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Bounded support Gaussian mixture modeling of speech spectra

机译:语音频谱的有界支持高斯混合建模

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Lately, Gaussian mixture (GM) models have found new applications in speech processing, and particularly in speech coding. This paper provides a review of GM based quantization and prediction. The main contribution is a discussion on GM model optimization. Two previously presented algorithms of EM-type are analyzed in some detail, and models are estimated and evaluated experimentally using theoretical measures as well as GM based speech spectrum coding and prediction. It has been argued that since many sources have a bounded support, this should be utilized in both the choice of model, and the optimization algorithm. By low-dimensional modeling examples, illustrating the behavior of the two algorithms graphically, and by full-scale evaluation of GM based systems, the advantages of a bounded support approach are quantified. For all evaluation techniques in the study, model accuracy is improved when the bounded support approach is adopted. The gains are typically largest for models with diagonal covariance matrices.
机译:最近,高斯混合(GM)模型在语音处理,尤其是语音编码中发现了新的应用。本文概述了基于GM的量化和预测。主要贡献是关于GM模型优化的讨论。详细分析了两种先前提出的EM型算法,并使用理论方法以及基于GM的语音频谱编码和预测对模型进行了估计和评估。有人认为,由于许多来源都有有限的支持,因此在模型选择和优化算法中都应利用这一支持。通过低维建模示例,以图形方式说明了两种算法的行为,并且通过对基于GM的系统进行全面评估,量化了有限支持方法的优势。对于研究中的所有评估技术,采用有限支持方法都会提高模型的准确性。对于具有对角协方差矩阵的模型,增益通常最大。

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