Active learning from demonstration for robust autonomous navigation

David Silver, J. Bagnell, A. Stentz
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引用次数: 56

Abstract

Building robust and reliable autonomous navigation systems that generalize across environments and operating scenarios remains a core challenge in robotics. Machine learning has proven a significant aid in this task; in recent years learning from demonstration has become especially popular, leading to improved systems while requiring less expert tuning and interaction. However, these approaches still place a burden on the expert, specifically to choose the best demonstrations to provide. This work proposes two approaches for active learning from demonstration, in which the learning system requests specific demonstrations from the expert. The approaches identify examples for which expert demonstration is predicted to provide useful information on concepts which are either novel or uncertain to the current system. Experimental results demonstrate both improved generalization performance and reduced expert interaction when using these approaches.
鲁棒自主导航演示中的主动学习
构建强大可靠的自主导航系统,并将其应用于各种环境和操作场景,仍然是机器人技术的核心挑战。事实证明,机器学习在这项任务中有重要的帮助;近年来,从演示中学习变得特别流行,这使得系统得到改进,同时减少了对专家调优和交互的需求。然而,这些方法仍然给专家带来了负担,特别是选择要提供的最佳演示。这项工作提出了两种从示范中主动学习的方法,其中学习系统要求专家进行具体的示范。这些方法确定了预测专家演示的例子,以提供对当前系统来说新颖或不确定的概念的有用信息。实验结果表明,这些方法既提高了泛化性能,又减少了专家交互。
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