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Online Learning Techniques for Improving Robot Navigation in Unfamiliar Domains.

机译:用于改善陌生领域中机器人导航的在线学习技术。

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摘要

Many mobile robot applications require robots to act safely and intelligently in complex unfamiliar environments with little structure and limited or unavailable human supervision. As a robot is forced to operate in an environment that it was not engineered or trained for, various aspects of its performance will inevitably degrade. Roboticists equip robots with powerful sensors and data sources to deal with uncertainty, only to discover that the robots are able to make only minimal use of this data and still find themselves in trouble. Similarly, roboticists develop and train their robots in representative areas, only to discover that they encounter new situations that are not in their experience base Small problems resulting in mildly sub-optimal performance are often tolerable, but major failures resulting in vehicle loss or compromised human safety are not.;This thesis presents a series of online algorithms to enable a mobile robot to better deal with uncertainty in unfamiliar domains in order to improve its navigational abilities, better utilize available data and resources and reduce risk to the vehicle. We validate these algorithms through extensive testing onboard large mobile robot systems and argue how such approaches can increase the reliability and robustness of mobile robots, bringing them closer to the capabilities required for many real-world applications.
机译:许多移动机器人应用程序要求机器人在结构复杂,人员监督有限或无法使用的复杂陌生环境中安全智能地行动。由于机器人被迫在未经设计或培训的环境中操作,其性能的各个方面都将不可避免地下降。机器人专家为机器人配备了功能强大的传感器和数据源,以应对不确定性,但他们发现机器人仅能最小程度地使用此数据,并且仍然会遇到麻烦。同样,机器人专家在有代表性的地区开发和培训机器人,却发现自己遇到了经验不足的新情况,通常可以容忍导致适度次优性能的小问题,但会导致车辆损失或人身伤害的重大故障本论文提出了一系列在线算法,使移动机器人能够更好地处理陌生领域的不确定性,从而提高其导航能力,更好地利用可用数据和资源并降低车辆风险。我们通过在大型移动机器人系统上进行广泛的测试来验证这些算法,并争论这些方法如何提高移动机器人的可靠性和鲁棒性,使其更接近于许多实际应用程序所需的功能。

著录项

  • 作者

    Sofman, Boris.;

  • 作者单位

    Carnegie Mellon University.;

  • 授予单位 Carnegie Mellon University.;
  • 学科 Engineering Robotics.;Computer Science.;Artificial Intelligence.
  • 学位 Ph.D.
  • 年度 2010
  • 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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