.cursor/rules | ||
ext/diff_gaussian_rasterization_hair | ||
src | ||
.cursorignore | ||
.gitattributes | ||
.gitignore | ||
activate_gaussian_splatting_hair.bat | ||
activate_matte_anything.bat | ||
activate_openpose.bat | ||
activate_pixie-env.bat | ||
download_resource.bat | ||
environment.yml | ||
install.bat | ||
install.sh | ||
LICENSE.md | ||
micromamba.exe | ||
README_CN.md | ||
README.md | ||
requirements.txt | ||
run.bat | ||
run.sh |
Gaussian Haircut: Human Hair Reconstruction with Strand-Aligned 3D Gaussians
This repository contains the official implementation of Gaussian Haircut, a strand-based human hair reconstruction method from monocular video.
Overview
The reconstruction process includes the following main stages:
-
Preprocessing Stage
- Video frame extraction and organization
- COLMAP camera reconstruction
- Hair and body segmentation
- Image quality assessment and filtering
- Orientation map calculation
- Facial keypoint detection
- FLAME head model fitting
-
Reconstruction Stage
- 3D Gaussian reconstruction
- FLAME mesh fitting
- Scene cropping and optimization
- Hair strand reconstruction
-
Visualization Stage
- Export reconstructed strands
- Blender rendering visualization
- Generate result video
Expected output:
[your_scene_folder]/
├── raw.mp4 # Input video
├── 3d_gaussian_splatting/ # 3D Gaussian reconstruction results
├── flame_fitting/ # FLAME head model fitting results
├── strands_reconstruction/ # Hair strand reconstruction intermediate results
├── curves_reconstruction/ # Final hair strand results
└── visualization/ # Rendering results and video
Required resource structure:
resource/
├── NeuralHaircut/
│ ├── pretrained_models/
│ │ ├── diffusion_prior/
│ │ │ └── dif_ckpt.pt # Diffusion prior model
│ │ └── strand_prior/
│ │ └── strand_ckpt.pt # Strand prior model
│ └── PIXIE/
│ └── pixie_data.tar.gz # PIXIE model data archive
├── Matte-Anything/
│ └── pretrained/
│ └── ViTMatte_B_DIS.pth # Matte-Anything model
├── openpose/
│ └── models/
│ └── models.tar.gz # OpenPose model archive
└── hyperIQA/
└── pretrained/
└── koniq_pretrained.pkl # Image quality assessment model
Getting Started
Linux Platform
-
Install CUDA 11.8
Follow instructions at https://developer.nvidia.com/cuda-11-8-0-download-archive
Make sure:
- PATH includes <CUDA_DIR>/bin
- LD_LIBRARY_PATH includes <CUDA_DIR>/lib64
The environment was tested only with this CUDA version.
-
Install Blender 3.6 for strand visualization
Follow instructions at https://www.blender.org/download/lts/3-6
-
Clone repository and run installation script
git clone git@github.com:eth-ait/GaussianHaircut.git cd GaussianHaircut chmod +x ./install.sh ./install.sh
Windows Platform
-
Install CUDA 11.8
- Download and install from https://developer.nvidia.com/cuda-11-8-0-download-archive
- Default installation path: C:\Program Files\NVIDIA GPU Computing Toolkit\CUDA\v11.8
- Ensure CUDA version is compatible with your system
-
Install Blender 3.6
- Download and install from https://www.blender.org/download/lts/3-6
- Default installation path: C:\Program Files\Blender Foundation\Blender 3.6
-
Install Visual Studio 2019 Build Tools
- Download and install from https://visualstudio.microsoft.com/vs/older-downloads/
- Select "C++ Build Tools" workload
- Default installation path: C:\Program Files (x86)\Microsoft Visual Studio\2019\BuildTools
-
Install COLMAP
- Download from https://github.com/colmap/colmap/releases
- Download CUDA version of COLMAP (e.g., COLMAP-3.8-windows-cuda.zip)
- Extract to a path without spaces (e.g., C:\COLMAP)
- Add COLMAP directory to system PATH:
- Open "System Properties" > "Environment Variables"
- Under "System Variables", find "Path"
- Click "Edit" > "New"
- Add COLMAP directory path
- Click "OK" to save
- Restart terminal for PATH changes to take effect
-
Install 7-Zip
- Download and install from https://7-zip.org/
- Add 7-Zip installation directory to system PATH:
- Open "System Properties" > "Environment Variables"
- Under "System Variables", find "Path"
- Click "Edit" > "New"
- Add 7-Zip installation directory (default: C:\Program Files\7-Zip)
- Click "OK" to save
- Restart terminal for PATH changes to take effect
-
Download pre-trained models and resources
git clone https://github.com/Jeffreytsai1004/GaussianHairCut cd GaussianHairCut # Run in PowerShell: # The script will automatically install gdown and download required resources .\download_resource.bat
Note:
- Download time varies from minutes to tens of minutes depending on network speed
- If download fails, you can rerun the script
- Ensure stable network connection
-
Clone repository and run installation script
git clone https://github.com/Jeffreytsai1004/GaussianHairCut cd GaussianHairCut # First download required resources .\download_resource.bat # Run installation script .\install.bat # Run reconstruction script .\run.bat
Usage
-
Record Monocular Video
- Reference example videos on the project page
- Recording requirements:
- Subject should rotate head slowly to capture all angles
- Keep hair and face clearly visible
- Avoid motion blur from fast movements
- Maintain stable lighting conditions
- Recommended length: 10-20 seconds
- Recommended resolution: 1920x1080 or higher
-
Setup Scene Directory
# In CMD: set PROJECT_DIR=[path\to\]GaussianHaircut set DATA_PATH=[path\to\scene\folder] run.bat # Or in PowerShell: $env:PROJECT_DIR="[path\to\]GaussianHaircut" $env:DATA_PATH="[path\to\scene\folder]" .\run.bat
Note:
- DATA_PATH should point to directory containing raw.mp4
- Directory paths should not contain spaces or special characters
- Ensure sufficient disk space (at least 20GB recommended)
License
This code is based on the 3D Gaussian Splatting project. See LICENSE_3DGS for terms and conditions. The rest of the code is distributed under CC BY-NC-SA 4.0.
Citation
If you find this code helpful for your research, please cite our paper:
@inproceedings{zakharov2024gh,
title = {Human Hair Reconstruction with Strand-Aligned 3D Gaussians},
author = {Zakharov, Egor and Sklyarova, Vanessa and Black, Michael J and Nam, Giljoo and Thies, Justus and Hilliges, Otmar},
booktitle = {European Conference of Computer Vision (ECCV)},
year = {2024}
}
Related Projects
- 3D Gaussian Splatting
- Neural Haircut: FLAME fitting pipeline, strand prior and hairstyle diffusion prior
- HAAR: Hair upsampling
- Matte-Anything: Hair and body segmentation
- PIXIE: FLAME fitting initialization
- Face-Alignment, OpenPose: Keypoint detection for FLAME fitting