A self-supervised learning-based 6-DOF grasp planning method for manipulator
Gang Peng, Zhenyu Ren, Hao Wang, Xinde Li

TL;DR
This paper presents a self-supervised learning approach for 6-DOF robotic grasp planning that automates data collection, labeling, and training, significantly improving grasp success rates in unstructured environments.
Contribution
It introduces an automated data acquisition and labeling framework for 6-DOF grasp planning using self-supervised learning, reducing manual effort and enhancing grasp success.
Findings
High-quality grasp data obtained efficiently
Effective grasp-quality classification model trained
Increased success rate in real-world grasp experiments
Abstract
To realize a robust robotic grasping system for unknown objects in an unstructured environment, large amounts of grasp data and 3D model data for the object are required, the sizes of which directly affect the rate of successful grasps. To reduce the time cost of data acquisition and labeling and increase the rate of successful grasps, we developed a self-supervised learning mechanism to control grasp tasks performed by manipulators. First, a manipulator automatically collects the point cloud for the objects from multiple perspectives to increase the efficiency of data acquisition. The complete point cloud for the objects is obtained by utilizing the hand-eye vision of the manipulator, and the TSDF algorithm. Then, the point cloud data for the objects is used to generate a series of six-degrees-of-freedom grasp poses, and the force-closure decision algorithm is used to add the grasp…
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Taxonomy
TopicsRobot Manipulation and Learning
