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Efficient computation of the Bayesian Cramer-Rao bound on estimating parameters of Markov models

机译:估计马尔可夫模型参数的贝叶斯Cramer-Rao界的有效计算

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摘要

This paper presents a novel method for calculating the hybrid Cramer-Rao lower bound (HCRLB) when the statistical model for the data has a Markovian nature. The method applies to both the non-linearon-Gaussian as well as linear/Gaussian model. The approach solves the required expectation over unknown random parameters by several one-dimensional integrals computed recursively, thus simplifying a computationally-intensive multi-dimensional integration. The method is applied to the problem of refractivity estimation using radar clutter from the sea surface, where the backscatter cross section is assumed to be a Markov process in range. The HCRLB is evaluated and compared to the performance of the corresponding maximum a-posteriori estimator. Simulation results indicate that the HCRLB provides a tight lower bound in this application.
机译:当数据的统计模型具有马尔可夫性质时,本文提出了一种计算混合Cramer-Rao下界(HCRLB)的新方法。该方法适用于非线性/非高斯模型以及线性/高斯模型。该方法通过递归计算的几个一维积分来解决未知随机参数的期望期望,从而简化了计算量大的多维积分。该方法适用于使用雷达杂波从海面进行折射率估计的问题,其中后向散射截面假定为范围内的马尔可夫过程。对HCRLB进行评估,并将其与相应的最大后验估计器的性能进行比较。仿真结果表明,HCLRB在此应用中提供了严格的下限。

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