Task-Oriented 6-DoF Grasp Pose Detection in Clutters
An-Lan Wang, Nuo Chen, Kun-Yu Lin, Li Yuan-Ming, Wei-Shi Zheng

TL;DR
This paper introduces a new dataset and method for task-oriented 6-DoF grasp pose detection in cluttered environments, improving robotic grasping for multiple objects and tasks.
Contribution
It presents the first large-scale dataset for task-oriented 6-DoF grasping in clutter and proposes OSTG, a novel baseline method for this problem.
Findings
OSTG outperforms baselines on multiple metrics
Method achieves better perception of task-oriented grasp points
Real robot experiments validate improved grasp success
Abstract
In general, humans would grasp an object differently for different tasks, e.g., "grasping the handle of a knife to cut" vs. "grasping the blade to hand over". In the field of robotic grasp pose detection research, some existing works consider this task-oriented grasping and made some progress, but they are generally constrained by low-DoF gripper type or non-cluttered setting, which is not applicable for human assistance in real life. With an aim to get more general and practical grasp models, in this paper, we investigate the problem named Task-Oriented 6-DoF Grasp Pose Detection in Clutters (TO6DGC), which extends the task-oriented problem to a more general 6-DOF Grasp Pose Detection in Cluttered (multi-object) scenario. To this end, we construct a large-scale 6-DoF task-oriented grasping dataset, 6-DoF Task Grasp (6DTG), which features 4391 cluttered scenes with over 2 million 6-DoF…
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Taxonomy
TopicsRobot Manipulation and Learning
