Center-of-Mass-based Robust Grasp Planning for Unknown Objects Using Tactile-Visual Sensors
2020 IEEE International Conference on Robotics and Automation (ICRA)(2020)
摘要
An unstable grasp pose can lead to slip, thus an unstable grasp pose can be predicted by slip detection. A regrasp is required afterwards to correct the grasp pose in order to finish the task. In this work, we propose a novel regrasp planner with multi-sensor modules to plan grasp adjustments with the feedback from a slip detector. Then a regrasp planner is trained to estimate the location of center of mass, which helps robots find an optimal grasp pose. The dataset in this work consists of 1 025 slip experiments and 1 347 regrasps collected by one pair of tactile sensors, an RGB-D camera and one Franka Emika robot arm equipped with joint force/torque sensors. We show that our algorithm can successfully detect and classify the slip for 5 unknown test objects with an accuracy of 76.88% and a regrasp planner increases the grasp success rate by 31.0% compared to the state-of-the-art vision-based grasping algorithm.
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关键词
Franka Emika robot arm,tactile sensors,multisensor modules,regrasp planner,slip detection,visual sensors,center-of-mass-based robust grasp planning
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