Tailor Swift Speech @ NYU (4K, 23 minutes) | Johan Rockstrom Speech @ TED (4K, 18 minutes) |
Churchill's Iron Curtain Speech (4K, 4 minutes) | An LLM Course from Stanford (4K, up to 1 hour) |
Visit our project page to view more cases.
2024/10/16
: โจโจโจ Source code and pretrained weights released.2024/10/10
: ๐๐๐ Paper submitted on Arxiv.
Status | Milestone | ETA |
---|---|---|
โ | Paper submitted on Arixiv | 2024-10-10 |
โ | Source code meet everyone on GitHub | 2024-10-16 |
๐ | Accelerate performance on inference | TBD |
- System requirement: Ubuntu 20.04/Ubuntu 22.04, Cuda 11.8
- Tested GPUs: A100
Download the codes:
git clone https://github.com/fudan-generative-vision/hallo2
cd hallo2
Create conda environment:
conda create -n hallo python=3.10
conda activate hallo
Install packages with pip
pip install torch==2.2.2 torchvision==0.17.2 torchaudio==2.2.2 --index-url https://download.pytorch.org/whl/cu118
pip install -r requirements.txt
Besides, ffmpeg is also needed:
apt-get install ffmpeg
You can easily get all pretrained models required by inference from our HuggingFace repo.
Clone the pretrained models into ${PROJECT_ROOT}/pretrained_models
directory by cmd below:
git lfs install
git clone https://huggingface.co/fudan-generative-ai/hallo2 pretrained_models
Or you can download them separately from their source repo:
- hallo: Our checkpoints consist of denoising UNet, face locator, image & audio proj.
- audio_separator: KimVocal_2 MDX-Net vocal removal model. (_Thanks to KimberleyJensen)
- insightface: 2D and 3D Face Analysis placed into
pretrained_models/face_analysis/models/
. (Thanks to deepinsight) - face landmarker: Face detection & mesh model from mediapipe placed into
pretrained_models/face_analysis/models
. - motion module: motion module from AnimateDiff. (Thanks to guoyww).
- sd-vae-ft-mse: Weights are intended to be used with the diffusers library. (Thanks to stablilityai)
- StableDiffusion V1.5: Initialized and fine-tuned from Stable-Diffusion-v1-2. (Thanks to runwayml)
- wav2vec: wav audio to vector model from Facebook.
- facelib: pretrained face parse models
- realesrgan: background upsample model
- CodeFormer: pretrained Codeformer model, it's optional to download it, only if you want to train our video super-resolution model from scratch
Finally, these pretrained models should be organized as follows:
./pretrained_models/
|-- audio_separator/
| |-- download_checks.json
| |-- mdx_model_data.json
| |-- vr_model_data.json
| `-- Kim_Vocal_2.onnx
|-- CodeFormer/
| |-- codeformer.pth
| `-- vqgan_code1024.pth
|-- face_analysis/
| `-- models/
| |-- face_landmarker_v2_with_blendshapes.task # face landmarker model from mediapipe
| |-- 1k3d68.onnx
| |-- 2d106det.onnx
| |-- genderage.onnx
| |-- glintr100.onnx
| `-- scrfd_10g_bnkps.onnx
|-- facelib
| |-- detection_mobilenet0.25_Final.pth
| |-- detection_Resnet50_Final.pth
| |-- parsing_parsenet.pth
| |-- yolov5l-face.pth
| `-- yolov5n-face.pth
|-- hallo2
| |-- net_g.pth
| `-- net.pth
|-- motion_module/
| `-- mm_sd_v15_v2.ckpt
|-- realesrgan
| `-- RealESRGAN_x2plus.pth
|-- sd-vae-ft-mse/
| |-- config.json
| `-- diffusion_pytorch_model.safetensors
|-- stable-diffusion-v1-5/
| `-- unet/
| |-- config.json
| `-- diffusion_pytorch_model.safetensors
`-- wav2vec/
`-- wav2vec2-base-960h/
|-- config.json
|-- feature_extractor_config.json
|-- model.safetensors
|-- preprocessor_config.json
|-- special_tokens_map.json
|-- tokenizer_config.json
`-- vocab.json
Hallo has a few simple requirements for input data:
For the source image:
- It should be cropped into squares.
