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Nonparametric Cepstrum Estimation via Optimal Risk Smoothing

机译:通过最佳风险平滑进行非参数倒谱估计

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摘要

This paper proposes a new cepstrum estimation procedure that is capable of producing smoother and improved cepstrum estimates without the use of any parametric modeling. This procedure consists of two main steps: In the first step, it applies a so-called grid transformation to the empirical cepstral coefficients, while in the second step it nonparametrically smooths the transformed coefficients with local linear regression. The Stein's unbiased risk estimation (SURE) approach is adopted to select both the extent of the grid transformation and the amount of smoothing. It is shown that the use of this SURE selection method for the current problem is asymptotically optimal in a well-defined sense. Lastly, the good practical performance of the new cepstrum estimation procedure is demonstrated via numerical experiments.
机译:本文提出了一种新的倒谱估计程序,该程序能够在不使用任何参数模型的情况下产生更平滑和改进的倒谱估计。此过程包括两个主要步骤:第一步,将经验网格倒频谱系数应用所谓的网格变换,而第二步,通过局部线性回归非参数地平滑变换后的系数。采用斯坦因的无偏风险估计(SURE)方法来选择网格变换的程度和平滑量。结果表明,在明确定义的意义上,对于当前问题使用此SURE选择方法是渐近最佳的。最后,通过数值实验证明了新的倒谱估计程序的良好实用性能。

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