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首页> 外文期刊>IEEE communications letters >Expectation Maximization-Based Target Localization From Range Measurements in Multiplicative Noise Environments
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Expectation Maximization-Based Target Localization From Range Measurements in Multiplicative Noise Environments

机译:期望基于最大化的目标本地化从乘法噪声环境中的范围测量

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In this letter, target localization from range measurements corrupted by both additive and multiplicative noises is studied. First, the maximum likelihood estimator (MLE) is proposed. Then, the novel expectation maximization (EM) algorithm with guaranteed convergence is proposed to find the MLE. It is shown that the expectation step can be calculated componentwisely, and the maximization step can be solved via the Majorization-Minimization (MM) approach. The algorithm is termed as R-EM-MM. To provide a benchmark performance of R-EM-MM, the theoretical performance of unbiased estimator, i.e., Cramer Rao bound (CRB) is derived. In addition, the enhanced R-EM-MM (E-R-EM-MM) is proposed to jointly learn the noise statistics and perform target localization. Finally, numerical simulations are conducted to demonstrate the near optimal performance, compared with CRB and other state-of-art method.
机译:在这封信中,研究了来自附加和乘法噪声损坏的范围测量的目标本地化。 首先,提出了最大似然估计器(MLE)。 然后,提出了具有保证融合的新预期最大化(EM)算法来找到MLE。 结果表明,期望步骤可以组成,并且可以通过大多数 - 最小化(MM)方法来解决最大化步骤。 该算法称为R-EM-MM。 为了提供R-EM-MM的基准性能,推导出无偏估计器的理论性能,即克莱默·RAO结合(CRB)。 另外,提出了增强的R-EM-MM(E-R-EM-MM)以共同学习噪声统计并执行目标本地化。 最后,与CRB和其他最先进的方法相比,进行了数值模拟以展示近乎最佳性能。

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