- The face should be the main focus, making up 50%-70% of the image.
- The face should be facing forward, with a rotation angle of less than 30ยฐ (no side profiles).
For the driving audio:
- It must be in WAV format.
- It must be in English since our training datasets are only in this language.
- Ensure the vocals are clear; background music is acceptable.
We have provided some samples for your reference.
Simply to run the scripts/inference_long.py
and change source_image
, driving_audio
and save_path
in the config file:
python scripts/inference_long.py --config ./configs/inference/long.yaml
Animation results will be saved at save_path
. You can find more examples for inference at examples folder.
For more options:
usage: inference_long.py [-h] [-c CONFIG] [--source_image SOURCE_IMAGE] [--driving_audio DRIVING_AUDIO] [--pose_weight POSE_WEIGHT]
[--face_weight FACE_WEIGHT] [--lip_weight LIP_WEIGHT] [--face_expand_ratio FACE_EXPAND_RATIO]
options:
-h, --help show this help message and exit
-c CONFIG, --config CONFIG
--source_image SOURCE_IMAGE
source image
--driving_audio DRIVING_AUDIO
driving audio
--pose_weight POSE_WEIGHT
weight of pose
--face_weight FACE_WEIGHT
weight of face
--lip_weight LIP_WEIGHT
weight of lip
--face_expand_ratio FACE_EXPAND_RATIO
face region
Simply to run the scripts/video_sr.py
and pass input_video
and output_path
:
python scripts/video_sr.py --input_path [input_video] --output_path [output_dir] --bg_upsampler realesrgan --face_upsample -w 1 -s 4
Animation results will be saved at output_dir
.
For more options:
usage: video_sr.py [-h] [-i INPUT_PATH] [-o OUTPUT_PATH] [-w FIDELITY_WEIGHT] [-s UPSCALE] [--has_aligned] [--only_center_face] [--draw_box]
[--detection_model DETECTION_MODEL] [--bg_upsampler BG_UPSAMPLER] [--face_upsample] [--bg_tile BG_TILE] [--suffix SUFFIX]
options:
-h, --help show this help message and exit
-i INPUT_PATH, --input_path INPUT_PATH
Input video
-o OUTPUT_PATH, --output_path OUTPUT_PATH
Output folder.
-w FIDELITY_WEIGHT, --fidelity_weight FIDELITY_WEIGHT
Balance the quality and fidelity. Default: 0.5
-s UPSCALE, --upscale UPSCALE
The final upsampling scale of the image. Default: 2
--has_aligned Input are cropped and aligned faces. Default: False
--only_center_face Only restore the center face. Default: False
--draw_box Draw the bounding box for the detected faces. Default: False
--detection_model DETECTION_MODEL
Face detector. Optional: retinaface_resnet50, retinaface_mobile0.25, YOLOv5l, YOLOv5n. Default: retinaface_resnet50
--bg_upsampler BG_UPSAMPLER
Background upsampler. Optional: realesrgan
--face_upsample Face upsampler after enhancement. Default: False
--bg_tile BG_TILE Tile size for background sampler. Default: 400
--suffix SUFFIX Suffix of the restored faces. Default: None
NOTICE: The High-Resolution animation feature is a modified version of CodeFormer. When using or redistributing this feature, please comply with the S-Lab License 1.0. We kindly request that you respect the terms of this license in any usage or redistribution of this component.
The training data, which utilizes some talking-face videos similar to the source images used for inference, also needs to meet the following requirements:
- It should be cropped into squares.
- The face should be the main focus, making up 50%-70% of the image.
- The face should be facing forward, with a rotation angle of less than 30ยฐ (no side profiles).
Organize your raw videos into the following directory structure:
dataset_name/
|-- videos/
| |-- 0001.mp4
| |-- 0002.mp4
| |-- 0003.mp4
| `-- 0004.mp4
You can use any dataset_name
, but ensure the videos
directory is named as shown above.
