nerfstudio-project/nerfstudio
Fork: 1320 Star: 9621 (更新于 2024-12-06 02:56:29)
license: Apache-2.0
Language: Python .
A collaboration friendly studio for NeRFs
最后发布版本: v1.1.4 ( 2024-08-29 05:10:27)
A collaboration friendly studio for NeRFs
About
It’s as simple as plug and play with nerfstudio!
Nerfstudio provides a simple API that allows for a simplified end-to-end process of creating, training, and testing NeRFs. The library supports a more interpretable implementation of NeRFs by modularizing each component. With more modular NeRFs, we hope to create a more user-friendly experience in exploring the technology.
This is a contributor-friendly repo with the goal of building a community where users can more easily build upon each other's contributions. Nerfstudio initially launched as an opensource project by Berkeley students in KAIR lab at Berkeley AI Research (BAIR) in October 2022 as a part of a research project (paper). It is currently developed by Berkeley students and community contributors.
We are committed to providing learning resources to help you understand the basics of (if you're just getting started), and keep up-to-date with (if you're a seasoned veteran) all things NeRF. As researchers, we know just how hard it is to get onboarded with this next-gen technology. So we're here to help with tutorials, documentation, and more!
Have feature requests? Want to add your brand-spankin'-new NeRF model? Have a new dataset? We welcome contributions! Please do not hesitate to reach out to the nerfstudio team with any questions via Discord.
Have feedback? We'd love for you to fill out our Nerfstudio Feedback Form if you want to let us know who you are, why you are interested in Nerfstudio, or provide any feedback!
We hope nerfstudio enables you to build faster :hammer: learn together :books: and contribute to our NeRF community :sparkling_heart:.
Sponsors
Sponsors of this work includes Luma AI and the BAIR commons.
Quickstart
The quickstart will help you get started with the default vanilla NeRF trained on the classic Blender Lego scene. For more complex changes (e.g., running with your own data/setting up a new NeRF graph), please refer to our references.
1. Installation: Setup the environment
Prerequisites
You must have an NVIDIA video card with CUDA installed on the system. This library has been tested with version 11.8 of CUDA. You can find more information about installing CUDA here
Create environment
Nerfstudio requires python >= 3.8
. We recommend using conda to manage dependencies. Make sure to install Conda before proceeding.
conda create --name nerfstudio -y python=3.8
conda activate nerfstudio
pip install --upgrade pip
Dependencies
Install PyTorch with CUDA (this repo has been tested with CUDA 11.7 and CUDA 11.8) and tiny-cuda-nn.
cuda-toolkit
is required for building tiny-cuda-nn
.
For CUDA 11.8:
pip install torch==2.1.2+cu118 torchvision==0.16.2+cu118 --extra-index-url https://download.pytorch.org/whl/cu118
conda install -c "nvidia/label/cuda-11.8.0" cuda-toolkit
pip install ninja git+https://github.com/NVlabs/tiny-cuda-nn/#subdirectory=bindings/torch
See Dependencies in the Installation documentation for more.
Installing nerfstudio
Easy option:
pip install nerfstudio
OR if you want the latest and greatest:
git clone https://github.com/nerfstudio-project/nerfstudio.git
cd nerfstudio
pip install --upgrade pip setuptools
pip install -e .
OR if you want to skip all installation steps and directly start using nerfstudio, use the docker image:
See Installation - Use docker image.
2. Training your first model!
The following will train a nerfacto model, our recommended model for real world scenes.
# Download some test data:
ns-download-data nerfstudio --capture-name=poster
# Train model
ns-train nerfacto --data data/nerfstudio/poster
If everything works, you should see training progress like the following:
Navigating to the link at the end of the terminal will load the webviewer. If you are running on a remote machine, you will need to port forward the websocket port (defaults to 7007).
Resume from checkpoint / visualize existing run
It is possible to load a pretrained model by running
ns-train nerfacto --data data/nerfstudio/poster --load-dir {outputs/.../nerfstudio_models}
Visualize existing run
Given a pretrained model checkpoint, you can start the viewer by running
ns-viewer --load-config {outputs/.../config.yml}
3. Exporting Results
Once you have a NeRF model you can either render out a video or export a point cloud.
Render Video
First we must create a path for the camera to follow. This can be done in the viewer under the "RENDER" tab. Orient your 3D view to the location where you wish the video to start, then press "ADD CAMERA". This will set the first camera key frame. Continue to new viewpoints adding additional cameras to create the camera path. We provide other parameters to further refine your camera path. Once satisfied, press "RENDER" which will display a modal that contains the command needed to render the video. Kill the training job (or create a new terminal if you have lots of compute) and run the command to generate the video.
Other video export options are available, learn more by running
ns-render --help
Generate Point Cloud
While NeRF models are not designed to generate point clouds, it is still possible. Navigate to the "EXPORT" tab in the 3D viewer and select "POINT CLOUD". If the crop option is selected, everything in the yellow square will be exported into a point cloud. Modify the settings as desired then run the command at the bottom of the panel in your command line.
Alternatively you can use the CLI without the viewer. Learn about the export options by running
ns-export pointcloud --help
4. Using Custom Data
Using an existing dataset is great, but likely you want to use your own data! We support various methods for using your own data. Before it can be used in nerfstudio, the camera location and orientations must be determined and then converted into our format using ns-process-data
. We rely on external tools for this, instructions and information can be found in the documentation.
