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首页> 外文期刊>Audio, Speech, and Language Processing, IEEE Transactions on >Under-Determined Reverberant Audio Source Separation Using a Full-Rank Spatial Covariance Model
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Under-Determined Reverberant Audio Source Separation Using a Full-Rank Spatial Covariance Model

机译:使用全等级空间协方差模型的欠定混响音频源分离

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摘要

This paper addresses the modeling of reverberant recording environments in the context of under-determined convolutive blind source separation. We model the contribution of each source to all mixture channels in the time–frequency domain as a zero-mean Gaussian random variable whose covariance encodes the spatial characteristics of the source. We then consider four specific covariance models, including a full-rank unconstrained model. We derive a family of iterative expectation–maximization (EM) algorithms to estimate the parameters of each model and propose suitable procedures adapted from the state-of-the-art to initialize the parameters and to align the order of the estimated sources across all frequency bins. Experimental results over reverberant synthetic mixtures and live recordings of speech data show the effectiveness of the proposed approach.
机译:本文在不确定卷积盲源分离的背景下解决了混响录音环境的建模问题。我们将时频域中每个源对所有混合通道的贡献建模为零均值高斯随机变量,其协方差编码源的空间特征。然后,我们考虑四个特定的协方差模型,包括一个完整的无约束模型。我们派生出一系列的迭代期望最大化(EM)算法,以估计每个模型的参数,并根据最新技术提出合适的程序,以初始化参数并在所有频率上调整估计源的顺序垃圾箱。在混响合成混合物和语音数据实时记录上的实验结果表明了该方法的有效性。

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