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Autores principales: Wu, Xianzu, Ai, Zhenxin, Yang, Harry, Lim, Ser-Nam, Liu, Jun, Wang, Huan
Formato: Preprint
Publicado: 2025
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Acceso en línea:https://arxiv.org/abs/2503.12553
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author Wu, Xianzu
Ai, Zhenxin
Yang, Harry
Lim, Ser-Nam
Liu, Jun
Wang, Huan
author_facet Wu, Xianzu
Ai, Zhenxin
Yang, Harry
Lim, Ser-Nam
Liu, Jun
Wang, Huan
contents Recent advances in single-view 3D scene reconstruction have highlighted the challenges in capturing fine geometric details and ensuring structural consistency, particularly in high-fidelity outdoor scene modeling. This paper presents Niagara, a new single-view 3D scene reconstruction framework that can faithfully reconstruct challenging outdoor scenes from a single input image for the first time. Our approach integrates monocular depth and normal estimation as input, which substantially improves its ability to capture fine details, mitigating common issues like geometric detail loss and deformation. Additionally, we introduce a geometric affine field (GAF) and 3D self-attention as geometry-constraint, which combines the structural properties of explicit geometry with the adaptability of implicit feature fields, striking a balance between efficient rendering and high-fidelity reconstruction. Our framework finally proposes a specialized encoder-decoder architecture, where a depth-based 3D Gaussian decoder is proposed to predict 3D Gaussian parameters, which can be used for novel view synthesis. Extensive results and analyses suggest that our Niagara surpasses prior SoTA approaches such as Flash3D in both single-view and dual-view settings, significantly enhancing the geometric accuracy and visual fidelity, especially in outdoor scenes.
format Preprint
id arxiv_https___arxiv_org_abs_2503_12553
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Niagara: Normal-Integrated Geometric Affine Field for Scene Reconstruction from a Single View
Wu, Xianzu
Ai, Zhenxin
Yang, Harry
Lim, Ser-Nam
Liu, Jun
Wang, Huan
Graphics
Computer Vision and Pattern Recognition
Recent advances in single-view 3D scene reconstruction have highlighted the challenges in capturing fine geometric details and ensuring structural consistency, particularly in high-fidelity outdoor scene modeling. This paper presents Niagara, a new single-view 3D scene reconstruction framework that can faithfully reconstruct challenging outdoor scenes from a single input image for the first time. Our approach integrates monocular depth and normal estimation as input, which substantially improves its ability to capture fine details, mitigating common issues like geometric detail loss and deformation. Additionally, we introduce a geometric affine field (GAF) and 3D self-attention as geometry-constraint, which combines the structural properties of explicit geometry with the adaptability of implicit feature fields, striking a balance between efficient rendering and high-fidelity reconstruction. Our framework finally proposes a specialized encoder-decoder architecture, where a depth-based 3D Gaussian decoder is proposed to predict 3D Gaussian parameters, which can be used for novel view synthesis. Extensive results and analyses suggest that our Niagara surpasses prior SoTA approaches such as Flash3D in both single-view and dual-view settings, significantly enhancing the geometric accuracy and visual fidelity, especially in outdoor scenes.
title Niagara: Normal-Integrated Geometric Affine Field for Scene Reconstruction from a Single View
topic Graphics
Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2503.12553