Matched and adaptive subspace detectors when interference dominates noise

L. Scharf, M. McCloud
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引用次数: 6

Abstract

In much of modern radar, sonar and wireless communication it seems more reasonable to model measurements as signal-plus-subspace interference-plus-broadband noise, than as signal-plus-colored noise. This observation leads naturally to a variety of detection and estimation problems in the linear statistical model. To solve these problems, one requires oblique pseudo-inverses, oblique projections, and zero-forcing orthogonal projections. The problem is that these operators depend on knowledge of signal and interference subspaces, and this information is often not at hand. More typically the signal subspace is known, but the interference subspace is unknown. In this paper we prove a theorem which allows these operators to be estimated directly from experimental data, without knowledge of the interference subspace. As a by-product, the theorem shows how signal subspace covariance and power may be estimated. The results of this paper form the foundation for the rapid adaptation of receivers which are then used for detection and estimation. They may be applied to detection and estimation in radar and sonar and to data decoding in multiuser communication receivers.
当干扰大于噪声时匹配和自适应子空间检测器
在许多现代雷达、声纳和无线通信中,用信号+子空间干扰+宽带噪声来模拟测量,似乎比用信号+彩色噪声来模拟测量更合理。这种观察自然会导致线性统计模型中的各种检测和估计问题。为了解决这些问题,需要斜拟逆、斜投影和零强迫正交投影。问题是,这些运算符依赖于信号和干扰子空间的知识,而这些信息通常并不在手边。更典型的是,信号子空间是已知的,但干扰子空间是未知的。在本文中,我们证明了一个定理,该定理允许在不知道干涉子空间的情况下,直接从实验数据估计这些算子。作为副产品,该定理显示了如何估计信号子空间的协方差和功率。本文的研究结果为接收机的快速自适应奠定了基础,然后将其用于检测和估计。它们可用于雷达和声纳的探测和估计以及多用户通信接收机的数据解码。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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