基于模型约简的语音建模新方法

L. Mitiche, A. Adamou-Mitiche
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引用次数: 3

摘要

利用模型约简,提出了一种新的低阶语音建模方法。在该方法中,建模过程从一些经典方法获得的相对高阶(全阶)自回归AR模型开始。然后使用状态投影法在状态空间中进行AR模型的约简。模型简化产生了一个降阶自回归移动平均(ARMA)模型,有趣的是,该模型保留了原始全阶模型的关键特性,如稳定性。线谱频率(LSF)和信噪比(SNR)的行为也进行了研究。为了说明该方法的性能和有效性,对一些实际的语音片段进行了计算机仿真。
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A new approach for speech modeling based on model reduction
Using model reduction, a new approach for low-order speech modeling is presented. In this approach, the modeling process starts with a relatively high-order (full-order) autoregressive AR model obtained by some classical methods. The AR model is then reduced using the state projection method, operating in the state space. The model reduction yields a reduced-order autoregressive moving-average (ARMA) model that interestingly preserves the key properties of the original full-order model such as stability. Line spectral frequencies (LSF) and signal-to-noise ratio (SNR) behavior are also investigated. To illustrate the performance and the effectiveness of the proposed approach, some computer simulations are conducted on some practical speech segments.
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