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A new fast-converging method for blind source separation of speech signals in acoustic environments

机译:声学环境下语音信号盲源分离的新快速收敛方法

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We propose a new frequency domain approach to blind source separation (BSS) of audio signals mixed in a reverberant environment. It is first shown that joint diagonalization of the cross power spectral density matrices of the signals at the output of the mixing system is sufficient to identify the mixing system at each frequency bin up to a scale and permutation ambiguity. The frequency domain joint diagonalization is performed using a new and quickly converging algorithm which uses an alternating least-squares (ALS) optimization method. An efficient dyadic algorithm to resolve the frequency dependent permutation ambiguities is presented. The effect of the unknown scaling ambiguities is partially resolved using a novel initialization procedure for the ALS algorithm. The performance of the proposed algorithm is demonstrated by experiments conducted in real reverberant rooms.
机译:我们提出了一种新的频域方法,用于混响环境中混合的音频信号的盲源分离(BSS)。首先显示,在混合系统的输出处,信号的交叉功率谱密度矩阵的联合对角化足以识别每个频点处的混合系统,直至达到比例和置换模糊度为止。频域联合对角线化是使用一种新的快速收敛算法执行的,该算法使用交替最小二乘(ALS)优化方法。提出了一种有效的二进位算法来解决频率相关的排列歧义。使用用于ALS算法的新颖初始化过程,可以部分解决未知比例缩放歧义的影响。通过在真实混响室中进行的实验证明了所提出算法的性能。

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