Saved in:
Bibliografiske detaljer
Main Authors: Zhao, Fuqiang, Tsetserukou, Dzmitry, Liu, Qian
Format: Preprint
Udgivet: 2024
Fag:
Online adgang:https://arxiv.org/abs/2405.09310
Tags: Tilføj Tag
Ingen Tags, Vær først til at tagge denne postø!
_version_ 1866916248747507712
author Zhao, Fuqiang
Tsetserukou, Dzmitry
Liu, Qian
author_facet Zhao, Fuqiang
Tsetserukou, Dzmitry
Liu, Qian
contents One goal of dexterous robotic grasping is to allow robots to handle objects with the same level of flexibility and adaptability as humans. However, it remains a challenging task to generate an optimal grasping strategy for dexterous hands, especially when it comes to delicate manipulation and accurate adjustment the desired grasping poses for objects of varying shapes and sizes. In this paper, we propose a novel dexterous grasp generation scheme called GrainGrasp that provides fine-grained contact guidance for each fingertip. In particular, we employ a generative model to predict separate contact maps for each fingertip on the object point cloud, effectively capturing the specifics of finger-object interactions. In addition, we develop a new dexterous grasping optimization algorithm that solely relies on the point cloud as input, eliminating the necessity for complete mesh information of the object. By leveraging the contact maps of different fingertips, the proposed optimization algorithm can generate precise and determinable strategies for human-like object grasping. Experimental results confirm the efficiency of the proposed scheme.
format Preprint
id arxiv_https___arxiv_org_abs_2405_09310
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle GrainGrasp: Dexterous Grasp Generation with Fine-grained Contact Guidance
Zhao, Fuqiang
Tsetserukou, Dzmitry
Liu, Qian
Robotics
One goal of dexterous robotic grasping is to allow robots to handle objects with the same level of flexibility and adaptability as humans. However, it remains a challenging task to generate an optimal grasping strategy for dexterous hands, especially when it comes to delicate manipulation and accurate adjustment the desired grasping poses for objects of varying shapes and sizes. In this paper, we propose a novel dexterous grasp generation scheme called GrainGrasp that provides fine-grained contact guidance for each fingertip. In particular, we employ a generative model to predict separate contact maps for each fingertip on the object point cloud, effectively capturing the specifics of finger-object interactions. In addition, we develop a new dexterous grasping optimization algorithm that solely relies on the point cloud as input, eliminating the necessity for complete mesh information of the object. By leveraging the contact maps of different fingertips, the proposed optimization algorithm can generate precise and determinable strategies for human-like object grasping. Experimental results confirm the efficiency of the proposed scheme.
title GrainGrasp: Dexterous Grasp Generation with Fine-grained Contact Guidance
topic Robotics
url https://arxiv.org/abs/2405.09310