Follow-Your-MultiPose: Tuning-Free Multi-Character Text-to-Video Generation via Pose Guidance

Bibliographic Details
Title: Follow-Your-MultiPose: Tuning-Free Multi-Character Text-to-Video Generation via Pose Guidance
Authors: Zhang, Beiyuan, Ma, Yue, Fu, Chunlei, Song, Xinyang, Sun, Zhenan, Li, Ziqiang
Publication Year: 2024
Collection: Computer Science
Subject Terms: Computer Science - Computer Vision and Pattern Recognition, Computer Science - Multimedia
More Details: Text-editable and pose-controllable character video generation is a challenging but prevailing topic with practical applications. However, existing approaches mainly focus on single-object video generation with pose guidance, ignoring the realistic situation that multi-character appear concurrently in a scenario. To tackle this, we propose a novel multi-character video generation framework in a tuning-free manner, which is based on the separated text and pose guidance. Specifically, we first extract character masks from the pose sequence to identify the spatial position for each generating character, and then single prompts for each character are obtained with LLMs for precise text guidance. Moreover, the spatial-aligned cross attention and multi-branch control module are proposed to generate fine grained controllable multi-character video. The visualized results of generating video demonstrate the precise controllability of our method for multi-character generation. We also verify the generality of our method by applying it to various personalized T2I models. Moreover, the quantitative results show that our approach achieves superior performance compared with previous works.
Comment: 5 pages,conference
Document Type: Working Paper
Access URL: http://arxiv.org/abs/2412.16495
Accession Number: edsarx.2412.16495
Database: arXiv
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