机器人技能学习及其面临的数据困境:系统综述

Rong Jiang, Bin He, Zhipeng Wang, Xu Cheng, Hongrui Sang, Yanmin Zhou
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引用次数: 0

摘要

目的与传统的人工示教或系统建模方法相比,深度强化学习、模仿学习等数据驱动学习方法在应对日益复杂的任务和环境带来的挑战方面显示出更大的潜力,成为机器人技能学习领域的研究热点。然而,机器人与环境交互数据收集难与数据效率低的矛盾导致这些方法都面临着严重的数据困境,成为制约其发展的关键问题之一。因此,本文旨在全面梳理和分析机器人技能学习中数据困境的成因和解决方案。首先,本综述在对机器人技能学习的数据驱动方法进行分类和比较的基础上,分析了数据困境的成因;然后,详细介绍了现有用于解决数据困境的方法。本综述表明,仿真-现实结合、状态表示学习和知识共享对于克服机器人技能学习的数据困境至关重要。希望这篇综述能对今后更好地应对机器人技能学习中的数据困境有所帮助。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Robot skill learning and the data dilemma it faces: a systematic review
Purpose Compared with traditional methods relying on manual teaching or system modeling, data-driven learning methods, such as deep reinforcement learning and imitation learning, show more promising potential to cope with the challenges brought by increasingly complex tasks and environments, which have become the hot research topic in the field of robot skill learning. However, the contradiction between the difficulty of collecting robot–environment interaction data and the low data efficiency causes all these methods to face a serious data dilemma, which has become one of the key issues restricting their development. Therefore, this paper aims to comprehensively sort out and analyze the cause and solutions for the data dilemma in robot skill learning. Design/methodology/approach First, this review analyzes the causes of the data dilemma based on the classification and comparison of data-driven methods for robot skill learning; Then, the existing methods used to solve the data dilemma are introduced in detail. Finally, this review discusses the remaining open challenges and promising research topics for solving the data dilemma in the future. Findings This review shows that simulation–reality combination, state representation learning and knowledge sharing are crucial for overcoming the data dilemma of robot skill learning. Originality/value To the best of the authors’ knowledge, there are no surveys that systematically and comprehensively sort out and analyze the data dilemma in robot skill learning in the existing literature. It is hoped that this review can be helpful to better address the data dilemma in robot skill learning in the future.
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