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Blind Speech Separation Employing Laplacian Normal Mixture Distribution Model

机译:拉普拉斯正态混合分布模型的盲语音分离

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Careful choice of nonlinear function is necessary to obtain good performance from algorithms for blind source separation. In this paper, we propose a fast approach to perform blind speech separation based on natural gradient. The main ingredient is the use of a novel nonlinear function, which is accordant to the true PDF of speech signals. By appropriately choosing the shape parameter, we approximate a Laplacian normal mixture distribution to the source''s PDF in time domain, then a new form of nonlinear function more suitable for speech separation is derived using the given distribution model. Simulation results indicate the good convergence and steady-state performance of our proposed method.
机译:要从盲源分离算法中获得良好的性能,必须谨慎选择非线性函数。在本文中,我们提出了一种基于自然梯度执行盲语音分离的快速方法。主要成分是使用了一种新颖的非线性函数,该函数与语音信号的真实PDF一致。通过适当地选择形状参数,我们近似拉普拉斯态混合分布到源'的PDF的时域,然后非线性函数更适合于语音分离的一种新形式的使用给定分布模型导出。仿真结果表明,该方法具有良好的收敛性和稳态性能。

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