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Main Authors: Li, Quanzhou, Wu, Zhonghua, Wang, Jingbo, Loy, Chen Change, Dai, Bo
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2509.22175
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author Li, Quanzhou
Wu, Zhonghua
Wang, Jingbo
Loy, Chen Change
Dai, Bo
author_facet Li, Quanzhou
Wu, Zhonghua
Wang, Jingbo
Loy, Chen Change
Dai, Bo
contents Learning to generate dual-hand grasps that respect object semantics is essential for robust hand-object interaction but remains largely underexplored due to dataset scarcity. Existing grasp datasets predominantly focus on single-hand interactions and contain only limited semantic part annotations. To address these challenges, we introduce a pipeline, SymOpt, that constructs a large-scale dual-hand grasp dataset by leveraging existing single-hand datasets and exploiting object and hand symmetries. Building on this, we propose a text-guided dual-hand grasp generator, DHAGrasp, that synthesizes Dual-Hand Affordance-aware Grasps for unseen objects. Our approach incorporates a novel dual-hand affordance representation and follows a two-stage design, which enables effective learning from a small set of segmented training objects while scaling to a much larger pool of unsegmented data. Extensive experiments demonstrate that our method produces diverse and semantically consistent grasps, outperforming strong baselines in both grasp quality and generalization to unseen objects. The project page is at https://quanzhou-li.github.io/DHAGrasp/.
format Preprint
id arxiv_https___arxiv_org_abs_2509_22175
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle DHAGrasp: Synthesizing Affordance-Aware Dual-Hand Grasps with Text Instructions
Li, Quanzhou
Wu, Zhonghua
Wang, Jingbo
Loy, Chen Change
Dai, Bo
Robotics
Learning to generate dual-hand grasps that respect object semantics is essential for robust hand-object interaction but remains largely underexplored due to dataset scarcity. Existing grasp datasets predominantly focus on single-hand interactions and contain only limited semantic part annotations. To address these challenges, we introduce a pipeline, SymOpt, that constructs a large-scale dual-hand grasp dataset by leveraging existing single-hand datasets and exploiting object and hand symmetries. Building on this, we propose a text-guided dual-hand grasp generator, DHAGrasp, that synthesizes Dual-Hand Affordance-aware Grasps for unseen objects. Our approach incorporates a novel dual-hand affordance representation and follows a two-stage design, which enables effective learning from a small set of segmented training objects while scaling to a much larger pool of unsegmented data. Extensive experiments demonstrate that our method produces diverse and semantically consistent grasps, outperforming strong baselines in both grasp quality and generalization to unseen objects. The project page is at https://quanzhou-li.github.io/DHAGrasp/.
title DHAGrasp: Synthesizing Affordance-Aware Dual-Hand Grasps with Text Instructions
topic Robotics
url https://arxiv.org/abs/2509.22175