ReImagine: Rethinking Controllable High-Quality Human Video Generation via Image-First Synthesis
Zhengwentai Sun, Keru Zheng, Chenghong Li, Hongjie Liao, Xihe Yang + 5 more
TLDR
ReImagine proposes an image-first approach for controllable, high-quality human video generation, decoupling appearance from temporal consistency.
Key contributions
- Introduces an image-first synthesis pipeline for high-quality, controllable human video.
- Combines a pretrained image backbone with SMPL-X motion for pose and viewpoint control.
- Utilizes a training-free temporal refinement stage with a pretrained video diffusion model.
- Releases a canonical human dataset and an auxiliary model for compositional human image synthesis.
Why it matters
Human video generation is challenging due to complex appearance, motion, and viewpoint modeling. ReImagine addresses this by decoupling appearance, leading to higher quality and better controllability than previous methods. This advancement could enable more realistic virtual humans and creative content.
Original Abstract
Human video generation remains challenging due to the difficulty of jointly modeling human appearance, motion, and camera viewpoint under limited multi-view data. Existing methods often address these factors separately, resulting in limited controllability or reduced visual quality. We revisit this problem from an image-first perspective, where high-quality human appearance is learned via image generation and used as a prior for video synthesis, decoupling appearance modeling from temporal consistency. We propose a pose- and viewpoint-controllable pipeline that combines a pretrained image backbone with SMPL-X-based motion guidance, together with a training-free temporal refinement stage based on a pretrained video diffusion model. Our method produces high-quality, temporally consistent videos under diverse poses and viewpoints. We also release a canonical human dataset and an auxiliary model for compositional human image synthesis. Code and data are publicly available at https://github.com/Taited/ReImagine.
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