Speech spectrum modeling applied to spectrum coding and prediction

J. Lindblom, J. Samuelsson
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引用次数: 1

Abstract

In this work, the speech spectrum source is modeled. The spectrum is represented by the cepstral coefficients resulting from linear prediction analysis of speech. The models are Gaussian mixture densities, estimated iteratively using two expectation maximization type algorithms. The contribution is an investigation of the algorithms using theoretical measures well as practical applications. The applications are spectrum coding and prediction. Some low-dimensional modeling examples, illustrating the behavior of the two algorithms graphically are given. One of the algorithms has the bounded support issue of the source incorporated in its update equations, resulting in improved modeling accuracy.
语音频谱建模在频谱编码和预测中的应用
在这项工作中,对语音频谱源进行建模。频谱由语音线性预测分析得到的倒谱系数表示。模型是高斯混合密度,使用两种期望最大化型算法迭代估计。贡献是使用理论措施和实际应用的算法的调查。应用于频谱编码和预测。给出了一些低维建模实例,以图形方式说明了这两种算法的行为。其中一种算法在更新方程中考虑了源的有界支持问题,从而提高了建模精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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