Data | Capture Device | Requirements | ns-process-data Speed |
---|---|---|---|
📷 Images | Any | COLMAP | 🐢 |
📹 Video | Any | COLMAP | 🐢 |
🌎 360 Data | Any | COLMAP | 🐢 |
📱 Polycam | IOS with LiDAR | Polycam App | 🐇 |
📱 KIRI Engine | IOS or Android | KIRI Engine App | 🐇 |
📱 Record3D | IOS with LiDAR | Record3D app | 🐇 |
📱 Spectacular AI | IOS, OAK, others | App / sai-cli |
🐇 |
🖥 Metashape | Any | Metashape | 🐇 |
🖥 RealityCapture | Any | RealityCapture | 🐇 |
🖥 ODM | Any | ODM | 🐇 |
👓 Aria | Aria glasses | Project Aria | 🐇 |
🛠 Custom | Any | Camera Poses | 🐇 |
5. Advanced Options
Training models other than nerfacto
We provide other models than nerfacto, for example if you want to train the original nerf model, use the following command
ns-train vanilla-nerf --data DATA_PATH
For a full list of included models run ns-train --help
.
Modify Configuration
Each model contains many parameters that can be changed, too many to list here. Use the --help
command to see the full list of configuration options.
ns-train nerfacto --help
Tensorboard / WandB / Viewer
We support four different methods to track training progress, using the viewertensorboard, Weights and Biases, and ,Comet. You can specify which visualizer to use by appending --vis {viewer, tensorboard, wandb, comet viewer+wandb, viewer+tensorboard, viewer+comet}
to the training command. Simultaneously utilizing the viewer alongside wandb or tensorboard may cause stuttering issues during evaluation steps. The viewer only works for methods that are fast (ie. nerfacto, instant-ngp), for slower methods like NeRF, use the other loggers.
Learn More
And that's it for getting started with the basics of nerfstudio.
If you're interested in learning more on how to create your own pipelines, develop with the viewer, run benchmarks, and more, please check out some of the quicklinks below or visit our documentation directly.
Section | Description |
---|---|
Documentation | Full API documentation and tutorials |
Viewer | Home page for our web viewer |
🎒 Educational | |
Model Descriptions | Description of all the models supported by nerfstudio and explanations of component parts. |
Component Descriptions | Interactive notebooks that explain notable/commonly used modules in various models. |
🏃 Tutorials | |
Getting Started | A more in-depth guide on how to get started with nerfstudio from installation to contributing. |
Using the Viewer | A quick demo video on how to navigate the viewer. |
Using Record3D | Demo video on how to run nerfstudio without using COLMAP. |
💻 For Developers | |
Creating pipelines | Learn how to easily build new neural rendering pipelines by using and/or implementing new modules. |
Creating datasets | Have a new dataset? Learn how to run it with nerfstudio. |
Contributing | Walk-through for how you can start contributing now. |
💖 Community | |
Discord | Join our community to discuss more. We would love to hear from you! |
Follow us on Twitter @nerfstudioteam to see cool updates and announcements | |
Feedback Form | We welcome any feedback! This is our chance to learn what you all are using Nerfstudio for. |
Supported Features
We provide the following support structures to make life easier for getting started with NeRFs.
If you are looking for a feature that is not currently supported, please do not hesitate to contact the Nerfstudio Team on Discord!
- :mag_right: Web-based visualizer that allows you to:
- Visualize training in real-time + interact with the scene
- Create and render out scenes with custom camera trajectories
- View different output types
- And more!
- :pencil2: Support for multiple logging interfaces (Tensorboard, Wandb), code profiling, and other built-in debugging tools
- :chart_with_upwards_trend: Easy-to-use benchmarking scripts on the Blender dataset
- :iphone: Full pipeline support (w/ Colmap, Polycam, or Record3D) for going from a video on your phone to a full 3D render.
Built On
- Easy-to-use config system
- Developed by Brent Yi
- Library for accelerating NeRF renders
- Developed by Ruilong Li
Citation
You can find a paper writeup of the framework on arXiv.
If you use this library or find the documentation useful for your research, please consider citing:
@inproceedings{nerfstudio,
title = {Nerfstudio: A Modular Framework for Neural Radiance Field Development},
author = {
Tancik, Matthew and Weber, Ethan and Ng, Evonne and Li, Ruilong and Yi, Brent
and Kerr, Justin and Wang, Terrance and Kristoffersen, Alexander and Austin,
Jake and Salahi, Kamyar and Ahuja, Abhik and McAllister, David and Kanazawa,
Angjoo
},
year = 2023,
booktitle = {ACM SIGGRAPH 2023 Conference Proceedings},
series = {SIGGRAPH '23}
}
Contributors
最近版本更新:(数据更新于 2024-09-25 09:04:12)
2024-08-29 05:10:27 v1.1.4
2024-06-18 00:00:35 v1.1.3
2024-06-09 08:40:16 v1.1.2
2024-06-09 05:06:55 v1.1.1
2024-05-14 03:06:22 v1.1.0
2024-04-03 09:25:14 v1.0.3
2024-02-23 04:59:05 v1.0.2
2024-02-02 09:00:50 v1.0.1
2024-01-20 10:23:25 v1.0.0
2023-09-22 09:39:17 v0.3.4
主题(topics):
3d, 3d-graphics, 3d-reconstruction, computer-vision, deep-learning, gaussian-splatting, machine-learning, nerf, photogrammetry, pytorch
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