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Learning a terrain model for autonomous navigation in rough terrain.

机译:学习用于在崎terrain地形中进行自主导航的地形模型。

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摘要

Current approaches to local rough-terrain navigation are limited by their ability to build a terrain model from sensor data. Available sensors make very indirect measurements of quantities of interest such as the supporting ground surface and the location of obstacles. This is especially true in domains where vegetation may hide the ground surface or partially obscure obstacles.; This thesis presents two related approaches for automatically learning how to use sensor data to build a local terrain model that includes the height of the supporting ground surface and the location of obstacles in challenging rough-terrain environments that include vegetation. The first approach uses an online learning method that directly learns the mapping between sensor data and ground height through experience with the world. The system can be trained by simply driving through representative areas. The second approach includes a terrain model that encodes structure in the world such as ground smoothness, class continuity, and similarity in vegetation height. This structure helps constrain the problem to better handle dense vegetation.; Results from an autonomous tractor show that the mapping from sensor data to a terrain model can be automatically learned, and that exploiting structure in the environment improves ground height estimates in vegetation.
机译:当前用于本地粗糙地形导航的方法受到其根据传感器数据建立地形模型的能力的限制。可用的传感器可以非常间接地测量感兴趣的数量,例如支撑地面和障碍物的位置。在植被可能掩盖地面或部分遮挡障碍物的地区尤其如此。本文提出了两种相关的方法,用于自动学习如何使用传感器数据来构建局部地形模型,包括在具有植被的恶劣地形环境中支撑地面的高度和障碍物的位置。第一种方法是使用在线学习方法,该方法通过与世界的经验直接学习传感器数据和地面高度之间的映射。只需在代表性区域内行驶即可对系统进行培训。第二种方法包括一个地形模型,该模型对世界上的结构进行编码,例如地面平整度,类别连续性和植被高度的相似性。这种结构有助于约束问题,以更好地处理茂密的植被。自动驾驶拖拉机的结果表明,可以自动学习从传感器数据到地形模型的映射,并且利用环境中的结构可以改善植被的地面高度估计。

著录项

  • 作者

    Wellington, Carl.;

  • 作者单位

    Carnegie Mellon University.;

  • 授予单位 Carnegie Mellon University.;
  • 学科 Computer Science.
  • 学位 Ph.D.
  • 年度 2005
  • 页码 125 p.
  • 总页数 125
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 自动化技术、计算机技术;
  • 关键词

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