ED2IF2-Net: Learning Disentangled Deformed Implicit Fields and Enhanced Displacement Fields from Single Images Using Pyramid Vision Transformer
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Published:2023-06-27
Issue:13
Volume:13
Page:7577
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ISSN:2076-3417
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Container-title:Applied Sciences
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language:en
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Short-container-title:Applied Sciences
Author:
Zhu Xiaoqiang12, Yao Xinsheng1ORCID, Zhang Junjie1ORCID, Zhu Mengyao1, You Lihua2, Yang Xiaosong2, Zhang Jianjun2, Zhao He3, Zeng Dan1
Affiliation:
1. School of Communication and Information Engineering, Shanghai University, Shanghai 200444, China 2. National Center for Computer Animation, Bournemouth University, Bournemouth BH12 5BB, UK 3. R&D Department, Changzhou Micro-Intelligence Co., Ltd., Changzhou 213002, China
Abstract
There has emerged substantial research in addressing single-view 3D reconstruction and the majority of the state-of-the-art implicit methods employ CNNs as the backbone network. On the other hand, transformers have shown remarkable performance in many vision tasks. However, it is still unknown whether transformers are suitable for single-view implicit 3D reconstruction. In this paper, we propose the first end-to-end single-view 3D reconstruction network based on the Pyramid Vision Transformer (PVT), called ED2IF2-Net, which disentangles the reconstruction of an implicit field into the reconstruction of topological structures and the recovery of surface details to achieve high-fidelity shape reconstruction. ED2IF2-Net uses a Pyramid Vision Transformer encoder to extract multi-scale hierarchical local features and a global vector of the input single image, which are fed into three separate decoders. A coarse shape decoder reconstructs a coarse implicit field based on the global vector, a deformation decoder iteratively refines the coarse implicit field using the pixel-aligned local features to obtain a deformed implicit field through multiple implicit field deformation blocks (IFDBs), and a surface detail decoder predicts an enhanced displacement field using the local features with hybrid attention modules (HAMs). The final output is a fusion of the deformed implicit field and the enhanced displacement field, with four loss terms applied to reconstruct the coarse implicit field, structure details through a novel deformation loss, overall shape after fusion, and surface details via a Laplacian loss. The quantitative results obtained from the ShapeNet dataset validate the exceptional performance of ED2IF2-Net. Notably, ED2IF2-Net-L stands out as the top-performing variant, exhibiting the highest mean IoU, CD, EMD, ECD-3D, and ECD-2D scores, reaching impressive values of 61.1, 7.26, 2.51, 6.08, and 1.84, respectively. The extensive experimental evaluations consistently demonstrate the state-of-the-art capabilities of ED2IF2-Net in terms of reconstructing topological structures and recovering surface details, all while maintaining competitive inference time.
Subject
Fluid Flow and Transfer Processes,Computer Science Applications,Process Chemistry and Technology,General Engineering,Instrumentation,General Materials Science
Reference69 articles.
1. Zai, S., Zhao, M., Yiran, X., Yunpu, M., and Roger, W. (2021, January 22–25). 3D-RETR: End-to-End Single and Multi-View3D Reconstruction with Transformers. Proceedings of the British Machine Vision Conference (BMVC), Virtual. 2. Peng, K., Islam, R., Quarles, J., and Desai, K. (2022, January 18–24). Tmvnet: Using transformers for multi-view voxel-based 3d reconstruction. Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR), IEEE, New Orleans, LA, USA. 3. Yagubbayli, F., Tonioni, A., and Tombari, F. (2021). LegoFormer: Transformers for Block-by-Block Multi-view 3D Reconstruction. arXiv. 4. Tiong, L.C.O., Sigmund, D., and Teoh, A.B.J. (2022, January 4–8). 3D-C2FT: Coarse-to-fine Transformer for Multi-view 3D Reconstruction. Proceedings of the Asian Conference on Computer Vision (ACCV), AFCV, Macau, China. 5. Li, X., and Kuang, P. (2021, January 18–21). 3D-VRVT: 3D Voxel Reconstruction from A Single Image with Vision Transformer. Proceedings of the 2021 International Conference on Culture-Oriented Science & Technology (ICCST), IEEE, Beijing, China.
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