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Autores principales: Li, Dong-Yang, Zhao, Wang, Chen, Yuxin, Hu, Wenbo, Guo, Meng-Hao, Zhang, Fang-Lue, Shan, Ying, Hu, Shi-Min
Formato: Preprint
Publicado: 2026
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Acceso en línea:https://arxiv.org/abs/2605.10922
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author Li, Dong-Yang
Zhao, Wang
Chen, Yuxin
Hu, Wenbo
Guo, Meng-Hao
Zhang, Fang-Lue
Shan, Ying
Hu, Shi-Min
author_facet Li, Dong-Yang
Zhao, Wang
Chen, Yuxin
Hu, Wenbo
Guo, Meng-Hao
Zhang, Fang-Lue
Shan, Ying
Hu, Shi-Min
contents Recent advances in 3D generative models have rapidly improved image-to-3D synthesis quality, enabling higher-resolution geometry and more realistic appearance. Yet fidelity, which measures pixel-level faithfulness of the generated 3D asset to the input image, still remains a central bottleneck. We argue this stems from an implicit 2D-3D correspondence issue: most 3D-native generators synthesize shape in canonical space and inject image cues via attention, leaving pixel-to-3D associations ambiguous. To tackle this issue, we draw inspiration from 3D reconstruction and propose Pixal3D, a pixel-aligned 3D generation paradigm for high-fidelity 3D asset creation from images. Instead of generating in a canonical pose, Pixal3D directly generates 3D in a pixel-aligned way, consistent with the input view. To enable this, we introduce a pixel back-projection conditioning scheme that explicitly lifts multi-scale image features into a 3D feature volume, establishing direct pixel-to-3D correspondence without ambiguity. We show that Pixal3D is not only scalable and capable of producing high-quality 3D assets, but also substantially improves fidelity, approaching the fidelity level of reconstruction. Furthermore, Pixal3D naturally extends to multi-view generation by aggregating back-projected feature volumes across views. Finally, we show pixel-aligned generation benefits scene synthesis, and present a modular pipeline that produces high-fidelity, object-separated 3D scenes from images. Pixal3D for the first time demonstrates 3D-native pixel-aligned generation at scale, and provides a new inspiring way towards high-fidelity 3D generation of object or scene from single or multi-view images. Project page: https://ldyang694.github.io/projects/pixal3d/
format Preprint
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institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Pixal3D: Pixel-Aligned 3D Generation from Images
Li, Dong-Yang
Zhao, Wang
Chen, Yuxin
Hu, Wenbo
Guo, Meng-Hao
Zhang, Fang-Lue
Shan, Ying
Hu, Shi-Min
Computer Vision and Pattern Recognition
Recent advances in 3D generative models have rapidly improved image-to-3D synthesis quality, enabling higher-resolution geometry and more realistic appearance. Yet fidelity, which measures pixel-level faithfulness of the generated 3D asset to the input image, still remains a central bottleneck. We argue this stems from an implicit 2D-3D correspondence issue: most 3D-native generators synthesize shape in canonical space and inject image cues via attention, leaving pixel-to-3D associations ambiguous. To tackle this issue, we draw inspiration from 3D reconstruction and propose Pixal3D, a pixel-aligned 3D generation paradigm for high-fidelity 3D asset creation from images. Instead of generating in a canonical pose, Pixal3D directly generates 3D in a pixel-aligned way, consistent with the input view. To enable this, we introduce a pixel back-projection conditioning scheme that explicitly lifts multi-scale image features into a 3D feature volume, establishing direct pixel-to-3D correspondence without ambiguity. We show that Pixal3D is not only scalable and capable of producing high-quality 3D assets, but also substantially improves fidelity, approaching the fidelity level of reconstruction. Furthermore, Pixal3D naturally extends to multi-view generation by aggregating back-projected feature volumes across views. Finally, we show pixel-aligned generation benefits scene synthesis, and present a modular pipeline that produces high-fidelity, object-separated 3D scenes from images. Pixal3D for the first time demonstrates 3D-native pixel-aligned generation at scale, and provides a new inspiring way towards high-fidelity 3D generation of object or scene from single or multi-view images. Project page: https://ldyang694.github.io/projects/pixal3d/
title Pixal3D: Pixel-Aligned 3D Generation from Images
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2605.10922