PoseCrafter: One-Shot Personalized Video Synthesis Following Flexible Pose Control
- URL: http://arxiv.org/abs/2405.14582v3
- Date: Thu, 18 Jul 2024 08:50:45 GMT
- Title: PoseCrafter: One-Shot Personalized Video Synthesis Following Flexible Pose Control
- Authors: Yong Zhong, Min Zhao, Zebin You, Xiaofeng Yu, Changwang Zhang, Chongxuan Li,
- Abstract summary: PoseCrafter is a one-shot method for personalized video generation following the control of flexible poses.
Built upon Stable Diffusion and ControlNet, we carefully design an inference process to produce high-quality videos.
- Score: 22.253448372833617
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: In this paper, we introduce PoseCrafter, a one-shot method for personalized video generation following the control of flexible poses. Built upon Stable Diffusion and ControlNet, we carefully design an inference process to produce high-quality videos without the corresponding ground-truth frames. First, we select an appropriate reference frame from the training video and invert it to initialize all latent variables for generation. Then, we insert the corresponding training pose into the target pose sequences to enhance faithfulness through a trained temporal attention module. Furthermore, to alleviate the face and hand degradation resulting from discrepancies between poses of training videos and inference poses, we implement simple latent editing through an affine transformation matrix involving facial and hand landmarks. Extensive experiments on several datasets demonstrate that PoseCrafter achieves superior results to baselines pre-trained on a vast collection of videos under 8 commonly used metrics. Besides, PoseCrafter can follow poses from different individuals or artificial edits and simultaneously retain the human identity in an open-domain training video. Our project page is available at https://ml-gsai.github.io/PoseCrafter-demo/.
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