Survey of learning-based approaches for robotic in-hand manipulation.

IF 2.9 Q2 ROBOTICS Frontiers in Robotics and AI Pub Date : 2024-11-05 eCollection Date: 2024-01-01 DOI:10.3389/frobt.2024.1455431
Abraham Itzhak Weinberg, Alon Shirizly, Osher Azulay, Avishai Sintov
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Abstract

Human dexterity is an invaluable capability for precise manipulation of objects in complex tasks. The capability of robots to similarly grasp and perform in-hand manipulation of objects is critical for their use in the ever changing human environment, and for their ability to replace manpower. In recent decades, significant effort has been put in order to enable in-hand manipulation capabilities to robotic systems. Initial robotic manipulators followed carefully programmed paths, while later attempts provided a solution based on analytical modeling of motion and contact. However, these have failed to provide practical solutions due to inability to cope with complex environments and uncertainties. Therefore, the effort has shifted to learning-based approaches where data is collected from the real world or through a simulation, during repeated attempts to complete various tasks. The vast majority of learning approaches focused on learning data-based models that describe the system to some extent or Reinforcement Learning (RL). RL, in particular, has seen growing interest due to the remarkable ability to generate solutions to problems with minimal human guidance. In this survey paper, we track the developments of learning approaches for in-hand manipulations and, explore the challenges and opportunities. This survey is designed both as an introduction for novices in the field with a glossary of terms as well as a guide of novel advances for advanced practitioners.

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基于学习的机器人手部操作方法概览。
人类的灵巧性是在复杂任务中精确操控物体的宝贵能力。机器人要想在瞬息万变的人类环境中发挥作用,并取代人力,就必须具备类似的抓取和徒手操作物体的能力。近几十年来,为了使机器人系统具备徒手操作能力,人们付出了巨大的努力。最初的机器人操纵器遵循精心编程的路径,而后来的尝试则提供了基于运动和接触分析模型的解决方案。然而,由于无法应对复杂的环境和不确定性,这些都无法提供实用的解决方案。因此,人们开始转向基于学习的方法,即在反复尝试完成各种任务的过程中,从现实世界或通过模拟收集数据。绝大多数学习方法都侧重于学习在一定程度上描述系统的数据模型或强化学习(RL)。其中,强化学习(RL)因其只需极少的人工指导就能生成问题解决方案的卓越能力而受到越来越多的关注。在本调查报告中,我们将跟踪徒手操作学习方法的发展,并探讨其中的挑战和机遇。本调查报告旨在为该领域的新手提供术语表,同时为高级从业人员提供新进展指南。
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来源期刊
CiteScore
6.50
自引率
5.90%
发文量
355
审稿时长
14 weeks
期刊介绍: Frontiers in Robotics and AI publishes rigorously peer-reviewed research covering all theory and applications of robotics, technology, and artificial intelligence, from biomedical to space robotics.
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