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A one-dimensional search method with stable 1-norm solution for linear prediction

机译:具有稳定1范数解的一维搜索方法,用于线性预测

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摘要

In this paper a simple iterative algorithm that is guaranteed to produce a stable all-pole filter when minimizing the 1-norm of the linear prediction error signal is proposed. The approach works for both the autocorrelation and covariance frameworks, involves only a one-dimensional search at each step, and obviates the need for linear programming based methods. Based on simulation studies, it was observed that the performance of the algorithm is nearly optimal, i.e., very close to the estimates obtained using interior point methods. Moreover, this method also has the ability to constrain the bandwidth of any peak. The proposed method has been applied for vocal tract estimation and, using spectral distortion as the metric, results are presented using synthetic as well as natural speech. (C) 2017 Acoustical Society of America
机译:在本文中,一种简单的迭代算法,保证在最小化提出的线性预测误差信号的1常数时产生稳定的全极滤波器。 该方法适用于自相关和协方差框架,仅涉及每个步骤的一维搜索,并避免了基于线性编程的方法。 基于仿真研究,观察到算法的性能几乎是最佳的,即非常接近使用内点方法获得的估计。 此外,该方法还具有限制任何峰的带宽的能力。 所提出的方法已被应用于声道估计,并且使用频谱失真作为指标,使用合成和自然语音呈现结果。 (c)2017年声学社会

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