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Conditional Expected Likelihood Technique for Compound Gaussian and Gaussian Distributed Noise Mixtures

机译:复合高斯和高斯分布噪声混合的条件期望似然技术

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Expected likelihood (EL) technique for quality assessment of parameter estimates of signals embedded in Gaussian noise is extended in this paper over the case where useful signals are immersed in a mixture of compound Gaussian and Gaussian-distributed noises. The main problem here is that analytical expressions for distributions of such mixtures do not exist in most cases. Moreover, in some cases like K-distributed noise only, where closed-form expressions for the data distribution are available, the traditional Cramér-Rao bound does not exist. This makes the EL technique even more important for parameter estimation performance assessment. In this paper, for the so-called conditional model, we introduce test statistics whose distribution for the true (actual) parameters does not depend on these parameters and specifics of texture distribution, which makes them applicable for EL applications. We illustrate the utility of this EL technique by studying and predicting the performance breakdown of some direction of arrival estimators in a mixture of K-distributed and Gaussian noise.
机译:在将有用信号浸入混合高斯和高斯分布的混合噪声的情况下,本文扩展了用于估计嵌入高斯噪声的信号参数估计质量的期望似然(EL)技术。这里的主要问题是在大多数情况下不存在这种混合物分布的解析表达式。此外,在某些情况下,例如仅K分布的噪声(可用于数据分布的闭式表达式)的情况下,不存在传统的Cramér-Rao界线。这使得EL技术对于参数估计性能评估更加重要。在本文中,对于所谓的条件模型,我们介绍了测试统计数据,其真实(实际)参数的分布不依赖于这些参数和纹理分布的特定性,这使其可用于EL应用。我们通过研究和预测在K分布噪声和高斯噪声混合情况下某些到达方向估计量的性能分解来说明此EL技术的实用性。

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