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Independent vector analysis with multivariate student's t-distribution source prior for speech separation

机译:语音分离之前具有多变量学生t分布源的独立矢量分析

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摘要

The independent vector analysis algorithm can theoretically avoid the permutation problem in frequency domain blind source separation by using a multivariate source prior to retain the dependency between different frequency bins of each source. A super-Gaussian multivariate Student's t-distribution is adopted as the source prior to model the spectrum of speech signals and to mitigate imprecise variance knowledge as is commonplace in non-stationary signal processing. Moreover, the new multivariate source prior can be interpreted as a joint distribution constructed by a t-copula, which can describe the nonlinear inter-frequency dependency. Experimental results using 50 speech mixtures formed from the TIMIT database confirm the advantages of the proposed algorithm.
机译:独立矢量分析算法在保留每个源的不同频点之间的相关性之前,可以通过使用多元源从理论上避免频域盲源分离中的置换问题。在建模语音信号频谱并减轻非平稳信号处理中常见的不精确方差知识之前,采用超高斯多元学生t分布作为源。此外,可以将新的多元源先验解释为由t-copula构成的联合分布,它可以描述非线性的频率间依赖性。使用TIMIT数据库中形成的50种语音混合的实验结果证实了该算法的优势。

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  • 来源
    《Electronics Letters》 |2013年第16期|1-1|共1页
  • 作者单位

    School of Electronic, Electrical and System Engineering, Loughborough University, Leicestershire, LE11 3TU, United Kingdom|c|;

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  • 正文语种 eng
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