High Precision 6-DoF Grasp Detection in Cluttered Scenes Based on Network Optimization and Pose Propagation

Wenjun Tang, Kai Tang,Bin Zi,Sen Qian,Dan Zhang

IEEE ROBOTICS AND AUTOMATION LETTERS(2024)

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摘要
High precision grasp pose detection is an essential but challenging task in robotic manipulation. Most of the current methods for grasp detection either highly rely on the geometric information of the objects or generate feasible grasp poses within restricted configurations. In this letter, a grasp pose detection framework is proposed that generates a rich set of 6-DoF grasp poses with high precision. Firstly, a novel feature fusion module with multi-radius cylinder sampling is designed to enhance local geometric representation. Secondly, an optimized grasp operation head is developed to further estimate grasp parameters. Finally, a grasp pose propagation algorithm is proposed, which effectively extends grasp poses from a restricted configuration to a larger configuration. Experiments on a large-scale benchmark, GraspNet-1Billion, show that the proposed method outperforms existing methods (+8.61 AP). The real-world experiments further demonstrate the effectiveness of the proposed method in cluttered environments.
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关键词
Deep learning in grasping and manipulation,computer vision for automation,local geometric representation,grasp pose propagation
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