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Effective motion tracking using known and learned actuation models.

机译:使用已知和学习的驱动模型进行有效的运动跟踪。

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摘要

Robots need to track objects. We consider tasks where robots actuate on the target that is visually tracked. Object tracking efficiency completely depends on the accuracy of the motion model and of the sensory information. The motion model of the target becomes particularly complex in the presence of multiple agents acting on a mobile target. We assume that the tracked object is actuated by a team of agents, composing of robots and possibly humans. Robots know their own actions, and team members are collaborating according to coordination plans and communicated information. The thesis shows that using a previously known or learned action model of the single robot or team members improves the efficiency of tracking.;First, we introduce and implement a novel team-driven motion tracking approach. Team-driven motion tracking is a tracking paradigm defined as a set of principles for the inclusion of a hierarchical, prior knowledge and construction of a motion model. We illustrate a possible set of behavior levels within the Segway soccer domain that correspond to the abstract motion modeling decomposition.;Second, we introduce a principled approach to incorporate models of the robot-object interaction into the tracking algorithm to effectively improve the performance of the tracker. We present the integration of a single robot behavioral model in terms of skills and tactics with multiple actions into our dynamic Bayesian probabilistic tracking algorithm.;Third, we extend to multiple motion tracking models corresponding to known multi-robot coordination plans or from multi-robot communication. We evaluate our resulting informed-tracking approach empirically in simulation and using a setup Segway soccer task. The input of the multiple single and multi-robot behavioral sources allow a robot to much more effectively visually track mobile targets with dynamic trajectories.;Fourth, we present a parameter learning algorithm to learn actuation models. We describe the parametric system model and the parameters we need to learn in the actuation model.;As in the KLD-sampling algorithm applied to tracking, we adapt the number of modeling particles and learn the unknown parameters. We successfully decrease the computation time of learning and the state estimation process by using significantly fewer particles on average. We show the effectiveness of learning using simulated experiments. The tracker that uses the learned actuation model achieves improved tracking performance.;These contributions demonstrate that it is possible to effectively improve an agent's object tracking ability using tactics, plays, communication and learned action models in the presence of multiple agents acting on a mobile object. The introduced tracking algorithms are proven effective in a number of simulated experiments and setup Segway robot soccer tasks. The team-driven motion tracking framework is demonstrated empirically across a wide range of settings of increasing complexity.
机译:机器人需要跟踪物体。我们考虑机器人在视觉上跟踪的目标上致动的任务。目标跟踪效率完全取决于运动模型和感官信息的准确性。在有多个代理作用于移动目标的情况下,目标的运动模型变得特别复杂。我们假设被跟踪的对象是由一组由机器人和可能的人类组成的特工促动的。机器人知道自己的动作,团队成员正在根据协调计划和传达的信息进行协作。论文表明,使用单个机器人或团队成员的先前已知或学习的动作模型可以提高跟踪效率。首先,我们引入并实现了一种新颖的团队驱动运动跟踪方法。团队驱动的运动跟踪是一种跟踪范式,定义为一组原则,用于包括分层的先验知识和运动模型的构建。我们说明了Segway足球域内与抽象运动建模分解相对应的一组可能的行为水平。其次,我们引入了一种有原则的方法,将机器人-对象交互的模型纳入跟踪算法,以有效地改善机器人的性能。追踪器。我们提出将具有多种动作的技能和战术方面的单个机器人行为模型集成到我们的动态贝叶斯概率跟踪算法中;第三,我们扩展到对应于已知多机器人协调计划或来自多机器人的多个运动跟踪模型通讯。我们在仿真中和使用设置的Segway足球任务以经验方式评估了所得的知情跟踪方法。多个单一和多机器人行为来源的输入使机器人可以更有效地视觉跟踪具有动态轨迹的移动目标。第四,我们提出了一种参数学习算法来学习驱动模型。我们描述了参数系统模型和在致动模型中需要学习的参数。正如在用于跟踪的KLD采样算法中一样,我们调整了建模粒子的数量并学习了未知参数。通过平均使用明显更少的粒子,我们成功地减少了学习的计算时间和状态估计过程。我们展示了使用模拟实验进行学习的有效性。使用学习的致动模型的跟踪器可实现改进的跟踪性能。这些贡献表明,在存在多个对移动对象起作用的代理的情况下,可以使用战术,游戏,交流和学习的动作模型有效地提高代理对对象的跟踪能力。 。事实证明,引入的跟踪算法在许多模拟实验和设置Segway机器人足球任务中都是有效的。团队驱动的运动跟踪框架在越来越复杂的各种环境中得到了经验证明。

著录项

  • 作者

    Gu, Yang.;

  • 作者单位

    Carnegie Mellon University.;

  • 授予单位 Carnegie Mellon University.;
  • 学科 Engineering Robotics.;Computer Science.
  • 学位 Ph.D.
  • 年度 2008
  • 页码 136 p.
  • 总页数 136
  • 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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