GAUStudio is a unified framework that supports the rapidly advancing field of 3D Gaussian Splatting (3DGS) and its applications. This framework targets to offer a comprehensive codebase, streamlined pipelines, and a wide range of tools and resources to facilitate the exploration, implementation, and deployment of 3DGS-based solutions, making it easier for users to leverage the potential of this cutting-edge technology.
Before installing the software, please note that the following steps have been tested on Ubuntu 20.04. If you encounter any issues during the installation on Windows, we are open to addressing and resolving such issues.
- NVIDIA graphics card with at least 6GB VRAM
- CUDA installed
- Python >= 3.8
It is recommended to create a conda environment before proceeding with the installation. You can create a conda environment using the following commands:
# Create a new conda environment
conda create -n gaustudio python=3.8
# Activate the conda environment
conda activate gaustudio
You will need to install PyTorch. The software has been tested with torch1.12.1+cu113 and torch2.0.1+cu118, but other versions should also work fine. You can install PyTorch using conda as follows:
# Example command to install PyTorch version 1.12.1+cu113
conda install pytorch=1.12.1 torchvision=0.13.1 cudatoolkit=11.3 -c pytorch
# Example command to install PyTorch version 2.0.1+cu118
pip install torch torchvision --index-url https://download.pytorch.org/whl/cu118
Install the necessary dependencies by running the following command:
pip install -r requirements.txt
cd submodules/gaustudio-diff-gaussian-rasterization
python setup.py install
cd ../../
python setup.py develop
If you require mesh rendering and further mesh refinement, you can install PyTorch3D follow the link:
We currently support the output directory generated by most gaussian splatting methods such as 3DGS, mip-splatting, GaussianPro with the following minimal structure:
- output_dir
- cameras.json (necessary)
- point_cloud
- iteration_xxxx
- point_cloud.ply (necessary)
We are preparing some demo data(comming soon) for quick-start testing.
To extract a mesh from the input data, run the following command:
gs-extract-mesh -m ./data/1750250955326095360_data/result -o ./output/1750250955326095360_data
Replace ./data/1750250955326095360_data/result
with the path to your input output_dir.
Replace ./output/1750250955326095360_data
with the desired path for the output mesh.
The output data is organized in the same format as [mvs-texturing]{https://github.com/nmoehrle/mvs-texturing/tree/master}. Follow these steps to add texture to the mesh:
- Compile the mvs-texturing repository on your system.
- Navigate to the output directory containing the mesh.
- Run the following command:
texrecon ./images ./fused_mesh.ply ./results/textured_mesh --outlier_removal=gauss_clamping --data_term=area --no_intermediate_results
GauStudio will supoort more 3DGS-based methods in the near future, if you are also interested in GauStudio and want to improve it, welcome to submit PR!
- Complete the release of full pipelines for training
- Release Mip-Splatting, Scaffold-GS, and Triplane-GS training
- Release 'gs-viewer' for online visualization and 'gs-compress' for 3DGS postprocessing
- Release SparseGS and FSGS training
- Release Sugar and GaussianPro training
The code is released under the MIT License except the rasterizer. We also welcome commercial cooperation to advance the applications of 3DGS and address unresolved issues. If you are interested, welcome to contact Chongjie at chongjieye@link.cuhk.edu.cn