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Fast fundamental frequency estimation: Making a statistically efficient estimator computationally efficient

机译:快速基本频率估算:使统计上有效的估算器在计算上有效

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摘要

Modelling signals as being periodic is common in many applications. Such periodic signals can be represented by a weighted sum of sinusoids with frequencies being an integer multiple of the fundamental frequency. Due to its widespread use, numerous methods have been proposed to estimate the fundamental frequency, and the maximum likelihood (ML) estimator is the most accurate estimator in statistical terms. When the noise is assumed to be white and Gaussian, the ML estimator is identical to the non-linear least squares (NLS) estimator. Despite being optimal in a statistical sense, the NLS estimator has a high computational complexity. In this paper, we propose an algorithm for lowering this complexity significantly by showing that the NLS estimator can be computed efficiently by solving two Toeplitz-plus-Hankel systems of equations and by exploiting the recursive-in-order matrix structures of these systems. Specifically, the proposed algorithm reduces the time complexity to the same order as that of the popular harmonic summation method which is an approximate NLS estimator. The performance of the proposed algorithm is assessed via Monte Carlo and timing studies. These show that the proposed algorithm speeds up the evaluation of the NLS estimator by a factor of 50-100 for typical scenarios.
机译:在许多应用中,通常将信号建模为周期性的。这样的周期信号可以用正弦波的加权和表示,其频率是基频的整数倍。由于其广泛使用,已经提出了许多方法来估计基本频率,并且最大似然(ML)估计器是统计术语中最准确的估计器。当假定噪声为白噪声和高斯噪声时,ML估计器与非线性最小二乘(NLS)估计器相同。尽管在统计意义上是最优的,但是NLS估计器具有很高的计算复杂度。在本文中,我们提出了一种通过显着降低NLS估计量的算法,该算法表明可以通过求解两个Toeplitz + Hankel方程组并利用这些系统的递归矩阵结构来有效地计算NLS估计量。具体而言,所提出的算法将时间复杂度降低到与作为近似NLS估计器的流行谐波求和方法相同的数量级。通过蒙特卡洛和时序研究评估了所提出算法的性能。这些表明,对于典型场景,该算法将NLS估计器的评估速度提高了50-100倍。

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