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Maximum likelihood DOA estimation and asymptotic Cramer-Rao bounds for additive unknown colored noise

机译:附加未知色噪声的最大似然DOA估计和渐近Cramer-Rao边界

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This paper is devoted to the maximum likelihood estimation of multiple sources in the presence of unknown noise. With the spatial noise covariance modeled as a function of certain unknown parameters, e.g., an autoregressive (AR) model, a direct and systematic way is developed to find the exact maximum likelihood (ML) estimates of all parameters associated with the direction finding problem, including the direction-of-arrival (DOA) angles /spl Theta/, the noise parameters /spl alpha/, the signal covariance /spl Phi//sub s/, and the noise power /spl sigma//sup 2/. We show that the estimates of the linear part of the parameter set /spl Phi//sub s/ and /spl sigma//sup 2/ can be separated from the nonlinear parts /spl Theta/ and /spl alpha/. Thus, the estimates of /spl Phi//sub s/ and /spl sigma//sup 2/ become explicit functions of /spl Theta/ and /spl alpha/. This results in a significant reduction in the dimensionality of the nonlinear optimization problem. Asymptotic analysis is performed on the estimates of /spl Theta/ and /spl alpha/, and compact formulas are obtained for the Cramer-Rao bounds (CRB's). Finally, a Newton-type algorithm is designed to solve the nonlinear optimization problem, and simulations show that the asymptotic CRB agrees well with the results from Monte Carlo trials, even for small numbers of snapshots.
机译:本文致力于在未知噪声存在下多个源的最大似然估计。利用根据某些未知参数(例如自回归(AR)模型)建模的空间噪声协方差,开发了一种直接且系统的方法来找到与测向问题相关的所有参数的精确最大似然(ML)估计,包括到达方向(DOA)角/ spl Theta /,噪声参数/ spl alpha /,信号协方差/ spl Phi // sub s /和噪声功率/ spl sigma // sup 2 /。我们表明,参数集/ spl Phi // sub s /和/ spl sigma // sup 2 /的线性部分的估计值可以与非线性部分/ spl Theta /和/ spl alpha /分开。因此,/ spl Phi // sub s /和/ spl sigma // sup 2 /的估计成为/ spl Theta /和/ spl alpha /的显式函数。这大大减少了非线性优化问题的维数。对/ spl Theta /和/ spl alpha /的估计值进行渐近分析,并获得Cramer-Rao边界(CRB's)的紧凑公式。最后,设计了牛顿型算法来解决非线性优化问题,仿真结果表明,即使对于少量快照,渐近CRB与Monte Carlo试验的结果也很吻合。

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