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[arXiv]
[bibtex]@InProceedings{Yang_2025_ICCV, author = {Yang, Yuhang and Liu, Fengqi and Lu, Yixing and Zhao, Qin and Wu, Pingyu and Zhai, Wei and Yi, Ran and Cao, Yang and Ma, Lizhuang and Zha, Zheng-Jun and Dong, Junting}, title = {SIGMAN: Scaling 3D Human Gaussian Generation with Millions of Assets}, booktitle = {Proceedings of the IEEE/CVF International Conference on Computer Vision (ICCV)}, month = {October}, year = {2025}, pages = {5122-5133} }
SIGMAN: Scaling 3D Human Gaussian Generation with Millions of Assets
Abstract
3D human digitization has long been a highly pursued yet challenging task. Existing methods aim to generate high-quality 3D digital humans from single or multiple views, but remain primarily constrained by current paradigms and the scarcity of 3D human assets. Specifically, recent approaches fall into several paradigms: optimization-based and feed-forward (both single-view regression and multi-view generation with reconstruction). However, they are limited by slow speed, low quality, cascade reasoning, and ambiguity in mapping low-dimensional planes to high-dimensional space due to occlusion and invisibility, respectively. Furthermore, existing 3D human assets remain small-scale, insufficient for large-scale training. To address these challenges, we propose a latent space generation paradigm for 3D human digitization, which involves compressing multi-view images into Gaussians via a UV-structured VAE, along with DiT-based conditional generation, we transform the ill-posed low-to-high-dimensional mapping problem into a learnable distribution shift, which also supports end-to-end inference. In addition, we employ the multi-view optimization approach combined with synthetic data to construct the HGS-1M dataset, which contains 1 million 3D Gaussian assets to support the large-scale training. Experimental results demonstrate that our paradigm, powered by large-scale training, produces high-quality 3D human Gaussians with intricate textures, facial details, and loose clothing deformation. All training code, models, and the dataset will be open-sourced.
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