从演示中学习的负面结果:对任务和运动规划抽象的最终用户教学机器人的挑战

N. Gopalan, Nina Moorman, Manisha Natarajan, M. Gombolay
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引用次数: 5

摘要

-从演示中学习(LfD)旨在通过使非专业人员能够直观地编程机器人,通过人工任务演示来执行新技能,从而实现机器人的演示。然而,在需要分层抽象的任务和运动规划设置下,LfD是具有挑战性的。先前的工作研究了通过关键帧[1]或分层任务网络规范[2]引发演示的机制,包括任务和运动的分层规范。然而,这些先前的工作并没有研究非机器人专家最终用户是否能够在没有机器人专家如何教授每个任务的明确培训的情况下提供这种分层演示[3]。为了解决先前工作的局限性和假设,我们进行了两个新的人类受试者实验来回答(1)通过层次结构和任务抽象教用户的必要条件是什么;(2)需要什么指令性信息或反馈来支持用户学习有效地编程机器人来解决新任务。我们的第一个实验表明,只有不到一半(35。71%的受试者在没有启动的情况下提供了子任务抽象的演示。我们的第二个实验表明,当没有向用户展示专家针对正在训练的任务的教学策略的视频演示时,用户无法正确地教导机器人。甚至不显示模拟任务的视频就足够了。这些实验揭示了在LfD中需要从根本上不同的方法,这可以允许最终用户在不需要每一步都由专家指导的情况下向机器人教授可推广的长期任务。
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Negative Result for Learning from Demonstration: Challenges for End-Users Teaching Robots with Task And Motion Planning Abstractions
—Learning from demonstration (LfD) seeks to democ- ratize robotics by enabling non-experts to intuitively program robots to perform novel skills through human task demonstration. Yet, LfD is challenging under a task and motion planning setting which requires hierarchical abstractions. Prior work has studied mechanisms for eliciting demonstrations that include hierarchical specifications of task and motion, via keyframes [1] or hierarchical task network specifications [2]. However, such prior works have not examined whether non-roboticist end- users are capable of providing such hierarchical demonstrations without explicit training from a roboticist showing how to teach each task [3]. To address the limitations and assumptions of prior work, we conduct two novel human-subjects experiments to answer (1) what are the necessary conditions to teach users through hierarchy and task abstractions and (2) what instruc- tional information or feedback is required to support users to learn to program robots effectively to solve novel tasks. Our first experiment shows that fewer than half ( 35 . 71% ) of our subjects provide demonstrations with sub-task abstractions when not primed. Our second experiment demonstrates that users fail to teach the robot correctly when not shown a video demonstration of an expert’s teaching strategy for the exact task that the subject is training. Not even showing the video of an analogue task was sufficient. These experiments reveal the need for fundamentally different approaches in LfD which can allow end-users to teach generalizable long-horizon tasks to robots without the need to be coached by experts at every step.
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