鲁棒信号检测与估计:一种几何方法

R. Barton, H. Poor
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引用次数: 0

摘要

在本文中,我们考虑了问题的统计结构存在不确定性的情况下的f2估计和信号检测问题。这些问题属于鲁棒信号处理的更广泛的背景,近年来已经有几位研究者进行了研究。本文提出并分析了再现核希尔伯特空间(RKHS)理论背景下的鲁棒估计和检测问题。经典检测/估计与RKHS理论之间的关系众所周知,但据我们所知,该理论尚未应用于鲁棒估计和检测的研究。通过使用RKHS方法,我们能够推广线性滤波器的概念,并给出该滤波器在极小极大意义上具有鲁棒性的充分必要条件,用于一般l2估计问题,其中观察过程X = X(t)的协方差结构和要估计的变量X和Z的交叉协方差结构都存在不确定性。我们已经证明,在温和的正则性条件下,可以通过求解相关的最小化问题找到鲁棒滤波器。并给出了鲁棒滤波器存在的充分条件。特别是,我们表明,如果假设观察过程的协方差结构是已知的,那么唯一的不确定性是在X和Z的交叉协方差结构中,那么一个鲁棒滤波器将始终存在,并且可以通过解决一个简单的最小化问题来找到。这种分析的一个有点令人惊讶的结果是,一般鲁棒f2估计问题的这些结果与第二作者先前给出的关于鲁棒匹配过滤的结果之间惊人的相似。在RKHS上下文中重新表述鲁棒匹配滤波问题使我们能够推广这些先前的结果,并清楚地揭示了鲁棒估计和匹配滤波问题之间的潜在相似性。事实上,这两个问题的极大极小解的结构看起来几乎是相同的。作为RKHS方法鲁棒性的最后一个应用,我们考虑了存在高斯噪声的高斯信号的鲁棒二次检测问题,其中挠度比用作性能准则。我们表明,这个问题也可以在RKHS上下文中表述,并且,当噪声协方差的结构被假设为已知时,完全类似于鲁棒匹配滤波问题。如果噪声的协方差结构也是未知的,则鲁棒二次检测问题可以嵌入到一个更大的问题中,这同样类似于鲁棒匹配滤波问题。当应用于二次检测问题时,针对这个较大问题的鲁棒滤波器将具有理想的鲁棒性。本文提出的方法,除了提供上述问题的统一观点外,还提供了一个公式,可用于研究RKHS理论适用的其他问题的鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Robust Signal Detection and Estimation: A Geometric Approach
In this paper, we consider the problems of f2 estimation and signal detection in the presence of uncertainty regarding the statistical structure of the problem. These problems, which fall within the more general context of robust signal processing, have been studied in recent years by several investigators. In this paper, we formulate and analyze the robust estimation and detection problems in the context of reproducing kernel Hilbert space (RKHS) theory. The relationship between classical detection/estimation and RKHS theory is well-known, but as far as we know, the theory has not been applied previously to the study of robust estimation and detection. By using an RKHS approach, we are able to generalize the notion of a linear filter and to give necessary and sufficient conditions for such a filter to be robust in the minimax sense for the general L2-estimation problem in which there is uncertainty in both the covariance structure of the observed process X = X(t) and the cross-covariance structure of X and Z, the variable to be estimated. We have shown that, under mild regularity conditions, the robust filter can be found by solving a related minimization problem. We also give conditions sufficient to insure that the robust filter exists. In particular, we show that, if the Covariance structure of the observed process is assumed to be known, so that the only uncertainty is in the crosscovariance structure of X and Z, then a robust filter will always exist and can be found by solving a straightforward minimization problem. A somewhat surprising consequence of this analysis is the striking similarity between these results for the general robust f2-estimation problem and results given previously by the second author relating to robust matched filtering. Reformulating the robust matched filtering problem in an RKHS context allows us to generalize these previous results and clearly reveals the underlying similarity between the robust estimation and matched filtering problems. In fact, the structures of minimax solutions to the two problems are seen to be virtually identical. As a final application of the RKHS approach to robustness, we consider the problem of robust quadratic detection of a Gaussian signal in the presence of Gaussian noise, in which the deflection ration is used as a performance criterion. We show that this problem also can be formulated in an RKHS context, and, when the structure of the noise covariance is assumed to be known, is exactly analogous to the robust matched filtering problem. If the covariance structure of the noise is also unknown, the robust quadratic detection problem can be embedded in a larger problem, which is again analogous to the robust matched filtering problem. A robust filter for this larger problem will then possess desirable robustness properties when applied to the quadratic detection problem. The approach presented in this paper, in addition to providing a unified view of the problems discussed above, provides a formulation which may be applied to investigate robustness properties in other problems to which RKHS theory applies.
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