自适应相干条件作用

R. Bonneau
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引用次数: 0

摘要

最近,人们对设计系统来自适应地管理信号和噪声环境以及优化检测性能的资源策略非常感兴趣。这些方法对于噪声环境可能发生变化,从而影响检测和估计所需资源的情况尤其重要。管理这些权衡的一种常用方法是使用最小-最大估计策略来处理最坏情况下的信号和噪声分布,并相应地设置资源和检测阈值。然而,在许多这些方法中,设置资源数量以达到最坏情况概率的最小-最大边界的难度很难衡量。我们提出了一种将资源分配视为稀疏逼近问题的方法。这个想法是衡量当前的概率分布,并适应在使用最小数量的必要资源的情况下保持在最坏的情况范围内。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adaptive coherence conditioning
Recently there has been much interest in design of systems to manage signal and noise environments adaptively with resource strategies that are optimized for detection performance. These approaches are particularly important for scenarios where the noise environment can change and therefore affect the amount of resources necessary for detection and estimation. A common way to manage these tradeoffs uses a min-max estimation strategy to handle the worst case signal and noise distribution and set resources and detection thresholds accordingly. In many of these approaches however, the difficulty of setting the number of resources to achieve the min-max bound for the worst case probability are difficult to gauge. We propose an approach that considers resource allocation as a problem in sparse approximation. The idea is to measure the current probability distribution and adapt to stay within the worst case bound while using the minimum number of resources necessary.
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