真实语音信号循环线性预测建模的频谱估计性能

A. E. Ertan, T. Barnwell
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引用次数: 1

摘要

在此之前,我们引入了一种无窗线性预测方法,即圆形线性预测(CLP)建模,用于语音频谱的基音同步分析,并利用合成语音信号展示了其频谱建模特性。本文讨论了如何将CLP方法及其多周期泛化应用于实际语音信号。我们还介绍了CLP方法在真实语音中的频谱估计性能。与合成语音的情况一样,这些实验证明了CLP方法在起始点具有优越的频谱估计精度,并且在平稳区域具有与自相关方法相似的估计性能。我们还观察到CLP方法的多周期泛化对于部分浊音区域是必需的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Spectral estimation performance of circular linear prediction modeling for real-speech signals
Previously, we introduced a windowless linear-prediction method known as circular linear prediction (CLP) modeling for pitch-synchronous analysis of the speech spectrum and presented its spectral modeling properties using synthetic speech signals. In this paper, we discuss how the CLP method and its multicycle generalization can be used with real speech signals. We also present the CLP methods' spectral estimation performance using real speech. As was the case for synthetic speech, these experiments proved that the CLP method has superior spectral estimation accuracy at onsets and has similar estimation performance to the autocorrelation method in stationary regions. We also observed that the multicycle generalization of the CLP method is required for partially-voiced regions.
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