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Main Authors: Pham, Phu, Mathur, Aradhya N., Sharma, Ojaswa, Bera, Aniket
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2409.06620
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author Pham, Phu
Mathur, Aradhya N.
Sharma, Ojaswa
Bera, Aniket
author_facet Pham, Phu
Mathur, Aradhya N.
Sharma, Ojaswa
Bera, Aniket
contents The field of text-to-3D content generation has made significant progress in generating realistic 3D objects, with existing methodologies like Score Distillation Sampling (SDS) offering promising guidance. However, these methods often encounter the "Janus" problem-multi-face ambiguities due to imprecise guidance. Additionally, while recent advancements in 3D gaussian splitting have shown its efficacy in representing 3D volumes, optimization of this representation remains largely unexplored. This paper introduces a unified framework for text-to-3D content generation that addresses these critical gaps. Our approach utilizes multi-view guidance to iteratively form the structure of the 3D model, progressively enhancing detail and accuracy. We also introduce a novel densification algorithm that aligns gaussians close to the surface, optimizing the structural integrity and fidelity of the generated models. Extensive experiments validate our approach, demonstrating that it produces high-quality visual outputs with minimal time cost. Notably, our method achieves high-quality results within half an hour of training, offering a substantial efficiency gain over most existing methods, which require hours of training time to achieve comparable results.
format Preprint
id arxiv_https___arxiv_org_abs_2409_06620
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle MVGaussian: High-Fidelity text-to-3D Content Generation with Multi-View Guidance and Surface Densification
Pham, Phu
Mathur, Aradhya N.
Sharma, Ojaswa
Bera, Aniket
Computer Vision and Pattern Recognition
Graphics
The field of text-to-3D content generation has made significant progress in generating realistic 3D objects, with existing methodologies like Score Distillation Sampling (SDS) offering promising guidance. However, these methods often encounter the "Janus" problem-multi-face ambiguities due to imprecise guidance. Additionally, while recent advancements in 3D gaussian splitting have shown its efficacy in representing 3D volumes, optimization of this representation remains largely unexplored. This paper introduces a unified framework for text-to-3D content generation that addresses these critical gaps. Our approach utilizes multi-view guidance to iteratively form the structure of the 3D model, progressively enhancing detail and accuracy. We also introduce a novel densification algorithm that aligns gaussians close to the surface, optimizing the structural integrity and fidelity of the generated models. Extensive experiments validate our approach, demonstrating that it produces high-quality visual outputs with minimal time cost. Notably, our method achieves high-quality results within half an hour of training, offering a substantial efficiency gain over most existing methods, which require hours of training time to achieve comparable results.
title MVGaussian: High-Fidelity text-to-3D Content Generation with Multi-View Guidance and Surface Densification
topic Computer Vision and Pattern Recognition
Graphics
url https://arxiv.org/abs/2409.06620