从匹配的过滤器到鞅

T. Kailath
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引用次数: 2

摘要

只提供摘要形式。在加性白噪声中最大化已知信号的输出信噪比的著名匹配滤波器解决方案是由几位研究人员在四十年代中期独立发现的。从那时起,它就成为各种场景中最优探测器的关键组成部分。它的第一次出现可能是在D.O. North 1943年的RCA报告中,该报告因作者利用复杂的(当时的)数学分析来获得有用的物理结果和见解而引人注目;在其他项目中,大米分配被介绍并以常规方式使用。从那时起,这个概念以一种迷人的方式发展和成长,主要是通过V.A. Kotelnikov(1947)和pm及其通过P. Price和P. e . Green的估计量-相关器思想对多路径问题的显著扩展。我们描述了将这些结果扩展到非高斯信号的努力如何以一种迷人的方式回到原始的似然比公式。在这一发展过程中,鞅理论和对随机积分定义的关注以一种自然的方式出现,后来,除其他事项外,使具有加性高斯噪声和“乘法”泊松型噪声的信号检测问题之间的密切相似的发展成为可能。随着信息理论界对这些领域的兴趣下降,这些方法开始出现在金融理论中,并很快被视为自然的工具。此外,在新的涡轮编码方案中对软决策规则的日益重视可能会重新引起人们对一般似然比公式的兴趣。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
From matched filters to martingales
Summary form only given. The famous matched filter solution for maximizing the output SNR of a known signal in additive white noise was independently discovered by several investigators in the mid-forties. Since then it has appeared as a key component of optimal detectors in a variety of scenarios. Its first appearance was perhaps in D.O. North's 1943 RCA report, which is remarkable for the facility with which the author exploits sophisticated (for the times) mathematical analysis to obtain useful physical results and insights; among other items, the Rice distribution is introduced and used in a routine way. Since then, the concept has evolved and grown in a fascinating way, which is outlined, chiefly through the early work of V.A. Kotelnikov (1947) and of P.M. Woodward, and its notable extensions to multipath problems through the estimator-correlator ideas of P. Price and P.E. Green. We describe how the effort to extend these results to non-Gaussian signals led back in a fascinating way to the original likelihood ratio formulas. Martingale theory and the need for attention to the definition of stochastic integrals arose in a natural way in the course of this development and later enabled, among other things, the development of close parallels between detection problems for signals with additive Gaussian noise and with "multiplicative" Poisson-type noise. As interest in such areas declined in the information theory community, the methods began to appear in finance theory, where they were soon also regarded as the natural tool. Moreover the growing emphasis on soft-decision rules in the new turbo coding schemes may renew interest in general likelihood ratio formulas.
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