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