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Mixtures of Gamma Priors for Non-negative Matrix Factorization Based Speech Separation

机译:基于非负矩阵分解的语音分离的伽玛先验混合

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This paper deals with audio source separation using supervised non-negative matrix factorization (NMF). We propose a prior model based on mixtures of Gamma distributions for each sound class, which hyperparameters are trained given a training corpus. This formulation allows adapting the spectral basis vectors of the sound sources during actual operation, when the exact characteristics of the sources are not known in advance. Simulations were conducted using a random mixture of two speakers. Even without adaptation the mixture model outperformed the basic NMF, and adaptation furher improved slightly the separation quality.
机译:本文使用监督非负矩阵分解(NMF)来处理音频源分离。我们针对每种声音类别,基于Gamma分布的混合提出了一个先验模型,给定训练语料对超参数进行了训练。当事先不知道声源的确切特性时,该公式允许在实际操作期间调整声源的频谱基矢量。使用两个扬声器的随机混合物进行模拟。即使不进行调整,混合模型也比基本的NMF表现更好,并且进一步的调整会稍微改善分离质量。

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