CVAIOct 27, 2025

ReconViaGen: Towards Accurate Multi-view 3D Object Reconstruction via Generation

arXiv:2510.23306v116 citationsh-index: 11
Originality Incremental advance
AI Analysis

This addresses a key limitation in 3D reconstruction for applications like robotics and AR/VR, though it is an incremental improvement over existing generative methods.

The paper tackles the problem of incomplete 3D object reconstruction from multi-view images due to occlusions and sparse coverage by integrating generative priors, achieving accurate and consistent reconstructions in both global structure and local details.

Existing multi-view 3D object reconstruction methods heavily rely on sufficient overlap between input views, where occlusions and sparse coverage in practice frequently yield severe reconstruction incompleteness. Recent advancements in diffusion-based 3D generative techniques offer the potential to address these limitations by leveraging learned generative priors to hallucinate invisible parts of objects, thereby generating plausible 3D structures. However, the stochastic nature of the inference process limits the accuracy and reliability of generation results, preventing existing reconstruction frameworks from integrating such 3D generative priors. In this work, we comprehensively analyze the reasons why diffusion-based 3D generative methods fail to achieve high consistency, including (a) the insufficiency in constructing and leveraging cross-view connections when extracting multi-view image features as conditions, and (b) the poor controllability of iterative denoising during local detail generation, which easily leads to plausible but inconsistent fine geometric and texture details with inputs. Accordingly, we propose ReconViaGen to innovatively integrate reconstruction priors into the generative framework and devise several strategies that effectively address these issues. Extensive experiments demonstrate that our ReconViaGen can reconstruct complete and accurate 3D models consistent with input views in both global structure and local details.Project page: https://jiahao620.github.io/reconviagen.

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