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Vision-based map building and trajectory planning to enable autonomous flight through urban environments.

机译:基于视觉的地图构建和轨迹规划,以实现在城市环境中的自主飞行。

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摘要

The desire to use Unmanned Air Vehicles (UAVs) in a variety of complex missions has motivated the need to increase the autonomous capabilities of these vehicles. This research presents autonomous vision-based mapping and trajectory planning strategies for a UAV navigating in an unknown urban environment.;It is assumed that the vehicle's inertial position is unknown because GPS in unavailable due to environmental occlusions or jamming by hostile military assets. Therefore, the environment map is constructed from noisy sensor measurements taken at uncertain vehicle locations. Under these restrictions, map construction becomes a state estimation task known as the Simultaneous Localization and Mapping (SLAM) problem. Solutions to the SLAM problem endeavor to estimate the state of a vehicle relative to concurrently estimated environmental landmark locations. The presented work focuses specifically on SLAM for aircraft, denoted as airborne SLAM, where the vehicle is capable of six degree of freedom motion characterized by highly nonlinear equations of motion. The airborne SLAM problem is solved with a variety of filters based on the Rao-Blackwellized particle filter. Additionally, the environment is represented as a set of geometric primitives that are fit to the three-dimensional points reconstructed from gathered onboard imagery.;The second half of this research builds on the mapping solution by addressing the problem of trajectory planning for optimal map construction. Optimality is defined in terms of maximizing environment coverage in minimum time. The planning process is decomposed into two phases of global navigation and local navigation. The global navigation strategy plans a coarse, collision-free path through the environment to a goal location that will take the vehicle to previously unexplored or incompletely viewed territory. The local navigation strategy plans detailed, collision-free paths within the currently sensed environment that maximize local coverage. The local path is converted to a trajectory by incorporating vehicle dynamics with an optimal control scheme which minimizes deviation from the path and final time.;Simulation results are presented for the mapping and trajectory planning solutions. The SLAM solutions are investigated in terms of estimation performance, filter consistency, and computational efficiency. The trajectory planning method is shown to produce computationally efficient solutions that maximize environment coverage.
机译:在各种复杂任务中使用无人飞行器(UAV)的愿望激发了增加这些飞行器自动驾驶能力的需求。这项研究提出了无人机在未知城市环境中航行的基于视觉的自动制图和轨迹规划策略;假定车辆的惯性位置是未知的,因为GPS由于环境闭塞或敌对军事资产的干扰而无法使用。因此,环境地图是根据在不确定的车辆位置上获得的嘈杂传感器测量结果构建的。在这些限制下,地图构造成为一种状态估计任务,即同时定位和映射(SLAM)问题。 SLAM问题的解决方案致力于相对于同时估计的环境地标位置来估计车辆的状态。提出的工作专门针对飞机的SLAM,称为机载SLAM,该飞机具有六自由度运动,并具有高度非线性的运动方程。机载SLAM问题可以通过基于Rao-Blackwellized粒子过滤器的各种过滤器来解决。此外,环境被表示为一组几何图元,这些几何图元适合于从收集的机载图像重建的三维点上。本研究的下半部分通过解决最佳规划地图构建的轨迹规划问题,以映射解决方案为基础。最优性的定义是在最短的时间内最大化环境覆盖率。规划过程被分解为全局导航和局部导航两个阶段。全球导航策略计划通过环境到达目标位置的粗略,无碰撞的路径,该路径会将车辆带到之前未开发或未完全查看的区域。本地导航策略计划在当前感测到的环境中详细,无冲突的路径,以最大化本地覆盖范围。通过将车辆动力学与最优控制方案相结合,将局部路径转换为轨迹,从而将与路径和最终时间的偏差降到最低。;为制图和轨迹规划解决方案提供了仿真结果。从估计性能,滤波器一致性和计算效率方面研究了SLAM解决方案。轨迹规划方法显示出可产生可有效计算的解决方案,可最大化环境覆盖率。

著录项

  • 作者

    Watkins, Adam S.;

  • 作者单位

    University of Florida.;

  • 授予单位 University of Florida.;
  • 学科 Engineering Aerospace.;Engineering Mechanical.
  • 学位 Ph.D.
  • 年度 2007
  • 页码 132 p.
  • 总页数 132
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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