Sparse representation and epoch estimation of voiced speech

J. Gunther, T. Moon
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Abstract

Whereas most approaches to linear speech prediction fail to account for the quasi-periodic glottal flow, this paper incorporates a model for the glottal flow derivative (GFD) directly into the linear prediction problem. A linear model for the prediction error is obtained by constructing a dictionary of time-shifted GFD pulses. The pulses are constructed by applying glottal inverse filtering (GIF) to recorded speech. Minimizing the difference between the linear prediction residual and a sparse combination of the pulses in the dictionary leads to joint estimation of the linear predictor as well as a sparse representation for the prediction error that reveals the instants of vocal tract excitation (epochs). The method is applied to voiced segments extracted from the CMU Arctic dataset which also includes electro-glottograms. Results show that the proposed method is effective in estimating the parameters of interest and that GIF-based pulses more accurately model GFD pulses occurring in real speech than pulses computed using the mathematical models.
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浊音语音的稀疏表示与epoch估计
鉴于大多数线性语音预测方法无法考虑准周期性声门流动,本文将声门流动导数(GFD)模型直接纳入线性预测问题。通过构造时移GFD脉冲字典,得到了预测误差的线性模型。这些脉冲是通过对录制的语音进行声门反滤波(GIF)来构造的。最小化线性预测残差和字典中脉冲的稀疏组合之间的差异导致线性预测器的联合估计以及预测误差的稀疏表示,该预测误差揭示了声道兴奋的瞬间(epoch)。将该方法应用于从CMU北极数据集中提取的语音片段,该数据集还包括电声门图。结果表明,该方法可以有效地估计目标参数,并且基于gif的脉冲比使用数学模型计算的脉冲更准确地模拟真实语音中发生的GFD脉冲。
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