Sweet Pepper Pose Detection And Grasping For Automated Crop Harvesting

2016 IEEE International Conference on Robotics and Automation (ICRA)(2016)

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摘要
This paper presents a method for estimating the 6DOF pose of sweet-pepper (capsicum) crops for autonomous harvesting via a robotic manipulator. The method uses the Kinect Fusion algorithm to robustly fuse RGB-D data from an eye-in-hand camera combined with a colour segmentation and clustering step to extract an accurate representation of the crop. The 6DOF pose of the sweet peppers is then estimated via a nonlinear least squares optimisation by fitting a superellipsoid to the segmented sweet pepper. The performance of the method is demonstrated on a real 6DOF manipulator with a custom gripper. The method is shown to estimate the 6DOF pose successfully enabling the manipulator to grasp sweet peppers for a range of different orientations. The results obtained improve largely on the performance of grasping when compared to a naive approach, which does not estimate the orientation of the crop.
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关键词
automated crop harvesting,6DOF pose estimation,sweet-pepper crops,autonomous harvesting,robotic manipulator,Kinect fusion algorithm,RGB-D data fusion,eye-in-hand camera,colour segmentation,nonlinear least squares optimisation,6DOF manipulator,crop orientation,sweet pepper pose detection
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