Markerless visual servoing on unknown objects for humanoid robot platforms

2018 IEEE International Conference on Robotics and Automation (ICRA)(2017)

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摘要
To precisely reach for an object with a humanoid robot, it is of central importance to have good knowledge of both end-effector, object pose and shape. In this work we propose a framework for markerless visual servoing on unknown objects, which is divided in four main parts: I) a least-squares minimization problem is formulated to find the volume of the object graspable by the robot's hand using its stereo vision; II) a recursive Bayesian filtering technique, based on Sequential Monte Carlo (SMC) filtering, estimates the 6D pose (position and orientation) of the robot's end-effector without the use of markers; III) a nonlinear constrained optimization problem is formulated to compute the desired graspable pose about the object; IV) an image-based visual servo control commands the robot's end-effector toward the desired pose. We demonstrate effectiveness and robustness of our approach with extensive experiments on the iCub humanoid robot platform, achieving real-time computation, smooth trajectories and sub-pixel precisions.
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关键词
least squares minimization problem,stereo vision,image-based visual servo control,nonlinear constrained optimization problem,Sequential Monte Carlo filtering,recursive Bayesian filtering technique,markerless visual servoing,iCub humanoid robot platform
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