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πŸ€— Introduction

update πŸ‹οΈπŸ‹οΈπŸ‹οΈ We release our training codes!! Now you can train your own AnimateAnyone models. See here for more details. Have fun!

update:πŸ”₯πŸ”₯πŸ”₯ We launch a HuggingFace Spaces demo of Moore-AnimateAnyone at here!!

This repository reproduces AnimateAnyone. To align the results demonstrated by the original paper, we adopt various approaches and tricks, which may differ somewhat from the paper and another implementation.

It's worth noting that this is a very preliminary version, aiming for approximating the performance (roughly 80% under our test) showed in AnimateAnyone.

We will continue to develop it, and also welcome feedbacks and ideas from the community. The enhanced version will also be launched on our MoBi MaLiang AIGC platform, running on our own full-featured GPU S4000 cloud computing platform.

πŸ“ Release Plans

  • Inference codes and pretrained weights
  • Training scripts

🎞️ Examples

Here are some results we generated, with the resolution of 512x768.

compare-1-1.mp4
compare-2-2.mp4
demo3.mp4
demo4.mp4
demo5.mp4
demo6.mp4

Limitation: We observe following shortcomings in current version:

  1. The background may occur some artifacts, when the reference image has a clean background
  2. Suboptimal results may arise when there is a scale mismatch between the reference image and keypoints. We have yet to implement preprocessing techniques as mentioned in the paper.
  3. Some flickering and jittering may occur when the motion sequence is subtle or the scene is static.

These issues will be addressed and improved in the near future. We appreciate your anticipation!

βš’οΈ Installation

Build Environtment

We Recommend a python version >=3.10 and cuda version =11.7. Then build environment as follows:

# [Optional] Create a virtual env
python -m venv .venv
source .venv/bin/activate
# Install with pip:
pip install -r requirements.txt

Download weights

Automatically downloading: You can run the following command to download weights automatically:

python tools/download_weights.py

Weights will be placed under the ./pretrained_weights direcotry. The whole downloading process may take a long time.

Manually downloading: You can also download weights manually, which has some steps:

  1. Download our trained weights, which include four parts: denoising_unet.pth, reference_unet.pth, pose_guider.pth and motion_module.pth.

  2. Download pretrained weight of based models and other components:

  3. Download dwpose weights (dw-ll_ucoco_384.onnx, yolox_l.onnx) following this.

Finally, these weights should be orgnized as follows:

./pretrained_weights/
|-- DWPose
|   |-- dw-ll_ucoco_384.onnx
|   `-- yolox_l.onnx
|-- image_encoder
|   |-- config.json
|   `-- pytorch_model.bin
|-- denoising_unet.pth
|-- motion_module.pth
|-- pose_guider.pth
|-- reference_unet.pth
|-- sd-vae-ft-mse
|   |-- config.json
|   |-- diffusion_pytorch_model.bin
|   `-- diffusion_pytorch_model.safetensors
`-- stable-diffusion-v1-5
    |-- feature_extractor
    |   `-- preprocessor_config.json
    |-- model_index.json
    |-- unet
    |   |-- config.json
    |   `-- diffusion_pytorch_model.bin
    `-- v1-inference.yaml

Note: If you have installed some of the pretrained models, such as StableDiffusion V1.5, you can specify their paths in the config file (e.g. ./config/prompts/animation.yaml).

πŸš€ Training and Inference

Inference

Here is the cli command for running inference scripts:

python -m scripts.pose2vid --config ./configs/prompts/animation.yaml -W 512 -H 784 -L 64

You can refer the format of animation.yaml to add your own reference images or pose videos. To convert the raw video into a pose video (keypoint sequence), you can run with the following command:

python tools/vid2pose.py --video_path /path/to/your/video.mp4

Training

Note: package dependencies have been updated, you may upgrade your environment via pip install -r requirements.txt before training.

Data Preparation

Extract keypoints from raw videos:

python tools/extract_dwpose_from_vid.py --video_root /path/to/your/video_dir

Extract the meta info of dataset:

python tools/extract_meta_info.py --root_path /path/to/your/video_dir --dataset_name anyone 

Update lines in the training config file:

data:
  meta_paths:
    - "./data/anyone_meta.json"

Stage1

Put openpose controlnet weights under ./pretrained_weights, which is used to initialize the pose_guider.

Put sd-image-variation under ./pretrained_weights, which is used to initialize unet weights.

Run command:

accelerate launch train_stage_1.py --config configs/train/stage1.yaml

Stage2

Put the pretrained motion module weights mm_sd_v15_v2.ckpt (download link) under ./pretrained_weights.

Specify the stage1 training weights in the config file stage2.yaml, for example:

stage1_ckpt_dir: './exp_output/stage1'
stage1_ckpt_step: 30000 

Run command:

accelerate launch train_stage_2.py --config configs/train/stage2.yaml

🎨 Gradio Demo

HuggingFace Demo: We launch a quick preview demo of Moore-AnimateAnyone at HuggingFace Spaces!! We appreciate the assistance provided by the HuggingFace team in setting up this demo.

To reduce waiting time, we limit the size (width, height, and length) and inference steps when generating videos.

If you have your own GPU resource (>= 16GB vram), you can run a local gradio app via following commands:

python app.py

Community Contributions

πŸ–ŒοΈ Try on Mobi MaLiang

We will launched this model on our MoBi MaLiang AIGC platform, running on our own full-featured GPU S4000 cloud computing platform. Mobi MaLiang has now integrated various AIGC applications and functionalities (e.g. text-to-image, controllable generation...). You can experience it by clicking this link or scanning the QR code bellow via WeChat!

βš–οΈ Disclaimer

This project is intended for academic research, and we explicitly disclaim any responsibility for user-generated content. Users are solely liable for their actions while using the generative model. The project contributors have no legal affiliation with, nor accountability for, users' behaviors. It is imperative to use the generative model responsibly, adhering to both ethical and legal standards.

πŸ™πŸ» Acknowledgements

We first thank the authors of AnimateAnyone. Additionally, we would like to thank the contributors to the majic-animate, animatediff and Open-AnimateAnyone repositories, for their open research and exploration. Furthermore, our repo incorporates some codes from dwpose and animatediff-cli-prompt-travel, and we extend our thanks to them as well.

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