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ECG De-noising: A comparison between EEMD-BLMS and DWT-NN algorithms

机译:ECG去噪:EEMD-BLMS和DWT-NN算法之间的比较

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Electrocardiogram (ECG) is a widely used non-invasive method to study the rhythmic activity of the heart and thereby to detect the abnormalities. However, these signals are often obscured by artifacts from various sources and minimization of these artifacts are of paramount important. This paper proposes two adaptive techniques, namely the EEMD-BLMS (Ensemble Empirical Mode Decomposition in conjunction with the Block Least Mean Square algorithm) and DWT-NN (Discrete Wavelet Transform followed by Neural Network) methods in minimizing the artifacts from recorded ECG signals, and compares their performance. These methods were first compared on two types of simulated noise corrupted ECG signals: Type-I (desired ECG+noise frequencies outside the ECG frequency band) and Type-II (ECG+noise frequencies both inside and outside the ECG frequency band). Subsequently, they were tested on real ECG recordings. Results clearly show that both the methods works equally well when used on Type-I signals. However, on Type-II signals the DWT-NN performed better. In the case of real ECG data, though both methods performed similar, the DWT-NN method was a slightly better in terms of minimizing the high frequency artifacts.
机译:心电图(ECG)是一种广泛使用的非侵入性方法,用于研究心脏的节律活动,从而检测异常情况。然而,这些信号经常被来自各种来源的伪影所遮盖,并且使这些伪影的最小化至关重要。本文提出了两种自适应技术,分别是EEMD-BLMS(集成经验模态分解和块最小均方算法)和DWT-NN(离散小波变换,然后是神经网络)方法,以最大程度地减少记录的ECG信号中的伪像,并比较他们的表现。首先在两种模拟的噪声破坏型ECG信号上比较了这些方法:I型(ECG频带外的期望ECG +噪声频率)和II型(ECG频带内和外部的ECG +噪声频率)。随后,他们在真实的心电图记录上进行了测试。结果清楚地表明,在I型信号上使用时,两种方法均能很好地工作。但是,在II型信号上,DWT-NN的性能更好。对于真实的ECG数据,尽管两种方法的执行效果相似,但DWT-NN方法在最大程度地减少高频伪影方面略胜一筹。

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