Low-artifact source separation using probabilistic latent component analysis

N. Mohammadiha, P. Smaragdis, A. Leijon
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引用次数: 7

Abstract

We propose a method based on the probabilistic latent component analysis (PLCA) in which we use exponential distributions as priors to decrease the activity level of a given basis vector. A straightforward application of this method is when we try to extract a desired source from a mixture with low artifacts. For this purpose, we propose a maximum a posteriori (MAP) approach to identify the common basis vectors between two sources. A low-artifact estimate can now be obtained by using a constraint such that the common basis vectors in the interfering signal's dictionary tend to remain inactive. We discuss applications of this method in source separation with similar-gender speakers and in enhancing a speech signal that is contaminated with babble noise. Our simulations show that the proposed method not only reduces the artifacts but also increases the overall quality of the estimated signal.
使用概率潜在成分分析的低伪影源分离
我们提出了一种基于概率潜在成分分析(PLCA)的方法,其中我们使用指数分布作为先验来降低给定基向量的活动水平。这种方法的一个直接应用是当我们试图从具有低伪影的混合物中提取所需的源时。为此,我们提出了一种最大后验(MAP)方法来识别两个源之间的公共基向量。现在可以通过使用约束来获得低伪影估计,使得干扰信号字典中的公共基向量趋于保持非活动状态。我们讨论了该方法在具有相似性别说话者的源分离中的应用,以及在被呀呀学噪声污染的语音信号增强中的应用。仿真结果表明,该方法不仅减少了伪影,而且提高了估计信号的整体质量。
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