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Official PyTorch & Diffusers implementation of "Text-Guided Texturing by Synchronized Multi-View Diffusion"

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SyncMVD

Official Pytorch & Diffusers implementation of the paper:

Text-Guided Texturing by Synchronized Multi-View Diffusion

SyncMVD can generate texture for a 3D object from a text prompt using a Synchronized Multi-View Diffusion approach. The method shares the denoised content among different views in each denoising step to ensure texture consistency and avoid seams and fragmentation (fig a).

"Photo of Batman, sitting on a rock." "Publicity photo of a 60s movie, full color." "A photo of a beautiful chintz glided teapot." "A beautiful oil paint of a stone building in Van Gogh style."
"A photo of a robot hand with mechanical joints." "Photo of link in the legend of zelda, photo-realistic, unreal 5." "Photo of a lowpoly fantasy house from warcraft game, lawn." "Blue and white pottery style lucky cat with intricate patterns."
"A photo of an beautiful embroidered seat with royal patterns" "Photo of James Harden." "A photo of a gray and black Nike Airforce high top sneakers." "A photo of a Chinese dragon sculpture, glazed facing, vivid colors."
"A muscular man wearing grass hula skirt." "Photo of a horse." "A Jackie Chan figure." "A photo of a demon knight, flame in eyes, warcraft style."

Installation 🔧

The program is developed and tested on Linux system with Nvidia GPU. If you find compatibility issues on Windows platform, you can also consider using WSL.

To install, first clone the repository and install the basic dependencies

git clone https://github.com/LIU-Yuxin/SyncMVD.git
cd SyncMVD
conda create -n syncmvd python=3.8
conda activate syncmvd
pip install -r requirements.txt

Then install PyTorch3D through the following URL (change the respective Python, CUDA and PyTorch version in the link for the binary compatible with your setup), or install according to official installation guide

pip install --no-index --no-cache-dir pytorch3d -f https://dl.fbaipublicfiles.com/pytorch3d/packaging/wheels/py38_cu117_pyt200/download.html

The pretrained models will be downloaded automatically on demand, including:

Data 💾

The current program based on PyTorch3D library requires a input .obj mesh with .mtl material and related textures to read the original UV mapping of the object, which may require manual cleaning. Alternatively the program also support auto unwrapping based on XAtlas to load mesh that does not met the above requirements. The program also supports loading .glb mesh, but it may not be stable as its a PyTorch3D experiment feature.

To avoid unexpected artifact, the object being textured should avoid flipped face normals and overlapping UV, and keep the number of triangle faces within around 40,000. You can try Blender for manual mesh cleaning and processing, or its python scripting for automation.

You can try out the method with the following pre-processed meshes and configs:

Inference 🚀

python run_experiment.py --config {your config}.yaml

Refer to config.py for the list of arguments and settings you can adjust. You can change these settings by including them in a .yaml config file or passing the related arguments in command line; values specified in command line will overwrite those in config files.

When no output path is specified, the generated result will be placed in the same folder as the config file by default.

License 📜

The program licensed under MIT License.

Citation 📝

@article{liu2023text,
  title={Text-Guided Texturing by Synchronized Multi-View Diffusion},
  author={Liu, Yuxin and Xie, Minshan and Liu, Hanyuan and Wong, Tien-Tsin},
  journal={arXiv preprint arXiv:2311.12891},
  year={2023}
}

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