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Autores principales: Cai, Zhuojiang, Zhang, Yiheng, Guo, Meitong, Wang, Mingdao, Wang, Yuwang
Formato: Preprint
Publicado: 2025
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Acceso en línea:https://arxiv.org/abs/2511.12202
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author Cai, Zhuojiang
Zhang, Yiheng
Guo, Meitong
Wang, Mingdao
Wang, Yuwang
author_facet Cai, Zhuojiang
Zhang, Yiheng
Guo, Meitong
Wang, Mingdao
Wang, Yuwang
contents Recently, multi-view diffusion-based 3D generation methods have gained significant attention. However, these methods often suffer from shape and texture misalignment across generated multi-view images, leading to low-quality 3D generation results, such as incomplete geometric details and textural ghosting. Some methods are mainly optimized for the frontal perspective and exhibit poor robustness to oblique perspective inputs. In this paper, to tackle the above challenges, we propose a high-quality image-to-3D approach, named LSS3D, with learnable spatial shifting to explicitly and effectively handle the multiview inconsistencies and non-frontal input view. Specifically, we assign learnable spatial shifting parameters to each view, and adjust each view towards a spatially consistent target, guided by the reconstructed mesh, resulting in high-quality 3D generation with more complete geometric details and clean textures. Besides, we include the input view as an extra constraint for the optimization, further enhancing robustness to non-frontal input angles, especially for elevated viewpoint inputs. We also provide a comprehensive quantitative evaluation pipeline that can contribute to the community in performance comparisons. Extensive experiments demonstrate that our method consistently achieves leading results in both geometric and texture evaluation metrics across more flexible input viewpoints.
format Preprint
id arxiv_https___arxiv_org_abs_2511_12202
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle LSS3D: Learnable Spatial Shifting for Consistent and High-Quality 3D Generation from Single-Image
Cai, Zhuojiang
Zhang, Yiheng
Guo, Meitong
Wang, Mingdao
Wang, Yuwang
Computer Vision and Pattern Recognition
Recently, multi-view diffusion-based 3D generation methods have gained significant attention. However, these methods often suffer from shape and texture misalignment across generated multi-view images, leading to low-quality 3D generation results, such as incomplete geometric details and textural ghosting. Some methods are mainly optimized for the frontal perspective and exhibit poor robustness to oblique perspective inputs. In this paper, to tackle the above challenges, we propose a high-quality image-to-3D approach, named LSS3D, with learnable spatial shifting to explicitly and effectively handle the multiview inconsistencies and non-frontal input view. Specifically, we assign learnable spatial shifting parameters to each view, and adjust each view towards a spatially consistent target, guided by the reconstructed mesh, resulting in high-quality 3D generation with more complete geometric details and clean textures. Besides, we include the input view as an extra constraint for the optimization, further enhancing robustness to non-frontal input angles, especially for elevated viewpoint inputs. We also provide a comprehensive quantitative evaluation pipeline that can contribute to the community in performance comparisons. Extensive experiments demonstrate that our method consistently achieves leading results in both geometric and texture evaluation metrics across more flexible input viewpoints.
title LSS3D: Learnable Spatial Shifting for Consistent and High-Quality 3D Generation from Single-Image
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2511.12202