Simpler Learning of Robotic Manipulation of Clothing by Utilizing DIY Smart Textile Technology

Featured Application Learned robotic manipulation skills for clothing on a low-cost robot by building a DIY smart textile and using a single CPU core. Deformable objects such as ropes, wires, and clothing are omnipresent in society and industry but are little researched in robotics research. This is...

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Veröffentlicht in:Applied sciences 2020-06, Vol.10 (12), p.4088, Article 4088
Hauptverfasser: Verleysen, Andreas, Holvoet, Thomas, Proesmans, Remko, Den Haese, Cedric, Wyffels, Francis
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Sprache:eng
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Zusammenfassung:Featured Application Learned robotic manipulation skills for clothing on a low-cost robot by building a DIY smart textile and using a single CPU core. Deformable objects such as ropes, wires, and clothing are omnipresent in society and industry but are little researched in robotics research. This is due to the infinite amount of possible state configurations caused by the deformations of the deformable object. Engineered approaches try to cope with this by implementing highly complex operations in order to estimate the state of the deformable object. This complexity can be circumvented by utilizing learning-based approaches, such as reinforcement learning, which can deal with the intrinsic high-dimensional state space of deformable objects. However, the reward function in reinforcement learning needs to measure the state configuration of the highly deformable object. Vision-based reward functions are difficult to implement, given the high dimensionality of the state and complex dynamic behavior. In this work, we propose the consideration of concepts beyond vision and incorporate other modalities which can be extracted from deformable objects. By integrating tactile sensor cells into a textile piece, proprioceptive capabilities are gained that are valuable as they provide a reward function to a reinforcement learning agent. We demonstrate on a low-cost dual robotic arm setup that a physical agent can learn on a single CPU core to fold a rectangular patch of textile in the real world based on a learned reward function from tactile information.
ISSN:2076-3417
2076-3417
DOI:10.3390/app10124088