采用维纳滤波和自适应最小均方算法对心电信号进行去噪

Bharati Sharma, R. Suji
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引用次数: 14

摘要

与心脏病相关的健康问题需要心电图(ECG)。但有时由于电极信号的不匹配而产生噪声,因此提出了不同的滤波方法来去除这些干扰,如噪声伪影、基线漂移和电源线干扰。各种滤波方法可用于去除心电图信号中的噪声伪影。采用维纳滤波和自适应最小均方(LMS)算法等滤波方法对心电信号进行降噪。主要目标是实现不同的滤波器,并根据各自滤波器的性能参数(如信噪比(SNR)和功率谱密度(PSD))进行比较。对人工噪声的心电信号进行了测试,该信号取自标准Physio.net数据库,采样频率为50 Hz。为了更好的利用,对测试结果进行了信噪比和PSD等性能参数的比较。
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ECG denoising using weiner filter and adaptive least mean square algorithm
Electrocardiogram (ECG) is needed for health issues related to heart disease. But sometimes due to mismatches in electrodes signal becomes noisy hence, removal of these interference like noise artifacts, baseline wandering and power line interference different filter approaches has been proposed. Various filter approaches are available for removal of noise artifacts from Electrocardiogram (ECG) signal. Filtering methods like Wiener filter and Adaptive Least Mean Square (LMS) algorithm are utilized for denoising noise interference from Electrocardiogram (ECG) signal. The main goal is to implement different filters and to compare based on performance parameters of the respective filter like Signal to Noise Ratio (SNR) and power spectral density (PSD). Testing was implemented on artificially noisy Electrocardiogram (ECG) signal which has taken from standard Physio.net database sampled at 50 Hz. For better utilization testing results are compared in term of their performance parameter such as SNR and PSD.
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