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Laplacian Mixture Modeling for Overcomplete Mixing Matrix in Wavelet Packet Domain by Adaptive EM-type Algorithm and Comparisons

机译:通过自适应EM型算法和比较,Laplacian混合模拟小波包域中的混合矩阵

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Speech process has benefited a great deal from the wavelet transforms. Wavelet packets decompose signals in to broader components using linear spectral bisecting. In this paper, mixtures of speech signals are decomposed using wavelet packets, the phase difference between the two mixtures are investigated in wavelet domain. In our method Laplacian Mixture Model (LMM) is defined. An Expectation Maximization (EM) algorithm is used for training of the model and calculation of model parameters which is the mixture matrix. And then we compare estimation of mixing matrix by LMM-EM with different wavelet. Therefore individual speech components of speech mixtures are separated.
机译:语音过程使小波变换的大量有利。小波包使用线性光谱分组将信号分解为更宽的组件。在本文中,语音信号的混合物使用小波分组分解,在小波域中研究了两个混合物之间的相位差。在我们的方法中,定义了Laplacian混合物模型(LMM)。期望最大化(EM)算法用于训练模型和计算的模型参数,其是混合矩阵。然后我们将LMM-EM与不同小波的混合矩阵的估计进行比较。因此,语音混合物的个体语音组分被分开。

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