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arxiv_ml 95% Match Research Paper Robotics researchers,ML engineers in robotics,Roboticists,Automation engineers 1 week ago

Grasp2Grasp: Vision-Based Dexterous Grasp Translation via Schr\"odinger Bridges

robotics › manipulation
📄 Abstract

Abstract: We propose a new approach to vision-based dexterous grasp translation, which aims to transfer grasp intent across robotic hands with differing morphologies. Given a visual observation of a source hand grasping an object, our goal is to synthesize a functionally equivalent grasp for a target hand without requiring paired demonstrations or hand-specific simulations. We frame this problem as a stochastic transport between grasp distributions using the Schr\"odinger Bridge formalism. Our method learns to map between source and target latent grasp spaces via score and flow matching, conditioned on visual observations. To guide this translation, we introduce physics-informed cost functions that encode alignment in base pose, contact maps, wrench space, and manipulability. Experiments across diverse hand-object pairs demonstrate our approach generates stable, physically grounded grasps with strong generalization. This work enables semantic grasp transfer for heterogeneous manipulators and bridges vision-based grasping with probabilistic generative modeling. Additional details at https://grasp2grasp.github.io/
Authors (3)
Tao Zhong
Jonah Buchanan
Christine Allen-Blanchette
Submitted
June 3, 2025
arXiv Category
cs.RO
arXiv PDF

Key Contributions

Grasp2Grasp proposes a novel approach for vision-based dexterous grasp translation between robotic hands with differing morphologies using Schrödinger Bridges. It learns to map between grasp latent spaces via score/flow matching, guided by physics-informed costs, enabling functional grasp transfer without paired demonstrations.

Business Value

Accelerates the deployment of robots in diverse environments by enabling easier adaptation of manipulation skills to different robotic hardware, reducing development time and cost.