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Main Authors: Li, Xuelu, Wang, Zhaonan, Wang, Xiaogang, Wu, Lei, Li, Manyi, Tu, Changhe
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2602.22666
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author Li, Xuelu
Wang, Zhaonan
Wang, Xiaogang
Wu, Lei
Li, Manyi
Tu, Changhe
author_facet Li, Xuelu
Wang, Zhaonan
Wang, Xiaogang
Wu, Lei
Li, Manyi
Tu, Changhe
contents Reconstructing articulated objects into high-fidelity digital twins is crucial for applications such as robotic manipulation and interactive simulation. Recent self-supervised methods using differentiable rendering frameworks like 3D Gaussian Splatting remain highly sensitive to the initial part segmentation. Their reliance on heuristic clustering or pre-trained models often causes optimization to converge to local minima, especially for complex multi-part objects. To address these limitations, we propose ArtPro, a novel self-supervised framework that introduces adaptive integration of mobility proposals. Our approach begins with an over-segmentation initialization guided by geometry features and motion priors, generating part proposals with plausible motion hypotheses. During optimization, we dynamically merge these proposals by analyzing motion consistency among spatial neighbors, while a collision-aware motion pruning mechanism prevents erroneous kinematic estimation. Extensive experiments on both synthetic and real-world objects demonstrate that ArtPro achieves robust reconstruction of complex multi-part objects, significantly outperforming existing methods in accuracy and stability.
format Preprint
id arxiv_https___arxiv_org_abs_2602_22666
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle ArtPro: Self-Supervised Articulated Object Reconstruction with Adaptive Integration of Mobility Proposals
Li, Xuelu
Wang, Zhaonan
Wang, Xiaogang
Wu, Lei
Li, Manyi
Tu, Changhe
Computer Vision and Pattern Recognition
Reconstructing articulated objects into high-fidelity digital twins is crucial for applications such as robotic manipulation and interactive simulation. Recent self-supervised methods using differentiable rendering frameworks like 3D Gaussian Splatting remain highly sensitive to the initial part segmentation. Their reliance on heuristic clustering or pre-trained models often causes optimization to converge to local minima, especially for complex multi-part objects. To address these limitations, we propose ArtPro, a novel self-supervised framework that introduces adaptive integration of mobility proposals. Our approach begins with an over-segmentation initialization guided by geometry features and motion priors, generating part proposals with plausible motion hypotheses. During optimization, we dynamically merge these proposals by analyzing motion consistency among spatial neighbors, while a collision-aware motion pruning mechanism prevents erroneous kinematic estimation. Extensive experiments on both synthetic and real-world objects demonstrate that ArtPro achieves robust reconstruction of complex multi-part objects, significantly outperforming existing methods in accuracy and stability.
title ArtPro: Self-Supervised Articulated Object Reconstruction with Adaptive Integration of Mobility Proposals
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2602.22666