the mixture of normal matrix distribution over the noisy wavelet coefficients and the variational Bayesian Expectation Maximization algorithm is implemented on the wavelet coefficient distribution. The experimental results show that the proposed technique successfully denoised the noisy Electrocardiogram signals. Finally, the signal-to-noise ratio and mean square error were also evaluated.
机译:心电图是一种重要的生物医学信号,可用于分析心脏的收缩和扩张过程中的电活动。如果在采集过程中对信号增加了噪声,则心电图的分析将变得困难。本文采用基于小波的变分贝叶斯估计理论进行信号去噪。非平稳信号(例如心电图)可以通过其小波系数表示为模型。在这种方法中,我们假设在噪声小波系数上混合了正态矩阵分布,并且在小波系数分布上实现了变分贝叶斯期望最大化算法。实验结果表明,所提出的技术成功地去除了嘈杂的心电图信号。最后,还评估了信噪比和均方误差。

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