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Autori principali: Wang, Hongsheng, Yao, Nanjie, Zhou, Xinrui, Zhang, Shengyu, Xu, Huahao, Wu, Fei, Lin, Feng
Natura: Preprint
Pubblicazione: 2024
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Accesso online:https://arxiv.org/abs/2405.12505
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author Wang, Hongsheng
Yao, Nanjie
Zhou, Xinrui
Zhang, Shengyu
Xu, Huahao
Wu, Fei
Lin, Feng
author_facet Wang, Hongsheng
Yao, Nanjie
Zhou, Xinrui
Zhang, Shengyu
Xu, Huahao
Wu, Fei
Lin, Feng
contents In the animation industry, 3D modelers typically rely on front and back non-overlapped concept designs to guide the 3D modeling of anime characters. However, there is currently a lack of automated approaches for generating anime characters directly from these 2D designs. In light of this, we explore a novel task of reconstructing anime characters from non-overlapped views. This presents two main challenges: existing multi-view approaches cannot be directly applied due to the absence of overlapping regions, and there is a scarcity of full-body anime character data and standard benchmarks. To bridge the gap, we present Non-Overlapped Views for 3D \textbf{A}nime Character Reconstruction (NOVA-3D), a new framework that implements a method for view-aware feature fusion to learn 3D-consistent features effectively and synthesizes full-body anime characters from non-overlapped front and back views directly. To facilitate this line of research, we collected the NOVA-Human dataset, which comprises multi-view images and accurate camera parameters for 3D anime characters. Extensive experiments demonstrate that the proposed method outperforms baseline approaches, achieving superior reconstruction of anime characters with exceptional detail fidelity. In addition, to further verify the effectiveness of our method, we applied it to the animation head reconstruction task and improved the state-of-the-art baseline to 94.453 in SSIM, 7.726 in LPIPS, and 19.575 in PSNR on average. Codes and datasets are available at https://wanghongsheng01.github.io/NOVA-3D/.
format Preprint
id arxiv_https___arxiv_org_abs_2405_12505
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle NOVA-3D: Non-overlapped Views for 3D Anime Character Reconstruction
Wang, Hongsheng
Yao, Nanjie
Zhou, Xinrui
Zhang, Shengyu
Xu, Huahao
Wu, Fei
Lin, Feng
Computer Vision and Pattern Recognition
In the animation industry, 3D modelers typically rely on front and back non-overlapped concept designs to guide the 3D modeling of anime characters. However, there is currently a lack of automated approaches for generating anime characters directly from these 2D designs. In light of this, we explore a novel task of reconstructing anime characters from non-overlapped views. This presents two main challenges: existing multi-view approaches cannot be directly applied due to the absence of overlapping regions, and there is a scarcity of full-body anime character data and standard benchmarks. To bridge the gap, we present Non-Overlapped Views for 3D \textbf{A}nime Character Reconstruction (NOVA-3D), a new framework that implements a method for view-aware feature fusion to learn 3D-consistent features effectively and synthesizes full-body anime characters from non-overlapped front and back views directly. To facilitate this line of research, we collected the NOVA-Human dataset, which comprises multi-view images and accurate camera parameters for 3D anime characters. Extensive experiments demonstrate that the proposed method outperforms baseline approaches, achieving superior reconstruction of anime characters with exceptional detail fidelity. In addition, to further verify the effectiveness of our method, we applied it to the animation head reconstruction task and improved the state-of-the-art baseline to 94.453 in SSIM, 7.726 in LPIPS, and 19.575 in PSNR on average. Codes and datasets are available at https://wanghongsheng01.github.io/NOVA-3D/.
title NOVA-3D: Non-overlapped Views for 3D Anime Character Reconstruction
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2405.12505