Bernhard Kerbl*, Georgios Kopanas*, Thomas Leimkühler, George Drettakis (* indicates equal contribution)
| Webpage | Full Paper | Video | Other GRAPHDECO Publications | FUNGRAPH project page |
| T&T+DB COLMAP (650MB) | Pre-trained Models (14 GB) | Viewers for Windows (60MB) | Evaluation Images (7 GB)
This repository is for environment setup and inference of the paper "3D Gaussian Splatting for Real-Time Radiance Field Rendering.", which can be found here.
@Article{kerbl3Dgaussians,
author = {Kerbl, Bernhard and Kopanas, Georgios and Leimk{\"u}hler, Thomas and Drettakis, George},
title = {3D Gaussian Splatting for Real-Time Radiance Field Rendering},
journal = {ACM Transactions on Graphics},
number = {4},
volume = {42},
month = {July},
year = {2023},
url = {https://repo-sam.inria.fr/fungraph/3d-gaussian-splatting/}
}Our default, provided install method is based on Conda package and environment management:
SET DISTUTILS_USE_SDK=1 # Windows only
conda env create --file environment.yml
conda activate gaussian_splattingPlease note that this process assumes that you have CUDA SDK 11.6 installed, not 12. Cheak dependencies.sh file for other packages.
pip install torch==1.12.1+cu116 torchvision==0.13.1+cu116 torchaudio==0.12.1 \
-f https://download.pytorch.org/whl/torch_stable.html
pip install tqdm
pip install opencv-python joblib
pip install ./submodules/diff-gaussian-rasterization ./submodules/simple-knn ./submodules/fused-ssimTo run the optimizer, simply use
python train.py -s <path to COLMAP or NeRF Synthetic dataset>Command Line Arguments for train.py
Path to the source directory containing a COLMAP or Synthetic NeRF data set.
Path where the trained model should be stored (output/<random> by default).
Alternative subdirectory for COLMAP images (images by default).
Add this flag to use a MipNeRF360-style training/test split for evaluation.
Specifies resolution of the loaded images before training. If provided 1, 2, 4 or 8, uses original, 1/2, 1/4 or 1/8 resolution, respectively. For all other values, rescales the width to the given number while maintaining image aspect. If not set and input image width exceeds 1.6K pixels, inputs are automatically rescaled to this target.
Specifies where to put the source image data, cuda by default, recommended to use cpu if training on large/high-resolution dataset, will reduce VRAM consumption, but slightly slow down training. Thanks to HrsPythonix.
Add this flag to use white background instead of black (default), e.g., for evaluation of NeRF Synthetic dataset.
Order of spherical harmonics to be used (no larger than 3). 3 by default.
Flag to make pipeline compute forward and backward of SHs with PyTorch instead of ours.
Flag to make pipeline compute forward and backward of the 3D covariance with PyTorch instead of ours.
Enables debug mode if you experience erros. If the rasterizer fails, a dump file is created that you may forward to us in an issue so we can take a look.
Debugging is slow. You may specify an iteration (starting from 0) after which the above debugging becomes active.
Number of total iterations to train for, 30_000 by default.
IP to start GUI server on, 127.0.0.1 by default.
Port to use for GUI server, 6009 by default.
Space-separated iterations at which the training script computes L1 and PSNR over test set, 7000 30000 by default.
Space-separated iterations at which the training script saves the Gaussian model, 7000 30000 <iterations> by default.
Space-separated iterations at which to store a checkpoint for continuing later, saved in the model directory.
Path to a saved checkpoint to continue training from.
Flag to omit any text written to standard out pipe.
Spherical harmonics features learning rate, 0.0025 by default.
Opacity learning rate, 0.05 by default.
Scaling learning rate, 0.005 by default.
Rotation learning rate, 0.001 by default.
Number of steps (from 0) where position learning rate goes from initial to final. 30_000 by default.
Initial 3D position learning rate, 0.00016 by default.
Final 3D position learning rate, 0.0000016 by default.
Position learning rate multiplier (cf. Plenoxels), 0.01 by default.
Iteration where densification starts, 500 by default.
Iteration where densification stops, 15_000 by default.
Limit that decides if points should be densified based on 2D position gradient, 0.0002 by default.
How frequently to densify, 100 (every 100 iterations) by default.
How frequently to reset opacity, 3_000 by default.
Influence of SSIM on total loss from 0 to 1, 0.2 by default.
Percentage of scene extent (0--1) a point must exceed to be forcibly densified, 0.01 by default.
By default, the trained models use all available images in the dataset. To train them while withholding a test set for evaluation, use the --eval flag. This way, you can render training/test sets and produce error metrics as follows:
python train.py -s <path to COLMAP or NeRF Synthetic dataset> --eval # Train with train/test split
python render.py -m <path to trained model> # Generate renderings
python metrics.py -m <path to trained model> # Compute error metrics on renderings