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Meridian Filtering for Robust Signal Processing

机译:经络滤波可实现可靠的信号处理

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A broad range of statistical processes is characterized by the generalized Gaussian statistics. For instance, the Gaussian and Laplacian probability density functions are special cases of generalized Gaussian statistics. Moreover, the linear and median filtering structures are statistically related to the maximum likelihood estimates of location under Gaussian and Laplacian statistics, respectively. In this paper, we investigate the well-established statistical relationship between Gaussian and Cauchy distributions, showing that the random variable formed as the ratio of two independent Gaussian distributed random variables is Cauchy distributed. We also note that the Cauchy distribution is a member of the generalized Cauchy distribution family. Recently proposed myriad filtering is based on the maximum likelihood estimate of location under Cauchy statistics. An analogous relationship is formed here for the Laplacian statistics, as the ratio of Laplacian statistics yields the distribution referred here to as the Meridian. Interestingly, the Meridian distribution is also a member of the generalized Cauchy family. The maximum likelihood estimate under the obtained statistics is analyzed. Motivated by the maximum likelihood estimate under meridian statistics, meridian filtering is proposed. The analysis presented here indicates that the proposed filtering structure exhibits characteristics more robust than that of median and myriad filtering structures. The statistical and deterministic properties essential to signal pro-cessing applications of the meridian filter are given. The meridian filtering structure is extended to admit real-valued weights utilizing the sign coupling approach. Finally, simulations are performed to evaluate and compare the proposed meridian filtering structure performance to those of linear, median, and myriad filtering.
机译:广义的高斯统计量表征了广泛的统计过程。例如,高斯和拉普拉斯概率密度函数是广义高斯统计的特例。此外,线性和中值滤波结构在统计上分别与高斯和拉普拉斯统计下的位置的最大似然估计有关。在本文中,我们研究了公认的高斯分布与柯西分布之间的统计关系,表明以两个独立的高斯分布随机变量之比形成的随机变量是柯西分布。我们还注意到,柯西分布是广义柯西分布族的成员。最近提出的无数滤波是基于柯西统计下位置的最大似然估计。拉普拉斯统计在这里形成了类似的关系,因为拉普拉斯统计的比率产生了此处称为子午线的分布。有趣的是,子午线分布也是广义柯西家族的一员。分析获得的统计数据下的最大似然估计。根据子午线统计下的最大似然估计,提出了子午线滤波方法。此处进行的分析表明,提出的滤波结构比中位数和无数的滤波结构显示出更强大的特性。给出了子午线滤波器的信号处理应用必不可少的统计和确定性。子午线滤波结构被扩展为使用符号耦合方法接受实值权重。最后,进行仿真以评估和比较提议的子午线过滤结构性能与线性,中值和无数过滤的性能。

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