Next, process the videos with the following commands:
python -m scripts.data_preprocess --input_dir dataset_name/videos --step 1
python -m scripts.data_preprocess --input_dir dataset_name/videos --step 2
Note: Execute steps 1 and 2 sequentially as they perform different tasks. Step 1 converts videos into frames, extracts audio from each video, and generates the necessary masks. Step 2 generates face embeddings using InsightFace and audio embeddings using Wav2Vec, and requires a GPU. For parallel processing, use the -p
and -r
arguments. The -p
argument specifies the total number of instances to launch, dividing the data into p
parts. The -r
argument specifies which part the current process should handle. You need to manually launch multiple instances with different values for -r
.
Generate the metadata JSON files with the following commands:
python scripts/extract_meta_info_stage1.py -r path/to/dataset -n dataset_name
python scripts/extract_meta_info_stage2.py -r path/to/dataset -n dataset_name
Replace path/to/dataset
with the path to the parent directory of videos
, such as dataset_name
in the example above. This will generate dataset_name_stage1.json
and dataset_name_stage2.json
in the ./data
directory.
Update the data meta path settings in the configuration YAML files, configs/train/stage1.yaml
and configs/train/stage2_long.yaml
:
#stage1.yaml
data:
meta_paths:
- ./data/dataset_name_stage1.json
#stage2.yaml
data:
meta_paths:
- ./data/dataset_name_stage2.json
Start training with the following command:
accelerate launch -m \
--config_file accelerate_config.yaml \
--machine_rank 0 \
--main_process_ip 0.0.0.0 \
--main_process_port 20055 \
--num_machines 1 \
--num_processes 8 \
scripts.train_stage1 --config ./configs/train/stage1.yaml
The accelerate launch
command is used to start the training process with distributed settings.
accelerate launch [arguments] {training_script} --{training_script-argument-1} --{training_script-argument-2} ...
Arguments for Accelerate:
-m, --module
: Interpret the launch script as a Python module.--config_file
: Configuration file for Hugging Face Accelerate.--machine_rank
: Rank of the current machine in a multi-node setup.--main_process_ip
: IP address of the master node.--main_process_port
: Port of the master node.--num_machines
: Total number of nodes participating in the training.--num_processes
: Total number of processes for training, matching the total number of GPUs across all machines.
Arguments for Training:
{training_script}
: The training script, such asscripts.train_stage1
orscripts.train_stage2
.--{training_script-argument-1}
: Arguments specific to the training script. Our training scripts accept one argument,--config
, to specify the training configuration file.
For multi-node training, you need to manually run the command with different machine_rank
on each node separately.
For more settings, refer to the Accelerate documentation.
We use the VFHQ dataset for training, you can download from its homepage. Then updata dataroot_gt
in ./configs/train/video_sr.yaml
.
Start training with the following command:
python -m torch.distributed.launch --nproc_per_node=8 --master_port=4322 \
basicsr/train.py -opt ./configs/train/video_sr.yaml \
--launcher pytorch
If you find our work useful for your research, please consider citing the paper:
@misc{cui2024hallo2,
title={Hallo2: Long-Duration and High-Resolution Audio-driven Portrait Image Animation},
author={Jiahao Cui and Hui Li and Yao Yao and Hao Zhu and Hanlin Shang and Kaihui Cheng and Hang Zhou and Siyu Zhu and๏ธ Jingdong Wang},
year={2024},
eprint={2410.07718},
archivePrefix={arXiv},
primaryClass={cs.CV}
}
Multiple research positions are open at the Generative Vision Lab, Fudan University! Include:
- Research assistant
- Postdoctoral researcher
- PhD candidate
- Master students
Interested individuals are encouraged to contact us at [email protected] for further information.
The development of portrait image animation technologies driven by audio inputs poses social risks, such as the ethical implications of creating realistic portraits that could be misused for deepfakes. To mitigate these risks, it is crucial to establish ethical guidelines and responsible use practices. Privacy and consent concerns also arise from using individuals' images and voices. Addressing these involves transparent data usage policies, informed consent, and safeguarding privacy rights. By addressing these risks and implementing mitigations, the research aims to ensure the responsible and ethical development of this technology.
We would like to thank the contributors to the magic-animate, AnimateDiff, ultimatevocalremovergui, AniPortrait and Moore-AnimateAnyone repositories, for their open research and exploration.
If we missed any open-source projects or related articles, we would like to complement the acknowledgement of this specific work immediately.
Thank you to all the contributors who have helped to make this project better!