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arxiv: 2303.00935 · v4 · pith:4WDWR6EV · submitted 2023-03-02 · cs.RO · cs.LG

Learning to Detect Slip through Tactile Estimation of the Contact Force Field and its Entropy

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classification cs.RO cs.LG
keywords sliptactiledetectionalgorithmapproachclassificationdata-drivendetect
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Detection of slip during object grasping and manipulation plays a vital role in object handling. Existing solutions primarily rely on visual information to devise a strategy for grasping. However, for robotic systems to attain a level of proficiency comparable to humans, especially in consistently handling and manipulating unfamiliar objects, integrating artificial tactile sensing is increasingly essential. We introduce a novel physics-informed, data-driven approach to detect slip continuously in real time. We employ the GelSight Mini, an optical tactile sensor, attached to custom-designed grippers to gather tactile data. Our work leverages the inhomogeneity of tactile sensor readings during slip events to develop distinctive features and formulates slip detection as a classification problem. To evaluate our approach, we test multiple data-driven models on 10 common objects under different loading conditions, textures, and materials. Our results show that the best classification algorithm achieves a high average accuracy of 95.61%. We further illustrate the practical application of our research in dynamic robotic manipulation tasks, where our real-time slip detection and prevention algorithm is implemented.

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Cited by 1 Pith paper

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  1. Blind Dexterous Grasping via Real2Sim2Real Tactile Policy Learning

    cs.RO 2026-06 unverdicted novelty 6.0

    Real2Sim tactile calibration, layout-aware encoder pretraining, and diffusion policy aggregation from object-specific RL experts enable 27% real-world success in blind grasping on a LEAP Hand for 10 seen and 10 unseen...