This repository is the official implementation of MotionClone. It is a training-free framework that enables motion cloning from a reference video for controllable video generation, without cumbersome video inversion processes.
Click for the full abstract of MotionClone
Motion-based controllable video generation offers the potential for creating captivating visual content. Existing methods typically necessitate model training to encode particular motion cues or incorporate fine-tuning to inject certain motion patterns, resulting in limited flexibility and generalization. In this work, we propose MotionClone a training-free framework that enables motion cloning from reference videos to versatile motion-controlled video generation, including text-to-video and image-to-video. Based on the observation that the dominant components in temporal-attention maps drive motion synthesis, while the rest mainly capture noisy or very subtle motions, MotionClone utilizes sparse temporal attention weights as motion representations for motion guidance, facilitating diverse motion transfer across varying scenarios. Meanwhile, MotionClone allows for the direct extraction of motion representation through a single denoising step, bypassing the cumbersome inversion processes and thus promoting both efficiency and flexibility. Extensive experiments demonstrate that MotionClone exhibits proficiency in both global camera motion and local object motion, with notable superiority in terms of motion fidelity, textual alignment, and temporal consistency.
MotionClone: Training-Free Motion Cloning for Controllable Video Generation
Pengyang Ling*,
Jiazi Bu*,
Pan Zhang†,
Xiaoyi Dong,
Yuhang Zang,
Tong Wu,
Huaian Chen,
Jiaqi Wang,
Yi Jin†
(*Equal Contribution)(†Corresponding Author)
MotionClone_demo_compressed.mp4
- The latest version of our paper (v4) is available on arXiv! (10.08)
- The latest version of our paper (v3) is available on arXiv! (7.2)
- Code released! (6.29)
- We have updated the latest version of MotionCloning, which performs motion transfer without video inversion and supports image-to-video and sketch-to-video.
- Release the MotionClone code (We have released the first version of our code and will continue to optimize it. We welcome any questions or issues you may have and will address them promptly.)
- Release paper
We show more results in the Project Page.
MotionClone utilizes sparse temporal attention weights as motion representations for motion guidance, facilitating diverse motion transfer across varying scenarios. Meanwhile, MotionClone allows for the direct extraction of motion representation through a single denoising step, bypassing the cumbersome inversion processes and thus promoting both efficiency and flexibility.
git clone https://github.com/Bujiazi/MotionClone.git
cd MotionClone
conda env create -f environment.yaml
conda activate motionclone
git lfs install
git clone https://huggingface.co/runwayml/stable-diffusion-v1-5 models/StableDiffusion/
After downloading Stable Diffusion, save them to models/StableDiffusion
.
Manually download the community .safetensors
models from RealisticVision V5.1 and save them to models/DreamBooth_LoRA
.
Manually download the AnimateDiff modules from AnimateDiff, we recommend v3_adapter_sd_v15.ckpt
and v3_sd15_mm.ckpt.ckpt
. Save the modules to models/Motion_Module
.
Manually download "v3_sd15_sparsectrl_rgb.ckpt" and "v3_sd15_sparsectrl_scribble.ckpt" from AnimateDiff. Save the modules to models/SparseCtrl
.
python t2v_video_sample.py --inference_config "configs/t2v_camera.yaml" --examples "configs/t2v_camera.jsonl"
python t2v_video_sample.py --inference_config "configs/t2v_object.yaml" --examples "configs/t2v_object.jsonl"
python i2v_video_sample.py --inference_config "configs/i2v_sketch.yaml" --examples "configs/i2v_sketch.jsonl"
python i2v_video_sample.py --inference_config "configs/i2v_rgb.yaml" --examples "configs/i2v_rgb.jsonl"
If you find this work helpful, please cite the following paper:
@article{ling2024motionclone,
title={MotionClone: Training-Free Motion Cloning for Controllable Video Generation},
author={Ling, Pengyang and Bu, Jiazi and Zhang, Pan and Dong, Xiaoyi and Zang, Yuhang and Wu, Tong and Chen, Huaian and Wang, Jiaqi and Jin, Yi},
journal={arXiv preprint arXiv:2406.05338},
year={2024}
}
This is official code of MotionClone. All the copyrights of the demo images and audio are from community users. Feel free to contact us if you would like remove them.
The code is built upon the below repositories, we thank all the contributors for open-sourcing.