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Maximum likelihood autoregressive model parameter estimation with noise corrupted independent snapshots

机译:噪声损坏独立快照的最大似然自动评级模型参数估计

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摘要

Maximum likelihood autoregressive (AR) model parameter estimation problem with independent snapshots observed under white Gaussian measurement noise is studied. In addition to the AR model parameters, the measurement noise variance is also included among the unknowns of the problem to develop a general solution covering several special cases such as the case of known noise variance, noise-free snapshots, the single snapshot operation etc. The presented solution is based on the expectation-maximization method which is formulated by assigning the noise-free snapshots as the missing data. An approximate version of the suggested method, at a significantly reduced computational load with virtually no loss of performance, has also been developed. Numerical results indicate that the suggested solution brings major performance improvements in terms of estimation accuracy and does not suffer from unstable AR filter estimates unlike some other methods in the literature. The suggested method can be especially useful for small-dimensional multiple-snapshot noisy AR modeling applications such as the clutter power spectrum modeling application in radar signal processing.
机译:研究了在白色高斯测量噪声下观察到的独立快照的最大似然自回归(AR)模型参数估计问题。除了AR模型参数之外,还包括开发涵盖几种特殊情况的通用解决方案的问题的测量噪声方差,例如已知噪声方差,无噪声快照,单快度快照操作等的若干特殊情况。所提出的解决方案基于期望最大化方法,该方法通过将无噪声快照分配为缺失数据来配制。还开发了一个近似版本的建议方法,在显着降低的计算负载,几乎不会损失性能,也已经开发出来。数值结果表明,建议的解决方案在估计精度方面提高了主要的性能改进,并且不存在于文献中的其他一些其他方法的不稳定AR过滤器估计。建议的方法对于诸如雷达信号处理中的杂波功率谱建模应用,特别适用于小维度多快照噪声AR建模应用。

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