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Discrete-wavelet-transform-based noise reduction and R wave detection for ECG signals

机译:基于离散小波变换的ECG信号降噪和R波检测

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There are two main research topics about ECG signal proposed. One is the noise reduction, and the other is R peaks detection. Both of the two algorithms are based on discrete wavelet transform (DWT). DWT is efficient for analyzing nonstationary signals like ECG signal. The Symlets wavelets (sym5) and soft-thresholding are chosen as the wavelet function and thresholding method to do noise correction at the first denoising stage. The second stage is R wave detection. The MIT-BIH arrhythmia database is used to verify proposed algorithm. We reconstruct the decomposition level 3 to 5. Choosing the adaptive threshold and window size are the key points to reduce error rate. Applying two thresholds leads to better performance, compared to applying one threshold. At the last stage, we do noise correction again.With the information of R wave position, a novel method is proposed to eliminate the electromyogram (EMG) signal. The algorithm for R wave detection has a sensitivity of 99.70% and a positive predictivity of 99.65%. The error rate is 0.65% under all kinds of situation (0.37% if ignoring 3 worst cases). For noise correction, the SNR improvement is achieved at least 10dB at SNR 5dB, and most of the improvement SNR are better than other methods at least 1dB at different SNR. To apply presented algorithms for the portable ECG device, all R peaks can be detected no matter when people walk, run or move at the speed below 9km/hr.
机译:提出了关于ECG信号的两个主要研究主题。一种是降噪,另一种是R峰值检测。两种算法都基于离散小波变换(DWT)。 DWT对于分析诸如ECG信号之类的非平稳信号非常有效。选择Symlets小波(sym5)和软阈值作为小波函数和阈值化方法,以在第一降噪阶段进行噪声校正。第二阶段是R波检测。 MIT-BIH心律失常数据库用于验证所提出的算法。我们将分解级别从3重构为5。选择自适应阈值和窗口大小是降低错误率的关键。与应用一个阈值相比,应用两个阈值可获得更好的性能。在最后阶段,我们再次进行噪声校正。利用R波位置的信息,提出了一种消除肌电信号的新方法。 R波检测算法的灵敏度为99.70%,阳性预测率为99.65%。在各种情况下,错误率均为0.65%(如果忽略3个最坏的情况,则错误率为0.37%)。对于噪声校正,在5dB的信噪比下,SNR至少提高了10dB,并且大多数改进的SNR在不同SNR时至少比其他方法要好1dB。为了将提出的算法应用于便携式ECG设备,无论人们何时以低于9 km / hr的速度行走,奔跑或移动,都可以检测到所有R峰。

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