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Underdetermined convolutive blind source separation using a novel mixing matrix estimation and MMSE-based source estimation

机译:使用新型混合矩阵估计和基于MMSE的源估计,卷积盲源分离不足

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This paper considers underdetermined blind source separation of super-Gaussian signals that are convolutively mixed. The separation is performed in three stages. In the first stage, the mixing matrix in each frequency bin is estimated by the proposed single source detection and clustering (SSDC) algorithm. In the second stage, by assuming complex-valued super-Gaussian distribution, the sources are estimated by minimizing a mean-square-error (MSE) criterion. Special consideration is given to reduce computational load without compromising accuracy. In the last stage, the estimated sources in each frequency bin are aligned for recovery. In our simulations, the proposed algorithm outperformed conventional algorithm in terms of the mixing-error-ratio and the signal-to-distortion ratio.
机译:本文考虑了卷积混合的超高斯信号的不确定盲源分离。分离过程分为三个阶段。在第一阶段,通过建议的单源检测和聚类(SSDC)算法估算每个频点中的混合矩阵。在第二阶段,通过假设复值超高斯分布,通过最小化均方误差(MSE)准则来估计源。特别考虑了在不影响精度的情况下减少计算量的方法。在最后阶段,将每个频点中的估计源进行对齐以进行恢复。在我们的仿真中,该算法在混合误差比和信噪比方面优于传统算法。

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