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Dirichlet Latent Variable Model: A Dynamic Model Based on Dirichlet Prior for Audio Processing

机译:Dirichlet潜在变量模型:基于Dirichlet的音频处理的动态模型

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摘要

We propose a dynamic latent variable model for learning latent bases from time varying, non-negative data. We take a probabilistic approach to modeling the temporal dependence in data by introducing a dynamic Dirichlet prior-a Dirichlet distribution with dynamic parameters. This new distribution allows us to assure non-negativity and avoid intractability when sequential updates are performed (otherwise encountered in using Dirichlet prior). We refer to the proposed model as the Dirichlet latent variable model (DLVM). We develop an expectation maximization algorithm for the proposed model, and also derive a maximum a posteriori estimate of the parameters. Furthermore, we connect the proposed DLVM to two popular latent basis learning methods- probabilistic latent component analysis (PLCA) and non-negative matrix factorization (NMF). We show that 1) PLCA is a special case of our DLVM, and 2) DLVM can be interpreted as a dynamic version of NMF. The usefulness of DLVM is demonstrated for three audio processing applications-speaker source separation, denoising, and bandwidth expansion. To this end, a new algorithm for source separation is also proposed. Through extensive experiments on benchmark databases, we show that the proposed model outperforms several relevant existing methods in all three applications.
机译:我们提出了一种动态潜在的变量模型,用于从时变非负数据的学习潜在基础。我们采用概率方法来通过用动态参数引入动态Dirichlet先前的Dirichlet分布来建模数据中的时间依赖性。这种新的分发允许我们确保非消极性并避免执行顺序更新时的难扰性(否则在使用Dirichlet中遇到)。我们将所提出的模型称为Dirichlet潜在变量模型(DLVM)。我们开发了所提出的模型的期望最大化算法,并且还导出了参数的最大后验估计。此外,我们将所提出的DLVM连接到两个流行的潜在基础学习方法 - 概率潜在分析(PLCA)和非负矩阵分解(NMF)。我们展示了1)PLCA是我们DLVM的特殊情况,2)DLVM可以被解释为NMF的动态版本。 DLVM的有用性用于三个音频处理应用 - 扬声器源分离,去噪和带宽扩展。为此,还提出了一种新的源分离算法。通过对基准数据库的广泛实验,我们表明,所提出的模型在所有三种应用中占有几种相关现有方法。

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