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Partially Observable Markov Decision Process Approximations for Adaptive Sensing

机译:自适应感知的局部可观马尔可夫决策过程逼近

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摘要

Adaptive sensing involves actively managing sensor resources to achieve a sensing task, such as object detection, classification, and tracking, and represents a promising direction for new applications of discrete event system methods. We describe an approach to adaptive sensing based on approximately solving a partially observable Markov decision process (POMDP) formulation of the problem. Such approximations are necessary because of the very large state space involved in practical adaptive sensing problems, precluding exact computation of optimal solutions. We review the theory of POMDPs and show how the theory applies to adaptive sensing problems. We then describe a variety of approximation methods, with examples to illustrate their application in adaptive sensing. The examples also demonstrate the gains that are possible from nonmyopic methods relative to myopic methods, and highlight some insights into the dependence of such gains on the sensing resources and environment.
机译:自适应感测涉及主动管理传感器资源以实现诸如对象检测,分类和跟踪之类的感测任务,并且为离散事件系统方法的新应用提供了有希望的方向。我们描述了一种基于近似解决问题的部分可观察的马尔可夫决策过程(POMDP)公式的自适应传感方法。由于实际的自适应感测问题涉及非常大的状态空间,因此排除了最佳解决方案的精确计算,因此这种近似是必要的。我们回顾了POMDP的理论,并展示了该理论如何应用于自适应感测问题。然后,我们将描述各种近似方法,并举例说明它们在自适应传感中的应用。这些示例还说明了非近视方法相对于近视方法可能获得的收益,并着重介绍了此类收益对传感资源和环境的依赖性。

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