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Wavelet Thresholding using Higher-Order Statistics for Signal Denoising

机译:使用高阶统计量进行信号去噪的小波阈值

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The paper demonstrats a higher-order statistics (HOS) based method of wavelet thresholding for signal denoising. We calculats the triple correlation coefficients of wavelet-signal correlation for identification of wavelet coefficients uncorrupted by noise. Since the higher than second-order moments of the Gaussian probability function are zero, the Gaussian noise can be eliminated completely. The method is also valid for unknown spectral density noise. The results of computer simulation show the availability and the effectiveness of the proposed wavelet thresholding method.
机译:本文演示了一种基于高阶统计量(HOS)的小波阈值化方法,用于信号去噪。我们计算小波信号相关性的三重相关系数,以识别不受噪声破坏的小波系数。由于高斯概率函数的高于二阶矩为零,因此可以完全消除高斯噪声。该方法对于未知的频谱密度噪声也有效。计算机仿真结果表明了所提出的小波阈值化方法的有效性和有效性。

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