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Main Authors: Wang, Zhengyi, Wang, Yikai, Chen, Yifei, Xiang, Chendong, Chen, Shuo, Yu, Dajiang, Li, Chongxuan, Su, Hang, Zhu, Jun
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2403.05034
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author Wang, Zhengyi
Wang, Yikai
Chen, Yifei
Xiang, Chendong
Chen, Shuo
Yu, Dajiang
Li, Chongxuan
Su, Hang
Zhu, Jun
author_facet Wang, Zhengyi
Wang, Yikai
Chen, Yifei
Xiang, Chendong
Chen, Shuo
Yu, Dajiang
Li, Chongxuan
Su, Hang
Zhu, Jun
contents Feed-forward 3D generative models like the Large Reconstruction Model (LRM) have demonstrated exceptional generation speed. However, the transformer-based methods do not leverage the geometric priors of the triplane component in their architecture, often leading to sub-optimal quality given the limited size of 3D data and slow training. In this work, we present the Convolutional Reconstruction Model (CRM), a high-fidelity feed-forward single image-to-3D generative model. Recognizing the limitations posed by sparse 3D data, we highlight the necessity of integrating geometric priors into network design. CRM builds on the key observation that the visualization of triplane exhibits spatial correspondence of six orthographic images. First, it generates six orthographic view images from a single input image, then feeds these images into a convolutional U-Net, leveraging its strong pixel-level alignment capabilities and significant bandwidth to create a high-resolution triplane. CRM further employs Flexicubes as geometric representation, facilitating direct end-to-end optimization on textured meshes. Overall, our model delivers a high-fidelity textured mesh from an image in just 10 seconds, without any test-time optimization.
format Preprint
id arxiv_https___arxiv_org_abs_2403_05034
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle CRM: Single Image to 3D Textured Mesh with Convolutional Reconstruction Model
Wang, Zhengyi
Wang, Yikai
Chen, Yifei
Xiang, Chendong
Chen, Shuo
Yu, Dajiang
Li, Chongxuan
Su, Hang
Zhu, Jun
Computer Vision and Pattern Recognition
Machine Learning
Feed-forward 3D generative models like the Large Reconstruction Model (LRM) have demonstrated exceptional generation speed. However, the transformer-based methods do not leverage the geometric priors of the triplane component in their architecture, often leading to sub-optimal quality given the limited size of 3D data and slow training. In this work, we present the Convolutional Reconstruction Model (CRM), a high-fidelity feed-forward single image-to-3D generative model. Recognizing the limitations posed by sparse 3D data, we highlight the necessity of integrating geometric priors into network design. CRM builds on the key observation that the visualization of triplane exhibits spatial correspondence of six orthographic images. First, it generates six orthographic view images from a single input image, then feeds these images into a convolutional U-Net, leveraging its strong pixel-level alignment capabilities and significant bandwidth to create a high-resolution triplane. CRM further employs Flexicubes as geometric representation, facilitating direct end-to-end optimization on textured meshes. Overall, our model delivers a high-fidelity textured mesh from an image in just 10 seconds, without any test-time optimization.
title CRM: Single Image to 3D Textured Mesh with Convolutional Reconstruction Model
topic Computer Vision and Pattern Recognition
Machine Learning
url https://arxiv.org/abs/2403.05034