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Learning Behaviors from Human Teachers by Generalizing Task-Relevant Features

机译:通过概括任务相关特征来学习人类教师的行为

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This paper proposes a general method of robotic imitation learning. In this method, robots learn inner common features of demonstrations, which are largely different from each other, by analyzing the similarities among the features of the demonstrations. Adaptive generation methods are related to each feature. At the generation stage, given new task-relevant constraints, robots can generate motion trajectories, which still have the common feature learned from the demonstrations, to achieve the task-goals. This methodology is an opened framework which enables researchers to design features and feature related generation methods according to the application requirements. Three experiments are designed for robots to learn behaviors from human teachers, and the demonstrations given at the teaching stage are largely different from each other. Experimental results are given in this paper to verify the effectiveness of our proposed methodology.
机译:本文提出了一种机器人模仿学习的一般方法。在这种方法中,通过分析示范的特征之间的相似性,可以通过分析相似性来学习示威性的内心公共特征,这主要是彼此不同。自适应生成方法与每个特征有关。在生成阶段,给定新的任务相关约束,机器人可以生成运动轨迹,这仍然具有从演示中学到的共同特征,以实现任务目标。该方法是一个开放的框架,使研究人员能够根据应用要求设计设计功能和功能相关的生成方法。三项实验是为机器人设计,以学习人类教师的行为,教学阶段的示威性主要彼此不同。本文给出了实验结果,以验证我们提出的方法的有效性。

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