Learning Under-Specified Object Manipulations from Human Demonstrations

K. Qian, Jun Xu, Ge Gao, Fang Fang, Xudong Ma
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引用次数: 2

Abstract

Learning by Demonstration (LbD) allows robots to acquire manipulation skills through human demonstration. In this regard, it is a challenging task to perceive spatial-temporal relations between sub-activities and object affordance in human demonstrations, especially when they are under-specified. This work extends the Probability Graph Model based methods to incorporate high-level demonstration classification. We propose an approach to model the semantics of human demonstration using Programming Domain Description Language (PDDL). Therefore, hidden motion primitives that are impossible to be learned directly from observing human demonstration in noisy video data can be inferred and the robot's plans are refined. Experimental results validate the effectiveness of the proposed method, in which more refined scripts can be generated for robot's execution.
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从人类演示中学习未指定对象的操作
示范学习(LbD)允许机器人通过人类示范来获得操作技能。在这方面,在人类演示中感知子活动和对象提供性之间的时空关系是一项具有挑战性的任务,特别是当它们未被指定时。这项工作扩展了基于概率图模型的方法,以纳入高级演示分类。我们提出了一种使用编程领域描述语言(PDDL)对人类演示的语义建模的方法。因此,可以推断出在噪声视频数据中观察人类演示无法直接学习到的隐藏运动原语,并改进机器人的计划。实验结果验证了该方法的有效性,可以为机器人的执行生成更精细的脚本。
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