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Robust Estimation in Signal Processing: A Tutorial-Style Treatment of Fundamental Concepts

机译:信号处理中的稳健估计:基本概念的教程式处理

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摘要

The word robust has been used in many contexts in signal processing. Our treatment concerns statistical robustness, which deals with deviations from the distributional assumptions. Many problems encountered in engineering practice rely on the Gaussian distribution of the data, which in many situations is well justified. This enables a simple derivation of optimal estimators. Nominal optimality, however, is useless if the estimator was derived under distributional assumptions on the noise and the signal that do not hold in practice. Even slight deviations from the assumed distribution may cause the estimator's performance to drastically degrade or to completely break down. The signal processing practitioner should, therefore, ask whether the performance of the derived estimator is acceptable in situations where the distributional assumptions do not hold. Isn't it robustness that is of a major concern for engineering practice? Many areas of engineering today show that the distribution of the measurements is far from Gaussian as it contains outliers, which cause the distribution to be heavy tailed. Under such scenarios, we address single and multichannel estimation problems as well as linear univariate regression for independently and identically distributed (i.i.d.) data. A rather extensive treatment of the important and challenging case of dependent data for the signal processing practitioner is also included. For these problems, a comparative analysis of the most important robust methods is carried out by evaluating their performance theoretically, using simulations as well as real-world data.
机译:“健壮”一词已在信号处理的许多情况下使用。我们的处理涉及统计稳健性,该稳健性处理与分布假设的偏差。在工程实践中遇到的许多问题都依赖于数据的高斯分布,这在很多情况下都是合理的。这使得最佳估计器的简单推导成为可能。但是,如果估算器是根据噪声和信号的分布假设推导出的,则最优估计是没有用的。甚至与假定分布的微小偏差都可能导致估算器的性能急剧下降或完全崩溃。因此,信号处理从业人员应询问在分布假设不成立的情况下,导出估算器的性能是否可以接受。鲁棒性不是工程实践中要重点关注的吗?当今的许多工程领域表明,测量值的分布远非高斯分布,因为它包含离群值,这导致分布拖尾。在这种情况下,我们解决了单通道和多通道估计问题以及独立和均匀分布(i.i.d.)数据的线性单变量回归问题。还包括对信号处理从业人员重要和具有挑战性的依存数据案例的相当广泛的处理。对于这些问题,通过使用仿真以及实际数据从理论上评估它们的性能,对最重要的鲁棒方法进行了比较分析。

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