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arxiv: 2309.16652 · v1 · pith:2UFCOEGW · submitted 2023-09-28 · cs.RO

Perceiving Extrinsic Contacts from Touch Improves Learning Insertion Policies

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classification cs.RO
keywords contactsextrinsicinsertionobjectpoliciestasksbowl-in-dishrackexecution
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Robotic manipulation tasks such as object insertion typically involve interactions between object and environment, namely extrinsic contacts. Prior work on Neural Contact Fields (NCF) use intrinsic tactile sensing between gripper and object to estimate extrinsic contacts in simulation. However, its effectiveness and utility in real-world tasks remains unknown. In this work, we improve NCF to enable sim-to-real transfer and use it to train policies for mug-in-cupholder and bowl-in-dishrack insertion tasks. We find our model NCF-v2, is capable of estimating extrinsic contacts in the real-world. Furthermore, our insertion policy with NCF-v2 outperforms policies without it, achieving 33% higher success and 1.36x faster execution on mug-in-cupholder, and 13% higher success and 1.27x faster execution on bowl-in-dishrack.

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Cited by 2 Pith papers

Reviewed papers in the Pith corpus that reference this work. Sorted by Pith novelty score.

  1. Geometric Reconstruction of Extrinsic Contact Trajectories using Tactile Sensing and Proprioception for Tool Manipulation

    cs.RO 2026-06 unverdicted novelty 6.0

    A geometric inference pipeline reconstructs tool-tip contact trajectories from grasp-level tactile sensing and proprioception under single-point contact, achieving 8.59 mm trajectory RMSE and 5.96 mm shape RMSE across...

  2. Semantic-Contact Fields for Category-Level Generalizable Tactile Tool Manipulation

    cs.RO 2026-02 unverdicted novelty 6.0

    SCFields fuses semantics and contact data in a sim-to-real pipeline to enable category-level generalization for tactile tool manipulation with diffusion policies.