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Applied Imitation Learning for Autonomous Navigation in Complex Natural Terrain

机译:复杂自然地形中自主导航的应用模仿学习

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Rough terrain autonomous navigation continues to pose a challenge to the robotics community. Robust navigation by a mobile robot depends not only on the individual performance of perception and planning systems, but on how well these systems are coupled. When traversing rough terrain, this coupling (in the form of a cost function) has a large impact on robot performance, necessitating a robust design. This paper explores the application of Imitation Learning to this task for the Crusher autonomous navigation platform. Using expert examples of proper navigation behavior, mappings from both online and offline perceptual data to planning costs are learned. Challenges in adapting existing techniques to complex online planning systems are addressed, along with additional practical considerations. The benefits to autonomous performance of this approach are examined, as well as the decrease in necessary designer interaction. Experimental results are presented from autonomous traverses through complex natural terrains.
机译:崎岖的地形自主导航继续对机器人社区构成挑战。移动机器人的强大导航不仅取决于感知和规划系统的个人性能,而且依赖于这些系统耦合的程度。在横穿粗糙地形时,这种耦合(以成本函数的形式)对机器人性能具有很大的影响,因此需要具有稳健的设计。本文探讨了模仿学习对破碎机自主导航平台的此任务的应用。使用适当的导航行为的专家示例,了解到在线和离线感知数据到规划成本的映射。以及额外的实际考虑,将现有技术适应复杂的在线计划系统的挑战。检查了这种方法的自主性能的好处,以及必要的设计者相互作用的减少。实验结果通过复杂的天然地形呈现自主横潮。

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