SynManDex: Synthesizing Human-like Dexterous Grasps from Synthetic Human Pre-Grasps
Abstract
Human hand-object interactions encode functional intent, but direct transfer to robotic hands often fails under morphology, contact, and reachability constraints. We present SynManDex, a synthetic pipeline that uses generated human pre-grasps as affordance-aware proposals and resolves the final contacts with robot-native optimization. SynManDex samples object-conditioned digital human pre-grasps, retargets them to dexterous robotic hand poses, optimizes force-closure contacts on the target embod...
Description / Details
Human hand-object interactions encode functional intent, but direct transfer to robotic hands often fails under morphology, contact, and reachability constraints. We present SynManDex, a synthetic pipeline that uses generated human pre-grasps as affordance-aware proposals and resolves the final contacts with robot-native optimization. SynManDex samples object-conditioned digital human pre-grasps, retargets them to dexterous robotic hand poses, optimizes force-closure contacts on the target embodiment, and admits trajectories that pass checks from each step. The resulting keyframes support both grasp-and-lift demonstrations and various prehensile manipulation tasks such as tea pouring, photo taking, and flute playing, designed via VLM agents. As a result, SynManDex combines high grasp quality (86.4% grasp stability) with 4.67/5 human-likeness (93.4%). It achieves 80.7% successes in simulation and 25/30 (83.3%) real-robot successes when applied to a 36-DOF bimanual dexterous robotic platform.
Source: arXiv:2606.09798v1 - http://arxiv.org/abs/2606.09798v1 PDF: https://arxiv.org/pdf/2606.09798v1 Original Link: http://arxiv.org/abs/2606.09798v1
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Jun 9, 2026
Robotics
Robotics
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