Towards grounding concepts for transfer in goal learning from demonstration

Crystal Chao, M. Cakmak, A. Thomaz
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引用次数: 69

Abstract

We aim to build robots that frame the task learning problem as goal inference so that they are natural to teach and meet people's expectations for a learning partner. The focus of this work is the scenario of a social robot that learns task goals from human demonstrations without prior knowledge of high-level concepts. In the system that we present, these discrete concepts are grounded from low-level continuous sensor data through unsupervised learning, and task goals are subsequently learned on them using Bayesian inference. The grounded concepts are derived from the structure of the Learning from Demonstration (LfD) problem and exhibit degrees of prototypicality. These concepts can be used to transfer knowledge to future tasks, resulting in faster learning of those tasks. Using sensor data taken during demonstrations to our robot from five human teachers, we show the expressivity of using grounded concepts when learning new tasks from demonstration. We then show how the learning curve improves when transferring the knowledge of grounded concepts to future tasks.
从示范中为目标学习的迁移奠定基础
我们的目标是构建将任务学习问题作为目标推理的机器人,这样它们就可以自然地进行教学,并满足人们对学习伙伴的期望。这项工作的重点是一个社交机器人的场景,它从人类演示中学习任务目标,而不需要事先了解高级概念。在我们提出的系统中,这些离散概念是通过无监督学习从低级连续传感器数据中建立起来的,然后使用贝叶斯推理在它们上学习任务目标。基础概念来源于从演示中学习(LfD)问题的结构,并表现出一定程度的原型性。这些概念可以用来将知识转移到未来的任务中,从而更快地学习这些任务。在向我们的机器人演示期间,我们从五位人类教师那里获得了传感器数据,我们展示了在从演示中学习新任务时使用基础概念的表现力。然后,我们展示了当将基础概念的知识转移到未来任务时,学习曲线是如何改善的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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