Improving hand-eye calibration for robotic grasping and manipulation

Technologies for Practical Robot Applications(2012)

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摘要
Hand-eye calibration is an important component of robotic systems that perform manipulation and grasping tasks. However, calibration is often an onerous process - there are many parameters that must be estimated for the sensors and manipulators, resulting in a high-dimensional nonlinear estimation problem. While it is easy to obtain an approximately correct hand-eye calibration, reducing the error further requires increasingly greater effort. We have developed a simple method for increasing the accuracy of an approximately correct hand-eye calibration. This method does not require any external instrumentation and is unique in that it applies a transformation to sensed object locations to produce commanded end-effector locations. This method has been applied to the robot for the DARPA ARM-S program, consisting of a 7 DOF arm and a sensor head mounted atop a 4 DOF neck. We describe the theory of our approach, our implementation, and experimental results.
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关键词
end effectors,mobile robots,nonlinear estimation,robot vision,darpa arm-s program,end-effector locations,error reduction,hand-eye calibration improvement,high-dimensional nonlinear estimation problem,robotic grasping,robotic manipulation,robotic systems,sensor head mounted,grasping,hand-eye calibration,manipulation,robot calibration,robot kinematics,kinematics,sensors,calibration
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