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NeuGrasp: Generalizable Neural Surface Reconstruction with Background Priors for Material-Agnostic Object Grasp Detection

5 March 2025
Qingyu Fan
Yinghao Cai
C. Li
Wenzhe He
Xudong Zheng
Tao Lu
Bin Liang
Shuo Wang
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Abstract

Robotic grasping in scenes with transparent and specular objects presents great challenges for methods relying on accurate depth information. In this paper, we introduce NeuGrasp, a neural surface reconstruction method that leverages background priors for material-agnostic grasp detection. NeuGrasp integrates transformers and global prior volumes to aggregate multi-view features with spatial encoding, enabling robust surface reconstruction in narrow and sparse viewing conditions. By focusing on foreground objects through residual feature enhancement and refining spatial perception with an occupancy-prior volume, NeuGrasp excels in handling objects with transparent and specular surfaces. Extensive experiments in both simulated and real-world scenarios show that NeuGrasp outperforms state-of-the-art methods in grasping while maintaining comparable reconstruction quality. More details are available atthis https URL.

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@article{fan2025_2503.03511,
  title={ NeuGrasp: Generalizable Neural Surface Reconstruction with Background Priors for Material-Agnostic Object Grasp Detection },
  author={ Qingyu Fan and Yinghao Cai and Chao Li and Wenzhe He and Xudong Zheng and Tao Lu and Bin Liang and Shuo Wang },
  journal={arXiv preprint arXiv:2503.03511},
  year={ 2025 }
}
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