An imitation learning approach for the control of a low-cost low-accuracy robotic arm for unstructured environments
-
Published:2022-11-11
Issue:1
Volume:7
Page:13-30
-
ISSN:2366-5971
-
Container-title:International Journal of Intelligent Robotics and Applications
-
language:en
-
Short-container-title:Int J Intell Robot Appl
Author:
Bonsignorio Fabio, Cervellera Cristiano, Macciò Danilo, Zereik EnricaORCID
Abstract
AbstractWe have developed an imitation learning approach for the image-based control of a low-cost low-accuracy robot arm. The image-based control of manipulation arms is still an unsolved problem, at least under challenging conditions such as those here addressed. Many attempts for solutions in the literature are based on machine learning, generally relying on deep neural network architectures. In typical imitation approaches, the deep network learns from a human expert. In our case the network is trained on state/action pairs obtained through a Belief Space Planning algorithm, a stochastic method that requires only a rough tuning, particularly suited to unstructured and dynamic environments. Our approach allows to obtain a lightweight manipulation system that demonstrated its efficiency, robustness and good performance in real-world tests, and that is reproducible in experiments and results, despite its inaccuracy and non-repeatable kinematics. The proposed system performs well on a simple reaching task, requiring limited training on our quite challenging platform. The main contribution of the proposed work lies in the definition and real-world testing of an efficient controller, based on the integration of Belief Space Planning with the imitation learning paradigm, that enables even inaccurate, very low-cost robotic manipulators to be actually controlled and employed in the field.
Publisher
Springer Science and Business Media LLC
Subject
Artificial Intelligence,Computer Science Applications
Reference47 articles.
1. Abbeel, P., Ng, A.Y.: Apprenticeship learning via inverse reinforcement learning. In: Proceedings of the Twenty-First International Conference on Machine Learning, pp. 1–8 (2004) 2. Agha-Mohammadi, A.A., Chakravorty, S., Amato, N.M.: Firm: Sampling-based feedback motion-planning under motion uncertainty and imperfect measurements. The International Journal of Robotics Research 33, 268–304 (2014) 3. Bain, M., Sammut, C.: A framework for behavioural cloning. In: Furukawa, K., Michie, D., Muggleton, S. (eds.) Machine Intelligence vol. 15, pp. 813–816 (1999) 4. Betts, J.T.: Practical methods for optimal control and estimation using nonlinear programming, vol. 19, pp. 132–134 (2010) 5. Bojarski, M., Testa, D.D., Dworakowski, D., Firner, B., Flepp, B., Goyal, P., Jackel, L.D., Monfort, M., Muller, U., Zhang, J., Zhang, X., Zhao, J., Zieba, K.: End to End Learning for Self-Driving Cars (2016)
Cited by
2 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献
|
|