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On Adaptive LASSO-based Sparse Time-Varying Complex AR Speech Analysis

机译:基于自适应套索的稀疏时变复合体AR语音分析

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Linear Prediction (LP) is commonly used in speech processing. In speech coding, the LP is used to remove the formant elements from the speech signal, and the residual is quantized by using the Algebraic code vector after removing pitch elements. In speech synthesis, the LP is also used to generate the glottal or residual excitation for the WaveNet. We have proposed a Time-Varying Complex AR (TV-CAR) speech analysis for an analytic signal to cope with the drawbacks of the LP, such as MMSE, Extended Least Square (ELS), that are the l2-norm optimization methods. We have already evaluated the performance on F0 estimation and robust automatic speech recognition. Recently, we have proposed l2-norm regularized LP-based TV-CAR analysis in the time-domain and the frequency-domain. The regularized TV-CAR method can estimate more accurate formant frequencies, and we have shown that the resulting LP residual makes it possible to estimate a more precise F0. On the other hand, sparse estimation based on l1-norm optimization has been focused on image processing that can extract meaningful information from colossal information. LASSO algorithm is an l1-norm regularized sparse algorithm. In this paper, adaptive LASSO-based TV-CAR analysis is proposed, and the performance is evaluated using the F0 estimation.
机译:线性预测(LP)通常用于语音处理。在语音编码中,LP用于从语音信号中移除格式元件,并且通过使用在移除间距元件之后使用代数代码向量来量化残差。在语音合成中,LP还用于产生波老节的印刷或剩余激励。我们已经提出了一个时变的复杂AR(TV-CAR)语音分析,用于对LP的缺点应对LP的缺点,例如MMSE,延长最小二乘(ELS),即L 2 -norm优化方法。我们已经评估了F的表现 0 估计和强大的自动语音识别。最近,我们提出了l 2 - 在时域和频域中的基于正常的基于LP的电视车分析。正则电视汽车方法可以估计更准确的中锋频率,并且我们已经表明所得到的LP残差使得可以估计更精确的F. 0 。另一方面,基于L的稀疏估计 1 -norm优化已经专注于可以从巨大信息中提取有意义的信息的图像处理。套索算法是l 1 -norm正规稀疏算法。在本文中,提出了适应性的洛索基电视 - 汽车分析,使用F评估性能 0 估计。

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