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arxiv: 2209.06019 · v1 · pith:SNPBFGTT · submitted 2022-09-13 · cs.RO

Proactive slip control by learned slip model and trajectory adaptation

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classification cs.RO
keywords slipcontrolforcegrippingobjectrobotadaptationapproach
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This paper presents a novel control approach to dealing with object slip during robotic manipulative movements. Slip is a major cause of failure in many robotic grasping and manipulation tasks. Existing works increase grip force to avoid/control slip. However, this may not be feasible when (i) the robot cannot increase the gripping force -- the max gripping force is already applied or (ii) increased force damages the grasped object, such as soft fruit. Moreover, the robot fixes the gripping force when it forms a stable grasp on the surface of an object, and changing the gripping force during real-time manipulation may not be an effective control policy. We propose a novel control approach to slip avoidance including a learned action-conditioned slip predictor and a constrained optimiser avoiding a predicted slip given a desired robot action. We show the effectiveness of the proposed trajectory adaptation method with receding horizon controller with a series of real-robot test cases. Our experimental results show our proposed data-driven predictive controller can control slip for objects unseen in training.

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

  1. Multi-Modal World Model for Physical Robot Interactions: Simultaneous Visual and Tactile Predictions for Enhanced Accuracy

    cs.RO 2023-04 unverdicted novelty 5.0

    Visuo-tactile world models improve prediction accuracy in physically ambiguous robot-pushing scenarios, demonstrated on two new datasets with a magnetic tactile sensor.