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首页> 外文期刊>International Journal of Computational Intelligence and Applications >QRS COMPLEX DETECTION USING OPTIMAL DISCRETE WAVELET
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QRS COMPLEX DETECTION USING OPTIMAL DISCRETE WAVELET

机译:使用最优离散小波的QRS复杂检测

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Wavelet transform has emerged as a powerful tool for time frequency analysis of complex nonstationary signals such as the electrocardiogram (ECG) signal. In this paper, the design of good wavelets for cardiac signal is discussed from the perspective of orthogonal filter banks. Optimum wavelet for ECG signal is designed and evaluated based on perfect reconstruction conditions and QRS complex detection. The performance is evaluated by using the ECG records from the MIT-BIH arrhythmia database. In the first step, the filter coefficients (optimum wavelet) is designed by reparametrization of filter coefficients. In the second step, ECG signal is decomposed to three levels using the optimum wavelet and reconstructed. From the reconstructed signal, the range of error signal is calculated and it is compared with the performance of other suitable wavelets already available in the literature. The optimum wavelet gives the maximum error range as 10{sup}(-14)-10{sup}(-11) which is better than that of other wavelets existing in the literature. In the third step, the baseline wandering is removed from the ECG signal for better detection of QRS complex. The optimum wavelet detects all R peaks of all records. That is using optimum wavelet 100% sensitivity and positive predictions are achieved. Based on the performance, it is confirmed that optimum wavelet is more suitable for ECG signal.
机译:小波变换已成为对复杂的非平稳信号(如心电图(ECG)信号)进行时频分析的强大工具。本文从正交滤波器组的角度讨论了心脏信号良好小波的设计。基于完美的重建条件和QRS复杂检测,设计和评估了心电信号的最佳小波。通过使用MIT-BIH心律失常数据库中的ECG记录评估性能。第一步,通过对滤波器系数进行重新参数化来设计滤波器系数(最佳小波)。在第二步中,使用最佳小波将ECG信号分解为三个级别并进行重构。根据重构信号,可以计算出误差信号的范围,并将其与文献中已有的其他合适小波的性能进行比较。最优小波给出的最大误差范围为10 {sup}(-14)-10 {sup}(-11),优于文献中存在的其他小波。第三步,从ECG信号中消除基线漂移,以更好地检测QRS复合波。最优小波检测所有记录的所有R峰。也就是说,使用最佳小波100%灵敏度,可以实现肯定的预测。根据性能,可以确定最佳小波更适合ECG信号。

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