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[ICCV-2025] Official implementation of Bootstrap3D: Improving Multi-view Diffusion Model with Synthetic Data
Bootstrap3D
Bootstrap3D: Improving 3D Content Creation with Synthetic Data Zeyi Sun, Tong Wu, Pan Zhang, Yuhang Zang, Xiaoyi Dong Yuanjun Xiong, Dahua Lin, Jiaqi Wang
📜 News
🚀 [2024/6/4] The paper and project page are released!
💡 Highlights
- 🔥 A new Multi-View Diffusion model trained on high quality synthetic data and capable of generating multi-view images closely follow text prompt.
- 🔥 Denser captioned Objaverse Dataset using finetuned 3D aware MV-LLaVA powered by GPT-4V.
- 🔥 A High Quality synthetic dataset for high asethetic 3D content creation.
👨💻 Todo
- [ ] Training code of MV-Diffusion model based on PixArt.
- [ ] BS-Synthetic3D HQ 3D-object dataset.
- [ ] Release of MV-PixArt-alpha, MV-Pixart-sigma model
- [x] BS-Objaverse Dataset cart launched on huggingface.
- [x] MV-LLaVA model and web demo.
- [x] Paper and project page.
⚡ Quick Start
✒️ Citation
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@misc{sun2024bootstrap3d,
title={Bootstrap3D: Improving 3D Content Creation with Synthetic Data},
author={Zeyi Sun and Tong Wu and Pan Zhang and Yuhang Zang and Xiaoyi Dong and Yuanjun Xiong and Dahua Lin and Jiaqi Wang},
year={2024},
eprint={2406.00093},
archivePrefix={arXiv},
primaryClass={cs.CV}
}