/4DGaussians

[CVPR 2024] 4D Gaussian Splatting for Real-Time Dynamic Scene Rendering

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4D Gaussian Splatting for Real-Time Dynamic Scene Rendering

CVPR 2024

Guanjun Wu 1*, Taoran Yi 2*, Jiemin Fang 3‡, Lingxi Xie 3 ,
Xiaopeng Zhang 3 , Wei Wei 1 ,Wenyu Liu 2 , Qi Tian 3 , Xinggang Wang 2‡✉

1 School of CS, HUST   2 School of EIC, HUST   3 Huawei Inc.  

* Equal Contributions. $\ddagger$ Project Lead. Corresponding Author.


block Our method converges very quickly and achieves real-time rendering speed.

New Colab demo:Open In Colab (Thanks Tasmay-Tibrewal )

Old Colab demo:Open In Colab (Thanks camenduru.)

Light Gaussian implementation: This link (Thanks pablodawson)

News

2024.3.25: Update guidance for hypernerf and dynerf dataset.

2024.03.04: We change the hyperparameters of the Neu3D dataset, corresponding to our paper

2024.02.28: Update SIBR viewer guidance.

2024.02.27: Accepted by CVPR 2024. We delete some logging settings for debugging, the corrected training time is only 8 mins (20 mins before) in D-NeRF datasets and 30 mins (1 hour before) in HyperNeRF datasets. The rendering quality is not affected.

Environmental Setups

Please follow the 3D-GS to install the relative packages.

git clone https://github.com/hustvl/4DGaussians
cd 4DGaussians
git submodule update --init --recursive
conda create -n Gaussians4D python=3.7 
conda activate Gaussians4D

pip install -r requirements.txt
pip install -e submodules/depth-diff-gaussian-rasterization
pip install -e submodules/simple-knn

In our environment, we use pytorch=1.13.1+cu116.

Data Preparation

For synthetic scenes: The dataset provided in D-NeRF is used. You can download the dataset from dropbox.

For real dynamic scenes: The dataset provided in HyperNeRF is used. You can download scenes from Hypernerf Dataset and organize them as Nerfies.

Meanwhile, Plenoptic Dataset could be downloaded from their official websites. To save the memory, you should extract the frames of each video and then organize your dataset as follows.

├── data
│   | dnerf 
│     ├── mutant
│     ├── standup 
│     ├── ...
│   | hypernerf
│     ├── interp
│     ├── misc
│     ├── virg
│   | dynerf
│     ├── cook_spinach
│       ├── cam00
│           ├── images
│               ├── 0000.png
│               ├── 0001.png
│               ├── 0002.png
│               ├── ...
│       ├── cam01
│           ├── images
│               ├── 0000.png
│               ├── 0001.png
│               ├── ...
│     ├── cut_roasted_beef
|     ├── ...

For multipleviews scenes: If you want to train your own dataset of multipleviews scenes,you can orginize your dataset as follows:

├── data
|   | multipleview
│     | (your dataset name) 
│   	  | cam01
|     		  ├── frame_00001.jpg
│     		  ├── frame_00002.jpg
│     		  ├── ...
│   	  | cam02
│     		  ├── frame_00001.jpg
│     		  ├── frame_00002.jpg
│     		  ├── ...
│   	  | ...

After that,you can use the multipleviewprogress.sh we provided to generate related data of poses and pointcloud.You can use it as follows:

bash multipleviewprogress.sh (youe dataset name)

You need to ensure that the data folder is orginized as follows after running multipleviewprogress.sh:

├── data
|   | multipleview
│     | (your dataset name) 
│   	  | cam01
|     		  ├── frame_00001.jpg
│     		  ├── frame_00002.jpg
│     		  ├── ...
│   	  | cam02
│     		  ├── frame_00001.jpg
│     		  ├── frame_00002.jpg
│     		  ├── ...
│   	  | ...
│   	  | sparse_
│     		  ├── cameras.bin
│     		  ├── images.bin
│     		  ├── ...
│   	  | points3D_multipleview.ply
│   	  | poses_bounds_multipleview.npy

Training

For training synthetic scenes such as bouncingballs, run

python train.py -s data/dnerf/bouncingballs --port 6017 --expname "dnerf/bouncingballs" --configs arguments/dnerf/bouncingballs.py 

For training dynerf scenes such as cut_roasted_beef, run

# First, extract the frames of each video.
python scripts/preprocess_dynerf.py --datadir data/dynerf/cut_roasted_beef
# Second, generate point clouds from input data.
bash colmap.sh data/dynerf/cut_roasted_beef llff
# Third, downsample the point clouds generated in the second step.
python scripts/downsample_point.py data/dynerf/cut_roasted_beef/colmap/dense/workspace/fused.ply data/dynerf/cut_roasted_beef/points3D_downsample2.ply
# Finally, train.
python train.py -s data/dynerf/cut_roasted_beef --port 6017 --expname "dynerf/cut_roasted_beef" --configs arguments/dynerf/cut_roasted_beef.py 

For training hypernerf scenes such as virg/broom: Pregenerated point clouds by COLMAP are provided here. Just download them and put them in to correspond folder, and you can skip the former two steps. Also, you can run the commands directly.

