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Frequency-Domain Blind Separation of Convolutive Speech Mixtures with Energy Correlation-Based Permutation Correction

机译:基于能量相关的置换校正的卷积语音混合物的频域盲分离

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Blind separation of convolutive speech mixtures in frequency domain has obvious advantages in term of convergence and computation, but suffers from permutation ambiguity. Motivated by the fact that speech signals have strong correlations across frequency, the paper presents an energy correlation method for solving permutation ambiguity after separation of instantaneous speech mixtures at each frequency bin. Extensive experiments with synthetic and recorded speech signals are carried out to compare the energy correlation method to amplitude correlation method, three different complex-valued independent component analysis (ICA) algorithms are compared as well. The results show that the proposed method achieves better performance than the amplitude correlation method, and the complex ICA algorithm based on negentropy maximization yields the best separation.
机译:卷积语音混合在频域上的盲分离在收敛和计算方面具有明显的优势,但存在置换歧义的问题。基于语音信号在整个频率上具有很强的相关性这一事实,本文提出了一种能量相关方法,用于解决在每个频率仓处分离即时语音混合后的置换歧义的问题。进行了大量的合成语音和录制语音信号实验,以比较能量相关方法和幅度相关方法,还比较了三种不同的复数值独立分量分析(ICA)算法。结果表明,与幅度相关法相比,该方法具有更好的性能,基于负熵最大化的复杂ICA算法实现了最佳的分离效果。

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