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Main Authors: Bukhari, S. Talha, Agrawal, Kaivalya, Kingston, Zachary, Bera, Aniket
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2508.17482
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author Bukhari, S. Talha
Agrawal, Kaivalya
Kingston, Zachary
Bera, Aniket
author_facet Bukhari, S. Talha
Agrawal, Kaivalya
Kingston, Zachary
Bera, Aniket
contents Grasp synthesis is a fundamental task in robotic manipulation which usually has multiple feasible solutions. Multimodal grasp synthesis seeks to generate diverse sets of stable grasps conditioned on object geometry, making the robust learning of geometric features crucial for success. To address this challenge, we propose a framework for learning multimodal grasp distributions that leverages variational shape inference to enhance robustness against shape noise and measurement sparsity. Our approach first trains a variational autoencoder for shape inference using implicit neural representations, and then uses these learned geometric features to guide a diffusion model for grasp synthesis on the SE(3) manifold. Additionally, we introduce a test-time grasp optimization technique that can be integrated as a plugin to further enhance grasping performance. Experimental results demonstrate that our shape inference for grasp synthesis formulation outperforms state-of-the-art multimodal grasp synthesis methods on the ACRONYM dataset by 6.3%, while demonstrating robustness to deterioration in point cloud density compared to other approaches. Furthermore, our trained model achieves zero-shot transfer to real-world manipulation of household objects, generating 34% more successful grasps than baselines despite measurement noise and point cloud calibration errors.
format Preprint
id arxiv_https___arxiv_org_abs_2508_17482
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Variational Shape Inference for Grasp Diffusion on SE(3)
Bukhari, S. Talha
Agrawal, Kaivalya
Kingston, Zachary
Bera, Aniket
Robotics
Grasp synthesis is a fundamental task in robotic manipulation which usually has multiple feasible solutions. Multimodal grasp synthesis seeks to generate diverse sets of stable grasps conditioned on object geometry, making the robust learning of geometric features crucial for success. To address this challenge, we propose a framework for learning multimodal grasp distributions that leverages variational shape inference to enhance robustness against shape noise and measurement sparsity. Our approach first trains a variational autoencoder for shape inference using implicit neural representations, and then uses these learned geometric features to guide a diffusion model for grasp synthesis on the SE(3) manifold. Additionally, we introduce a test-time grasp optimization technique that can be integrated as a plugin to further enhance grasping performance. Experimental results demonstrate that our shape inference for grasp synthesis formulation outperforms state-of-the-art multimodal grasp synthesis methods on the ACRONYM dataset by 6.3%, while demonstrating robustness to deterioration in point cloud density compared to other approaches. Furthermore, our trained model achieves zero-shot transfer to real-world manipulation of household objects, generating 34% more successful grasps than baselines despite measurement noise and point cloud calibration errors.
title Variational Shape Inference for Grasp Diffusion on SE(3)
topic Robotics
url https://arxiv.org/abs/2508.17482