# First, computing dense point clouds by COLMAP
bash colmap.sh data/hypernerf/virg/broom2 hypernerf
# Second, downsample the point clouds generated in the first step. 
python scripts/downsample_point.py data/hypernerf/virg/broom2/colmap/dense/workspace/fused.ply data/hypernerf/virg/broom2/points3D_downsample2.ply
# Finally, train.
python train.py -s  data/hypernerf/virg/broom2/ --port 6017 --expname "hypernerf/broom2" --configs arguments/hypernerf/broom2.py 

For training multipleviews scenes,you are supposed to build a configuration file named (you dataset name).py under "./arguments/mutipleview",after that,run

python train.py -s  data/multipleview/(your dataset name) --port 6017 --expname "multipleview/(your dataset name)" --configs arguments/multipleview/(you dataset name).py 

For your custom datasets, install nerfstudio and follow their COLMAP pipeline. You should install COLMAP at first, then:

pip install nerfstudio
# computing camera poses by colmap pipeline
ns-process-data images --data data/your-data --output-dir data/your-ns-data
cp -r data/your-ns-data/images data/your-ns-data/colmap/images
python train.py -s data/your-ns-data/colmap --port 6017 --expname "custom" --configs arguments/hypernerf/default.py 

You can customize your training config through the config files.

Checkpoint

Also, you can training your model with checkpoint.

python train.py -s data/dnerf/bouncingballs --port 6017 --expname "dnerf/bouncingballs" --configs arguments/dnerf/bouncingballs.py --checkpoint_iterations 200 # change it.

Then load checkpoint with:

python train.py -s data/dnerf/bouncingballs --port 6017 --expname "dnerf/bouncingballs" --configs arguments/dnerf/bouncingballs.py --start_checkpoint "output/dnerf/bouncingballs/chkpnt_coarse_200.pth"
# finestage: --start_checkpoint "output/dnerf/bouncingballs/chkpnt_fine_200.pth"

Rendering

Run the following script to render the images.

python render.py --model_path "output/dnerf/bouncingballs/"  --skip_train --configs arguments/dnerf/bouncingballs.py  &

Evaluation

You can just run the following script to evaluate the model.

python metrics.py --model_path "output/dnerf/bouncingballs/" 

Viewer

Watch me

Scripts

There are some helpful scripts, please feel free to use them.

export_perframe_3DGS.py: get all 3D Gaussians point clouds at each timestamps.

usage:

python export_perframe_3DGS.py --iteration 14000 --configs arguments/dnerf/lego.py --model_path output/dnerf/lego 

You will a set of 3D Gaussians are saved in output/dnerf/lego/gaussian_pertimestamp.

weight_visualization.ipynb:

visualize the weight of Multi-resolution HexPlane module.

merge_many_4dgs.py: merge your trained 4dgs. usage:

export exp_name="dynerf"
python merge_many_4dgs.py --model_path output/$exp_name/sear_steak

colmap.sh: generate point clouds from input data

bash colmap.sh data/hypernerf/virg/vrig-chicken hypernerf 
bash colmap.sh data/dynerf/sear_steak llff

Blender format seems doesn't work. Welcome to raise a pull request to fix it.

downsample_point.py :downsample generated point clouds by sfm.

python scripts/downsample_point.py data/dynerf/sear_steak/colmap/dense/workspace/fused.ply data/dynerf/sear_steak/points3D_downsample2.ply

In my paper, I always use colmap.sh to generate dense point clouds and downsample it to less than 40000 points.

Here are some codes maybe useful but never adopted in my paper, you can also try it.

Further works

We sincerely thank the authors and their fantastic works for other applications based on our code.

MD-Splatting: Learning Metric Deformation from 4D Gaussians in Highly Deformable Scenes

4DGen: Grounded 4D Content Generation with Spatial-temporal Consistency

DreamGaussian4D: Generative 4D Gaussian Splatting

EndoGaussian: Real-time Gaussian Splatting for Dynamic Endoscopic Scene Reconstruction

EndoGS: Deformable Endoscopic Tissues Reconstruction with Gaussian Splatting

Endo-4DGS: Endoscopic Monocular Scene Reconstruction with 4D Gaussian Splatting


Contributions

This project is still under development. Please feel free to raise issues or submit pull requests to contribute to our codebase.


Some source code of ours is borrowed from 3DGS, k-planes,HexPlane, TiNeuVox. We sincerely appreciate the excellent works of these authors.

Acknowledgement

We would like to express our sincere gratitude to @zhouzhenghong-gt for his revisions to our code and discussions on the content of our paper.

Citation

Some insights about neural voxel grids and dynamic scenes reconstruction originate from TiNeuVox. If you find this repository/work helpful in your research, welcome to cite these papers and give a ⭐.

@article{wu20234dgaussians,
  title={4D Gaussian Splatting for Real-Time Dynamic Scene Rendering},
  author={Wu, Guanjun and Yi, Taoran and Fang, Jiemin and Xie, Lingxi and Zhang, Xiaopeng and Wei Wei and Liu, Wenyu and Tian, Qi and Wang Xinggang},
  journal={arXiv preprint arXiv:2310.08528},
  year={2023}
}

@inproceedings{TiNeuVox,
  author = {Fang, Jiemin and Yi, Taoran and Wang, Xinggang and Xie, Lingxi and Zhang, Xiaopeng and Liu, Wenyu and Nie\ss{}ner, Matthias and Tian, Qi},
  title = {Fast Dynamic Radiance Fields with Time-Aware Neural Voxels},
  year = {2022},
  booktitle = {SIGGRAPH Asia 2022 Conference Papers}
}