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Autores principales: Puang, En Yen, Li, Zechen, Chew, Chee Meng, Luo, Shan, Wu, Yan
Formato: Preprint
Publicado: 2024
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Acceso en línea:https://arxiv.org/abs/2407.21172
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author Puang, En Yen
Li, Zechen
Chew, Chee Meng
Luo, Shan
Wu, Yan
author_facet Puang, En Yen
Li, Zechen
Chew, Chee Meng
Luo, Shan
Wu, Yan
contents Measuring grasp stability is an important skill for dexterous robot manipulation tasks, which can be inferred from haptic information with a tactile sensor. Control policies have to detect rotational displacement and slippage from tactile feedback, and determine a re-grasp strategy in term of location and force. Classic stable grasp task only trains control policies to solve for re-grasp location with objects of fixed center of gravity. In this work, we propose a revamped version of stable grasp task that optimises both re-grasp location and gripping force for objects with unknown and moving center of gravity. We tackle this task with a model-free, end-to-end Transformer-based reinforcement learning framework. We show that our approach is able to solve both objectives after training in both simulation and in a real-world setup with zero-shot transfer. We also provide performance analysis of different models to understand the dynamics of optimizing two opposing objectives.
format Preprint
id arxiv_https___arxiv_org_abs_2407_21172
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Learning Stable Robot Grasping with Transformer-based Tactile Control Policies
Puang, En Yen
Li, Zechen
Chew, Chee Meng
Luo, Shan
Wu, Yan
Robotics
Measuring grasp stability is an important skill for dexterous robot manipulation tasks, which can be inferred from haptic information with a tactile sensor. Control policies have to detect rotational displacement and slippage from tactile feedback, and determine a re-grasp strategy in term of location and force. Classic stable grasp task only trains control policies to solve for re-grasp location with objects of fixed center of gravity. In this work, we propose a revamped version of stable grasp task that optimises both re-grasp location and gripping force for objects with unknown and moving center of gravity. We tackle this task with a model-free, end-to-end Transformer-based reinforcement learning framework. We show that our approach is able to solve both objectives after training in both simulation and in a real-world setup with zero-shot transfer. We also provide performance analysis of different models to understand the dynamics of optimizing two opposing objectives.
title Learning Stable Robot Grasping with Transformer-based Tactile Control Policies
topic Robotics
url https://arxiv.org/abs/2407.21172