Contact Map Transfer with Conditional Diffusion Model for Generalizable Dexterous Grasp Generation
–Neural Information Processing Systems
Dexterous grasp generation is a fundamental challenge in robotics, requiring both grasp stability and adaptability across diverse objects and tasks. Analytical methods ensure stable grasps but are inefficient and lack task adaptability, while generative approaches improve efficiency and task integration but generalize poorly to unseen objects and tasks due to data limitations. In this paper, we propose a transfer-based framework for dexterous grasp generation, leveraging a conditional diffusion model to transfer high-quality grasps from shape templates to novel objects within the same category. Specifically, we reformulate the grasp transfer problem as the generation of an object contact map, incorporating object shape similarity and task specifications into the diffusion process. To handle complex shape variations, we introduce a dual mapping mechanism, capturing intricate geometric relationship between shape templates and novel objects.
Neural Information Processing Systems
Jun-12-2026, 19:00:56 GMT
- Technology:
- Information Technology > Artificial Intelligence
- Robots (0.62)
- Machine Learning (0.45)
- Information Technology > Artificial Intelligence