Multi-fingered Tactile Servoing for Grasping Adjustment under Partial Observation

2022 IEEE/RSJ International Conference on Intelligent Robots and Systems (IROS)(2022)

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摘要
Grasping of objects using multi-fingered robotic hands often fails due to small uncertainties in the hand motion control and the object's pose estimation. To tackle this problem, we propose a grasping adjustment strategy based on tactile seroving. Our technique employs feedback from a sensorized multi-fingered robotic hand to collaboratively servo the fingers and palm to achieve the desired grasp. We demonstrate the performance of our method through simulation and physical experiments by having a robot grasp different objects under conditions of variable uncertainty. The results show that our approach achieved a higher success rate and tolerated greater uncertainty than an open-looped grasp.
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关键词
desired grasp,grasping adjustment strategy,greater uncertainty,hand motion control,multifingered tactile servoing,object,open-looped grasp,palm,partial observation,robotic hands,sensorized multifingered robotic hand,tactile seroving,variable uncertainty
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