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Wavelet-Based MPNLMS Adaptive Algorithm for Network Echo Cancellation

机译:基于小波的MPNLMS自适应网络回声消除算法

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The μ-law proportionate normalized least mean square (MPNLMS) algorithm has been proposed recently to solve the slow convergence problem of the proportionate normalized least mean square (PNLMS) algorithm after its initial fast converging period. But for the color input, it may become slow in the case of the big eigenvalue spread of the input signal's autocorrelation matrix. In this paper, we use the wavelet transform to whiten the input signal. Due to the good time-frequency localization property of the wavelet transform, a sparse impulse response in the time domain is also sparse in the wavelet domain. By applying the MPNLMS technique in the wavelet domain, fast convergence for the color input is observed. Furthermore, we show that some nonsparse impulse responses may become sparse in the wavelet domain. This motivates the usage of the wavelet-based MPNLMS algorithm. Advantages of this approach are documented.
机译:为了解决比例归一化最小均方(PNLMS)算法在初始快速收敛期后的慢收敛问题,最近提出了μ律比例归一化最小均方(MPNLMS)算法。但是对于彩色输入,在输入信号的自相关矩阵的特征值扩展较大的情况下,它可能会变慢。在本文中,我们使用小波变换来白化输入信号。由于小波变换具有良好的时频定位特性,因此时域中的稀疏脉冲响应在小波域中也是稀疏的。通过在小波域中应用MPNLMS技术,可以观察到颜色输入的快速收敛。此外,我们表明,一些非稀疏脉冲响应可能在小波域中变得稀疏。这激发了基于小波的MPNLMS算法的使用。该方法的优点已得到记录。

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