A cepstral domain algorithm for formant frequency estimation from noise-corrupted speech

S. Fattah, W. Zhu, M. Ahmad
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引用次数: 1

Abstract

A new scheme for the estimation of formant frequencies from noise-corrupted speech signals is presented in this paper. In order to overcome the effect of noise, first, instead of conventional autocorrelation function (ACF), a once-repeated ACF of the observed data is employed. A ramp cosine cepstrum model of the ORACF of speech signal is developed, followed by a model-fitting based least-square optimization to extract the formants. For the purpose of implementation, the discrete cosine transform (DCT) is used which offers computational advantages for real signals and solves the phase unwrapping problem. Synthetic and natural vowels as well as some naturally spoken sentences in noisy environments are tested. The experimental results demonstrate a better performance obtained by the proposed scheme in comparison to some of the existing methods at low levels of signal-to-noise ratio.
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一种从噪声干扰语音中估计形成峰频率的倒频谱算法
本文提出了一种从噪声干扰语音信号中估计形成峰频率的新方法。为了克服噪声的影响,首先,用观测数据的一次重复自相关函数代替传统的自相关函数(ACF)。首先建立了语音信号ORACF的斜坡余弦倒谱模型,然后采用基于模型拟合的最小二乘优化方法提取共振峰。为了实现目的,使用离散余弦变换(DCT),它提供了对真实信号的计算优势,并解决了相位展开问题。测试了合成元音和自然元音以及一些嘈杂环境下的自然口语句子。实验结果表明,在低信噪比的情况下,与现有的一些方法相比,该方法具有更好的性能。
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