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Information-theoretic active perception for multi-robot teams.

机译:多机器人团队的信息理论主动感知。

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摘要

Multi-robot teams that intelligently gather information have the potential to transform industries as diverse as agriculture, space exploration, mining, environmental monitoring, search and rescue, and construction. Despite large amounts of research effort on active perception problems, there still remain significant challenges. In this thesis, we present a variety of information-theoretic control policies that enable teams of robots to efficiently estimate different quantities of interest. Although these policies are intractable in general, we develop a series of approximations that make them suitable for real time use.;We begin by presenting a unified estimation and control scheme based on Shannon's mutual information that lets small teams of robots equipped with range-only sensors track a single static target. By creating approximate representations, we substantially reduce the complexity of this approach, letting the team track a mobile target. We then scale this approach to larger teams that need to localize a large and unknown number of targets.;We also examine information-theoretic control policies to autonomously construct 3D maps with ground and aerial robots. By using Cauchy-Schwarz quadratic mutual information, we show substantial computational improvements over similar information-theoretic measures. To map environments faster, we adopt a hierarchical planning approach which incorporates trajectory optimization so that robots can quickly determine feasible and locally optimal trajectories. Finally, we present a high-level planning algorithm that enables heterogeneous robots to cooperatively construct maps.
机译:能够智能地收集信息的多机器人团队具有改变农业,太空探索,采矿,环境监测,搜索和救援以及建筑等多种行业的潜力。尽管对主动感知问题进行了大量研究,但仍然存在重大挑战。在本文中,我们提出了多种信息理论控制策略,这些策略使机器人团队能够有效地估计不同的兴趣量。尽管这些政策通常很难处理,但我们开发了一系列近似方法使其适合实时使用;我们首先基于Shannon的互信息提出一个统一的估计和控制方案,该方案允许小型团队的机器人仅配备范围传感器跟踪单个静态目标。通过创建近似表示,我们大大降低了此方法的复杂性,使团队可以跟踪移动目标。然后,我们将这种方法扩展到需要定位大量未知目标的大型团队。我们还研究了信息理论控制策略,以利用地面和空中机器人自主构建3D地图。通过使用Cauchy-Schwarz二次互信息,我们显示了对类似信息理论测度的实质性计算改进。为了更快地绘制环境地图,我们采用了结合了轨迹优化的分层计划方法,以便机器人可以快速确定可行的局部最优轨迹。最后,我们提出了一种高级计划算法,该算法可使异构机器人协同构建地图。

著录项

  • 作者

    Charrow, Benjamin.;

  • 作者单位

    University of Pennsylvania.;

  • 授予单位 University of Pennsylvania.;
  • 学科 Robotics.
  • 学位 Ph.D.
  • 年度 2015
  • 页码 175 p.
  • 总页数 175
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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