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Asymptotic statistical analysis of the high-order ambiguity function for parameter estimation of polynomial-phase signals

机译:多项式相位信号参数估计的高阶模糊函数的渐近统计分析

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摘要

The high-order ambiguity function (HAF) is a nonlinear operator designed to detect, estimate, and classify complex signals whose phase is a polynomial function of time. The HAF algorithm, introduced by Peleg and Porat (1991), estimates the phase parameters of polynomial-phase signals measured in noise. The purpose of this correspondence is to analyze the asymptotic accuracy of the HAF algorithm in the case of additive white Gaussian noise. It is shown that the asymptotic variances of the estimates are close to the Cramer-Rao bound (CRB) for high SNR. However, the ratio of the asymptotic variance and the CRB has a polynomial growth in the noise variance.
机译:高阶模糊函数(HAF)是一种非线性算子,设计用于检测,估计和分类相位为时间的多项式函数的复杂信号。由Peleg和Porat(1991)提出的HAF算法估计在噪声中测量的多项式相位信号的相位参数。该对应关系的目的是分析加性高斯白噪声情况下HAF算法的渐近精度。结果表明,对于高SNR,估计的渐近方差接近于Cramer-Rao界(CRB)。但是,渐近方差和CRB的比率在噪声方差中具有多项式增长。

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