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Blind Spectral-GMM Estimation for Under deter mined Instantaneous Audio Source Separation

机译:不确定瞬时音频源分离的盲频谱-GMM估计

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The underdetermined blind audio source separation problem is often addressed in the time-frequency domain by assuming that each time-frequency point is an independently distributed random variable. Other approaches which are not blind assume a more structured model, like the Spectral Gaussian Mixture Models (Spectral-GMMs), thus exploiting statistical diversity of audio sources in the separation process. However, in this last approach, Spectral-GMMs are supposed to be learned from some training signals. In this paper, we propose a new approach for learning Spectral-GMMs of the sources without the need of using training signals. The proposed blind method significantly outperforms state-of-the-art approaches on stereophonic instantaneous music mixtures.
机译:不确定的盲音频源分离问题通常在时频域中通过假设每个时频点是一个独立分布的随机变量来解决。其他并非盲目的方法采用了更结构化的模型,例如频谱高斯混合模型(Spectral-GMM),因此在分离过程中利用了音频源的统计多样性。但是,在最后一种方法中,应该从某些训练信号中学习频谱GMM。在本文中,我们提出了一种无需使用训练信号即可学习源频谱GMM的新方法。所提出的盲法明显优于立体声瞬时音乐混合的最新方法。

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