Transfer learning in robotics: An upcoming breakthrough? A review of promises and challenges

Noémie Jaquier, Michael C Welle, Andrej Gams, Kunpeng Yao, Bernardo Fichera, Aude Billard, Aleš Ude, Tamim Asfour, Danica Kragic
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Abstract

Transfer learning is a conceptually-enticing paradigm in pursuit of truly intelligent embodied agents. The core concept—reusing prior knowledge to learn in and from novel situations—is successfully leveraged by humans to handle novel situations. In recent years, transfer learning has received renewed interest from the community from different perspectives, including imitation learning, domain adaptation, and transfer of experience from simulation to the real world, among others. In this paper, we unify the concept of transfer learning in robotics and provide the first taxonomy of its kind considering the key concepts of robot, task, and environment. Through a review of the promises and challenges in the field, we identify the need of transferring at different abstraction levels, the need of quantifying the transfer gap and the quality of transfer, as well as the dangers of negative transfer. Via this position paper, we hope to channel the effort of the community towards the most significant roadblocks to realize the full potential of transfer learning in robotics.
机器人中的迁移学习:即将实现的突破?前景与挑战综述
迁移学习是一种概念新颖的范例,旨在实现真正的智能化代理。其核心理念--利用已有知识在新情况下进行学习--被人类成功地用于处理新情况。近年来,迁移学习从不同的角度再次受到社会各界的关注,其中包括模仿学习、领域适应以及从模拟到现实世界的经验迁移等等。在本文中,我们统一了机器人迁移学习的概念,并提供了首个考虑到机器人、任务和环境等关键概念的同类分类法。通过回顾该领域的前景和挑战,我们明确了在不同抽象层次进行迁移的必要性、量化迁移差距和迁移质量的必要性,以及负迁移的危险性。我们希望通过这份立场文件,引导社会各界努力解决最重要的障碍,充分发挥机器人迁移学习的潜力。
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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