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GraspGen: A Diffusion-based Framework for 6-DOF Grasping with On-Generator Training

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arxiv 2507.13097 v1 pith:JNACIHU5 submitted 2025-07-17 cs.RO cs.AI

GraspGen: A Diffusion-based Framework for 6-DOF Grasping with On-Generator Training

classification cs.RO cs.AI
keywords graspgengraspingacrossdifferentdiscriminatorframeworkgenerationgrasp
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Grasping is a fundamental robot skill, yet despite significant research advancements, learning-based 6-DOF grasping approaches are still not turnkey and struggle to generalize across different embodiments and in-the-wild settings. We build upon the recent success on modeling the object-centric grasp generation process as an iterative diffusion process. Our proposed framework, GraspGen, consists of a DiffusionTransformer architecture that enhances grasp generation, paired with an efficient discriminator to score and filter sampled grasps. We introduce a novel and performant on-generator training recipe for the discriminator. To scale GraspGen to both objects and grippers, we release a new simulated dataset consisting of over 53 million grasps. We demonstrate that GraspGen outperforms prior methods in simulations with singulated objects across different grippers, achieves state-of-the-art performance on the FetchBench grasping benchmark, and performs well on a real robot with noisy visual observations.

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Cited by 10 Pith papers

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