Learning Human-Like Functional Grasping for Multifinger Hands From Few Demonstrations

Jun 28, 2024·
Wei Wei
,
Peng Wang
Sizhe Wang
Sizhe Wang
,
Yongkang Luo
,
Wanyi Li
,
Daheng Li
,
Yayu Huang
,
Haonan Duan
· 0 min read
Abstract
This article investigates the challenge of enabling multi-finger hands to perform human-like functional grasping for various intentions. However, accomplishing functional grasping in real robot hands present many challenges, including handling generalization ability for kinematically diverse robot hands, generating intention-conditioned grasps for a large variety of objects, and incomplete perception from a single-view camera. In this work, we first propose a six-step functional grasp synthesis algorithm based on fine-grained contact modeling. With the fine-grained contact-based optimization and learned dense shape correspondence, the algorithm is adaptable to various objects of the same category and a wide range of multi-finger hands using few demonstrations. Secondly, over 10K functional grasps are synthesized to train our neural network, named DexFG-Net, which generates intention-conditioned grasps based on reconstructed object. Extensive experiments in the simulation and physical grasps indicate that the grasp synthesis algorithm can produce human-like functional grasp with robust stability and functionality, and the DexFG-Net can generate plausible and human-like intention-conditioned grasping postures for anthropomorphic hands. Project page and video demonstration is available at https://v-wewei.github.io/sr_dexgrasp.
Type
Publication
IEEE Transactions on Robotics