动态环境中使用学习搜索的无碰撞和无冻结导航

Chung-Che Yu, C. Wang
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引用次数: 7

摘要

虽然可以使用现有的基于规则的方法来实现无碰撞导航,但使用从演示中学习(LfD)方法来减轻繁琐的规则设计和参数调优过程的负担变得更有吸引力。此外,在冻结机器人问题中,一旦环境的复杂性超过一定程度,即使对移动实体有完美的预测,使用这些规划或导航方法,机器人也可能没有足够的空间进行导航。本文认为,动态环境中的无碰撞导航可以通过具有适当特征集的演示来学习,而无需使用路径规划器。利用从论证中学到的策略来解决冻结机器人问题是可行的。仿真结果表明,改进后的学习搜索(LEARCH)方法能够在动态环境中实现无碰撞和无冻结导航。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Collision- and Freezing-Free Navigation in Dynamic Environments Using Learning to Search
While collision-free navigation could be done using existing rule-based approaches, it becomes more attractive to use learning from demonstration (LfD) approaches to ease the burden of tedious rule designing and parameter tuning procedures. In addition, in the freezing robot problem, once the environment surpasses a certain level of complexity, there may be no sufficient space for a robot to navigate using these planning or navigation approaches even with perfect predictions of moving entities. In this paper, it is argued that collision-free navigation in dynamic environments is learnable from demonstrations with proper feature sets without the use of a path planner. It is feasible to solve the freezing robot problem using the policies learned from demonstration. The simulation results demonstrate that the Learning to Search (LEARCH) approach with the proposed modification is capable of achieving collision- and freezing-free navigation in dynamic environments.
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