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Main Authors: Wang, Ruizhe, Hua, Chunliang, Shingys, Tomakayev, Niu, Mengyuan, Yang, Qingxin, Gao, Lizhong, Zheng, Yi, Yang, Junyan, Wang, Qiao
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2407.15435
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author Wang, Ruizhe
Hua, Chunliang
Shingys, Tomakayev
Niu, Mengyuan
Yang, Qingxin
Gao, Lizhong
Zheng, Yi
Yang, Junyan
Wang, Qiao
author_facet Wang, Ruizhe
Hua, Chunliang
Shingys, Tomakayev
Niu, Mengyuan
Yang, Qingxin
Gao, Lizhong
Zheng, Yi
Yang, Junyan
Wang, Qiao
contents The photorealistic reconstruction and rendering of architectural scenes have extensive applications in industries such as film, games, and transportation. It also plays an important role in urban planning, architectural design, and the city's promotion, especially in protecting historical and cultural relics. The 3D Gaussian Splatting, due to better performance over NeRF, has become a mainstream technology in 3D reconstruction. Its only input is a set of images but it relies heavily on geometric parameters computed by the SfM process. At the same time, there is an existing abundance of raw 3D models, that could inform the structural perception of certain buildings but cannot be applied. In this paper, we propose a straightforward method to harness these raw 3D models to guide 3D Gaussians in capturing the basic shape of the building and improve the visual quality of textures and details when photos are captured non-systematically. This exploration opens up new possibilities for improving the effectiveness of 3D reconstruction techniques in the field of architectural design.
format Preprint
id arxiv_https___arxiv_org_abs_2407_15435
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Enhancement of 3D Gaussian Splatting using Raw Mesh for Photorealistic Recreation of Architectures
Wang, Ruizhe
Hua, Chunliang
Shingys, Tomakayev
Niu, Mengyuan
Yang, Qingxin
Gao, Lizhong
Zheng, Yi
Yang, Junyan
Wang, Qiao
Computer Vision and Pattern Recognition
The photorealistic reconstruction and rendering of architectural scenes have extensive applications in industries such as film, games, and transportation. It also plays an important role in urban planning, architectural design, and the city's promotion, especially in protecting historical and cultural relics. The 3D Gaussian Splatting, due to better performance over NeRF, has become a mainstream technology in 3D reconstruction. Its only input is a set of images but it relies heavily on geometric parameters computed by the SfM process. At the same time, there is an existing abundance of raw 3D models, that could inform the structural perception of certain buildings but cannot be applied. In this paper, we propose a straightforward method to harness these raw 3D models to guide 3D Gaussians in capturing the basic shape of the building and improve the visual quality of textures and details when photos are captured non-systematically. This exploration opens up new possibilities for improving the effectiveness of 3D reconstruction techniques in the field of architectural design.
title Enhancement of 3D Gaussian Splatting using Raw Mesh for Photorealistic Recreation of Architectures
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2407.15435