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Estimation and detection in non-Gaussian noise using higher order statistics

机译:使用高阶统计量估计和检测非高斯噪声

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One of the primary applications of higher order statistics has been for detection and estimation of nonGaussian signals in Gaussian noise of unknown covariance. This is motivated by the fact that higher order cumulants of Gaussian processes vanish. We study the opposite problem, namely, detection and estimation in nonGaussian noise. We estimate cumulants of nonGaussian processes in the presence of unknown deterministic and/or Gaussian signals, which allows either parametric or nonparametric estimation of the covariance of the nonGaussian noise. Our approach is to augment existing second-order detection methods using cumulants. We propose solutions for detection of deterministic signals based on matched filters and the generalized likelihood ratio test which incorporate cumulants, where the resulting solutions are valid under either detection hypotheses. This allows for single record detection and obviates the need for noise-only training records. The problem of estimating signal strength in the presence of nonGaussian noise of unknown covariance is also considered, and a cumulant-based solution is proposed which uses a single data record. Examples are used throughout to illustrate our proposed methods.
机译:高阶统计量的主要应用之一是用于未知协方差的高斯噪声中的非高斯信号的检测和估计。这是因为高斯过程的高阶累积量消失了。我们研究了相反的问题,即非高斯噪声的检测和估计。我们在存在未知的确定性和/或高斯信号的情况下估计非高斯过程的累积量,这允许对非高斯噪声的协方差进行参数或非参数估计。我们的方法是使用累积量来增强现有的二阶检测方法。我们提出了基于匹配滤波器和结合了累积量的广义似然比检验的确定性信号检测解决方案,其中所得结果在两种检测假设下均有效。这样就可以进行单条记录检测,并且不再需要纯噪声训练记录。还考虑了在存在未知协方差的非高斯噪声的情况下估计信号强度的问题,并提出了使用单个数据记录的基于累积量的解决方案。全文使用示例来说明我们提出的方法。

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