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Rotating without Seeing: Towards In-hand Dexterity through Touch (2303.10880v4)

Published 20 Mar 2023 in cs.RO, cs.AI, and cs.LG

Abstract: Tactile information plays a critical role in human dexterity. It reveals useful contact information that may not be inferred directly from vision. In fact, humans can even perform in-hand dexterous manipulation without using vision. Can we enable the same ability for the multi-finger robot hand? In this paper, we present Touch Dexterity, a new system that can perform in-hand object rotation using only touching without seeing the object. Instead of relying on precise tactile sensing in a small region, we introduce a new system design using dense binary force sensors (touch or no touch) overlaying one side of the whole robot hand (palm, finger links, fingertips). Such a design is low-cost, giving a larger coverage of the object, and minimizing the Sim2Real gap at the same time. We train an in-hand rotation policy using Reinforcement Learning on diverse objects in simulation. Relying on touch-only sensing, we can directly deploy the policy in a real robot hand and rotate novel objects that are not presented in training. Extensive ablations are performed on how tactile information help in-hand manipulation.Our project is available at https://touchdexterity.github.io.

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Authors (5)
  1. Zhao-Heng Yin (17 papers)
  2. Binghao Huang (10 papers)
  3. Yuzhe Qin (37 papers)
  4. Qifeng Chen (187 papers)
  5. Xiaolong Wang (243 papers)
Citations (71)

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