Learning to bag with a simulation-free reinforcement learning framework for robots

IF 1.5 Q3 AUTOMATION & CONTROL SYSTEMS IET Cybersystems and Robotics Pub Date : 2024-04-11 DOI:10.1049/csy2.12113
Francisco Munguia-Galeano, Jihong Zhu, Juan David Hernández, Ze Ji
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Abstract

Bagging is an essential skill that humans perform in their daily activities. However, deformable objects, such as bags, are complex for robots to manipulate. A learning-based framework that enables robots to learn bagging is presented. The novelty of this framework is its ability to learn and perform bagging without relying on simulations. The learning process is accomplished through a reinforcement learning (RL) algorithm introduced and designed to find the best grasping points of the bag based on a set of compact state representations. The framework utilises a set of primitive actions and represents the task in five states. In our experiments, the framework reached 60% and 80% success rates after around 3 h of training in the real world when starting the bagging task from folded and unfolded states, respectively. Finally, the authors test the trained RL model with eight more bags of different sizes to evaluate its generalisability.

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用机器人的无模拟强化学习框架学会装袋
装袋是人类日常活动中的一项基本技能。然而,对于机器人来说,装袋等可变形物体的操作十分复杂。本文介绍了一种基于学习的框架,可让机器人学习装袋。该框架的新颖之处在于它能够在不依赖模拟的情况下学习和执行装袋操作。学习过程是通过引入的强化学习(RL)算法完成的,该算法旨在根据一组紧凑的状态表示找到袋子的最佳抓取点。该框架利用一组原始动作,用五个状态来表示任务。在我们的实验中,当从折叠状态和展开状态开始抓包任务时,该框架在现实世界中经过约 3 小时的训练后,成功率分别达到了 60% 和 80%。最后,作者用另外八个不同大小的袋对训练好的 RL 模型进行了测试,以评估其通用性。
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来源期刊
IET Cybersystems and Robotics
IET Cybersystems and Robotics Computer Science-Information Systems
CiteScore
3.70
自引率
0.00%
发文量
31
审稿时长
34 weeks
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