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Maximum likelihood and maximum a posteriori direction-of-arrival estimation in the presence of sirp noise

机译:在存在sirp噪声的情况下最大似然和最大后验到达方向估计

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The maximum likelihood (ML) and maximum a posteriori (MAP) estimation techniques are widely used to address the direction-of-arrival (DOA) estimation problems, an important topic in sensor array processing. Conventionally the ML estimators in the DOA estimation context assume the sensor noise to follow a Gaussian distribution. In real-life application, however, this assumption is sometimes not valid, and it is often more accurate to model the noise as a non-Gaussian process. In this paper we derive an iterative ML as well as an iterative MAP estimation algorithm for the DOA estimation problem under the spherically invariant random process noise assumption, one of the most popular non-Gaussian models, especially in the radar context. Numerical simulation results are provided to assess our proposed algorithms and to show their advantage in terms of performance over the conventional ML algorithm.
机译:最大似然(ML)和最大后验(MAP)估计技术被广泛用于解决到达方向(DOA)估计问题,这是传感器阵列处理中的重要课题。传统上,DOA估计上下文中的ML估计器假定传感器噪声遵循高斯分布。但是,在实际应用中,此假设有时无效,并且将噪声建模为非高斯过程通常更准确。在本文中,我们针对球面不变随机过程噪声假设(尤其是在雷达环境下最流行的非高斯模型之一)下的DOA估计问题,推导了迭代ML以及迭代MAP估计算法。提供了数值模拟结果,以评估我们提出的算法,并显示其在性能方面优于常规ML算法的优势。

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