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首页> 外文期刊>IEEE Transactions on Signal Processing >Maximum likelihood estimation of signals in autoregressive noise
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Maximum likelihood estimation of signals in autoregressive noise

机译:自回归噪声中信号的最大似然估计

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摘要

Time series modeling as the sum of a deterministic signal and an autoregressive (AR) process is studied. Maximum likelihood estimation of the signal amplitudes and AR parameters is seen to result in a nonlinear estimation problem. However, it is shown that for a given class of signals, the use of a parameter transformation can reduce the problem to a linear least squares one. For unknown signal parameters, in addition to the signal amplitudes, the maximization can be reduced to one over the additional signal parameters. The general class of signals for which such parameter transformations are applicable, thereby reducing estimator complexity drastically, is derived. This class includes sinusoids as well as polynomials and polynomial-times-exponential signals. The ideas are based on the theory of invariant subspaces for linear operators. The results form a powerful modeling tool in signal plus noise problems and therefore find application in a large variety of statistical signal processing problems. The authors briefly discuss some applications such as spectral analysis, broadband/transient detection using line array data, and fundamental frequency estimation for periodic signals.
机译:研究了作为确定性信号和自回归(AR)过程之和的时间序列建模。可以看到信号幅度和AR参数的最大似然估计会导致非线性估计问题。然而,表明对于给定的信号类别,使用参数变换可以将问题减少到线性最小二乘。对于未知的信号参数,除了信号幅度外,还可以将最大值减小到其他信号参数之上。推导了适用于此类参数变换,从而大幅降低估计器复杂度的一般信号类别。此类包括正弦波以及多项式和多项式时间指数信号。这些思想基于线性算子不变子空间的理论。结果形成了信号加噪声问题的强大建模工具,因此可应用于各种统计信号处理问题。作者简要讨论了一些应用,例如频谱分析,使用线阵列数据的宽带/瞬态检测以及周期性信号的基本频率估计。

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