利用核主成分对心电信号进行去噪

M. Gualsaquí, E. Vizcaíno, Marco J. Flores-Calero, E. Carrera
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引用次数: 5

摘要

心脏电活动是在体表测量的;这种测量被称为心电图(ECG)。心电信号通常伴随着不同类型的噪声,这可能导致诊断心脏病的困难和不精确的计算过程。在本文中,我们提出了核主成分分析(KPCA)方法,通常用于图像去噪,以最大限度地减少心电信号中的噪声。目的是提出一种高性能的心电信号去噪方法。我们还包括离散小波变换、主成分分析和KPCA方法之间的去噪基准。采用Physionet数据库,采用均方误差(Mean Squared Error, MSE)度量来实现精度。考虑到信噪比为5dB的信号,大多数情况下使用KPCA方法获得较低的MSE值。
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ECG signal denoising through kernel principal components
Heart electrical activity is measured on the body surface; this measure is known as electrocardiogram (ECG). The ECG signals are commonly accompanied by different types of noise, that can lead to a difficult and imprecise computational process to diagnose heart diseases. In this paper, we propose the Kernel Principal Component Analysis (KPCA) method, usually used in image denoising, for minimizing the noise presented in ECG signals. The aim is to present a high-performance ECG signal denoising process. We also include a denoising benchmark among Discrete Wavelet Transform, Principal Component Analysis, and KPCA methods. Physionet database was used and the accuracy was realized with the Mean Squared Error (MSE) metric. The lower MSE values were obtained in the majority of cases with the KPCA method, considering signals with SNR of 5dB.
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