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An information-based approach to sensor resource allocation.

机译:基于信息的传感器资源分配方法。

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摘要

This work addresses the problem of scheduling the resources of agile sensors. We advocate an information-based approach, where sensor tasking decisions are made based on the principle that actions should be chosen to maximize the information expected to be extracted from the scene. This approach provides a single metric able to automatically capture the complex tradeoffs involved when choosing between possible sensor allocations.; We apply this principle to the problem of tracking multiple moving ground targets from an airborne sensor. The aim is to task the sensor to most efficiently estimate both the number of targets and the state of each target simultaneously. The state of a target includes kinematic quantities like position and velocity and also discrete variables such as target class and target mode (e.g., "turning" or "stopped"). In many experiments presented herein, target motion is taken from real recorded vehicle histories.; The information-based approach to sensor management involves the development of three interrelated elements.; First, we form the joint multitarget probability density (JMPD), which is the fundamental entity capturing knowledge about the number of targets and the states of the individual targets. Unlike traditional methods, the JMPD does not assume any independence, but instead explicitly models coupling in uncertainty between target states, between targets, and between target state and the number of targets. Furthermore, the JMPD is not assumed to be of some parametric form (e.g., Gaussian). Because of this generality, the JMPD must be estimated using sophisticated numerical techniques. Our representation of the JMPD is via a novel multitarget particle filter with an adaptive sampling scheme.; Second, we use the estimate of the JMPD to perform (myopic) sensor resource allocation. The philosophy is to choose actions that are expected to maximize information extracted from the scene. This metric trades automatically between allocations that provide different types of information (e.g., actions that provide information about position versus actions that provide information about target class) without ad hoc assumptions as to the relative utility of each.; Finally, we extend the information-based paradigm to non-myopic sensor scheduling. This extension is computationally challenging due to an exponential growth in action sequences with horizon time. We investigate two approximate methods to address this complexity. First, we directly approximate Bellman's equation by replacing the value-to-go function with an easily computed function of the ability to gain information in the future. Second, we apply reinforcement learning as a means of learning a non-myopic policy from a set of example episodes.
机译:这项工作解决了调度敏捷传感器资源的问题。我们提倡一种基于信息的方法,在该方法中,应根据以下原则做出传感器任务分配决策:应选择动作以最大化预期从场景中提取的信息。这种方法提供了一个单一指标,可以在可能的传感器分配之间进行选择时自动捕获所涉及的复杂权衡。我们将此原理应用于从机载传感器跟踪多个移动地面目标的问题。目的是使传感器任务最有效地同时估计目标数量和每个目标的状态。目标的状态包括运动量,例如位置和速度,以及离散变量,例如目标类别和目标模式(例如“转弯”或“停止”)。在本文提出的许多实验中,目标运动是从真实记录的车辆历史中获取的。基于信息的传感器管理方法涉及三个相互关联的要素的开发。首先,我们形成联合多目标概率密度(JMPD),这是捕获有关目标数量和单个目标状态的知识的基本实体。与传统方法不同,JMPD不假定任何独立性,而是显式地对目标状态之间,目标之间以及目标状态与目标数量之间的不确定性耦合进行建模。此外,不假定JMPD具有某种参数形式(例如,高斯)。由于这种通用性,必须使用复杂的数值技术来估算JMPD。我们通过具有自适应采样方案的新型多目标粒子滤波器来表示JMPD。其次,我们使用JMPD的估算值来执行(近视)传感器资源分配。理念是选择可以最大化从场景中提取的信息的动作。该度量标准在提供不同类型信息的分配之间自动进行交易(例如,提供有关位置信息的动作与提供有关目标类别信息的动作),而没有关于每种信息的相对效用的临时假设。最后,我们将基于信息的范式扩展到非近视传感器调度。由于动作序列随时间推移呈指数增长,因此该扩展在计算上具有挑战性。我们研究了两种近似的方法来解决这种复杂性。首先,我们用易于计算的未来获取信息能力的函数代替了“待走价值”函数,直接近似了贝尔曼方程。其次,我们将强化学习作为一种从一系列示例事件中学习非近视策略的方法。

著录项

  • 作者

    Kreucher, Christopher M.;

  • 作者单位

    University of Michigan.;

  • 授予单位 University of Michigan.;
  • 学科 Engineering Electronics and Electrical.
  • 学位 Ph.D.
  • 年度 2005
  • 页码 152 p.
  • 总页数 152
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 无线电电子学、电信技术;
  • 关键词

  • 入库时间 2022-08-17 11:42:33

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