Affiliation:
1. Cooper Group University of Liverpool Liverpool UK
2. School of Physics Engineering and Technology University of York York UK
3. School of Computer Science and Informatics Cardiff University Cardiff UK
4. School of Engineering Cardiff University Cardiff UK
Abstract
AbstractBagging 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.
Funder
Engineering and Physical Sciences Research Council
Consejo Nacional de Ciencia y Tecnología
Publisher
Institution of Engineering and Technology (IET)
Cited by
1 articles.
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