papers AI Learner
The Github is limit! Click to go to the new site.

Planning Grasps for Assembly Tasks

2019-03-05
Weiwei Wan, Kensuke Harada, Fumio Kanehiro

Abstract

This paper develops model-based grasp planning algorithms for assembly tasks. It focuses on industrial end-effectors like grippers and suction cups, and plans grasp configurations considering CAD models of target objects. The developed algorithms are able to stably plan a large number of high-quality grasps, with high precision and little dependency on the quality of CAD models. The undergoing core technique is superimposed segmentation, which pre-processes a mesh model by peeling it into facets. The algorithms use superimposed segments to locate contact points and parallel facets, and synthesize grasp poses for popular industrial end-effectors. Several tunable parameters were prepared to adapt the algorithms to meet various requirements. The experimental section demonstrates the advantages of the algorithms by analyzing the cost and stability of the algorithms, the precision of the planned grasps, and the tunable parameters with both simulations and real-world experiments. Also, some examples of robotic assembly systems using the proposed algorithms are presented to demonstrate the efficacy.

Abstract (translated by Google)
URL

http://arxiv.org/abs/1903.01631

PDF

http://arxiv.org/pdf/1903.01631


Comments

Content