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A method to solve the permutation problem in blind source deconvolution for audio signals based on phase linearity estimation

机译:一种解决基于相位线性估计的音频信号盲源去卷积释放问题的方法

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One approach to solve the blind source deconvolution (BSD) is to transform the observations into the frequency domain and apply common blind source separation (BSS) in each frequency bin. This approach is called frequency-domain blind source separation (FD-BSS). Generally FD-BSS has a problem with indeterminacy of the permutation of the separated signals in each frequency bin. Furthermore, even if the permutation problem is solved, we cannot avoid the degradation of quality of the estimated signals because of noise or statistical error. In this paper, we describe a new approach for BSS that utilizes the phase linearity not only to solve the permutation problem but also to tune each value of the elements of the separating matrices. To effectively detect multi- and ambiguous linearity, we propose the use of the Hough transform. To improve the signal-to-noise ratio (SNR), we propose not to persist in the independence, but to adopt the constraints of phase linearity. Simulation results for audio sources show the improvement of SNR with the proposed method.
机译:解决盲​​源去卷积(BSD)的一种方法是将观察转换为频域并在每个频率箱中应用共同的盲源分离(BSS)。该方法称为频域盲源分离(FD-BS)。通常,FD-BSS具有每个频率箱中分离信号的置换不确定的问题。此外,即使解决了置换问题,我们无法避免由于噪声或统计误差而避免估计信号的质量的劣化。在本文中,我们描述了一种新的BSS方法,其利用相位线性不仅可以解决置换问题,而且还可以调整分离矩阵的元素的每个值。为了有效地检测多重和模棱两可的线性,我们提出了使用霍夫变换。为了提高信噪比(SNR),我们建议不要持续独立,而是采用相线性的约束。音频源的仿真结果显示了与所提出的方法的改进。

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