论文标题
在线贝叶斯元学习用于认知跟踪雷达
Online Bayesian Meta-Learning for Cognitive Tracking Radar
论文作者
论文摘要
认知雷达的关键组成部分是能够在各种传感环境中概括或达到一致的性能,因为物理场景的各个方面可能会随着时间而变化。这给基于学习的波形选择方法带来了挑战,因为在一个场景中有效的传输策略在另一个场景中可能是高度最佳的。我们通过在跟踪实例中利用高级结构(称为元学习)来利用高级结构来策略性地偏向学习算法来解决这个问题。在这项工作中,我们开发了一种在线元学习方法,用于波形 - 敏感跟踪。该方法使用从以前的目标轨道获得的信息来加快和增强新跟踪实例中的学习。这通过利用跨跟踪场景的固有相似性来归因于常见的物理元素(例如目标类型或混乱统计),从而导致跨一系列有限状态目标通道的样品学习。我们在贝叶斯学习框架内制定了在线波形选择问题,并使用概率近似正确的(PAC) - 贝斯理论为元学习问题提供了先前的依赖性绩效界限。我们提出了一项计算可行的元元采样算法,并研究了由不同场景组成的模拟研究中的性能。最后,我们研究了与在线元学习有关的潜在绩效优势和实用挑战,以进行波形 - 敏捷跟踪。
A key component of cognitive radar is the ability to generalize, or achieve consistent performance across a range of sensing environments, since aspects of the physical scene may vary over time. This presents a challenge for learning-based waveform selection approaches, since transmission policies which are effective in one scene may be highly suboptimal in another. We address this problem by strategically biasing a learning algorithm by exploiting high-level structure across tracking instances, referred to as meta-learning. In this work, we develop an online meta-learning approach for waveform-agile tracking. This approach uses information gained from previous target tracks to speed up and enhance learning in new tracking instances. This results in sample-efficient learning across a class of finite state target channels by exploiting inherent similarity across tracking scenes, attributed to common physical elements such as target type or clutter statistics. We formulate the online waveform selection problem within the framework of Bayesian learning, and provide prior-dependent performance bounds for the meta-learning problem using Probability Approximately Correct (PAC)-Bayes theory. We present a computationally feasible meta-posterior sampling algorithm and study the performance in a simulation study consisting of diverse scenes. Finally, we examine the potential performance benefits and practical challenges associated with online meta-learning for waveform-agile tracking.