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首页> 外文期刊>Australasian physical & engineering sciences in medicine >Anaesthetic EEG signal denoise using improved nonlocal mean methods
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Anaesthetic EEG signal denoise using improved nonlocal mean methods

机译:使用改进的非局部均值方法的麻醉性脑电信号降噪

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摘要

This paper applies the nonlocal mean (NLM) method to denoise the simulated and real electroencepha-lograph signals. As a patch-based method, the NLM method calculates the weighted sum of a patch. The weight of each point is determined by the similarity between the points of the own patch and its neighbor. Based on the weighted sum, the noise is filtered out. In this study, the NLM denoising method is applied to signals with additive Gaussian white noise, spiking noise and specific frequency noise and the results are compared with that of the popular sym8 and db 16 Wavelet threshold denoising (WTD) methods. The outcomes show that the NLM on average achieves 2.70 dB increase in improved signal to noise ratio (SNRimp) and 0.37 % drop in improved percentage distortion ratio compared with WTD. The moving adaptive shape patches-NLM performs better than the original NLM when the signals change dramatically. In addition, the performance of combined NLMWTD denoising method is also better than original WTD method (0.50-4.89 dB higher in SNRimp), especially, when the signal quality is poor.
机译:本文应用非局部均值(NLM)方法对模拟和真实的脑电图信号进行降噪。作为基于补丁的方法,NLM方法计算补丁的加权和。每个点的权重由自己补丁与其相邻补丁的点之间的相似性确定。基于加权和,可以滤除噪声。在这项研究中,将NLM去噪方法应用于具有加性高斯白噪声,尖峰噪声和特定频率噪声的信号,并将结果与​​流行的sym8和db 16小波阈值去噪(WTD)方法进行比较。结果表明,与WTD相比,NLM平均可提高2.70 dB的信噪比(SNRimp),降低0.37%的失真率。当信号急剧变化时,运动自适应形状补丁NLM的性能要优于原始NLM。此外,组合的NLMWTD去噪方法的性能也比原始的WTD方法更好(SNRimp高0.50-4.89 dB),尤其是在信号质量较差的情况下。

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