awesome-pretrained-stylegan3
awesome-pretrained-stylegan3 | StyleGAN-nada | |
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2 | 14 | |
276 | 1,141 | |
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0.0 | 0.0 | |
almost 2 years ago | over 1 year ago | |
Python | ||
- | MIT License |
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awesome-pretrained-stylegan3
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[D] StyleGAN3: Overview, Tutorial, and Pre-Trained Model
I would keep eyes on this repo for pretrained stylegan3 models (especially the non-face ones): https://github.com/justinpinkney/awesome-pretrained-stylegan3
- Resource: GitHub repo "Awesome Pretrained StyleGAN3" contains pretrained model(s) for StyleGAN3. Currently it has one StyleGAN3 model: WikiArt-1024.
StyleGAN-nada
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Artists Tomorrow
Here's a paper about adding the ability to guide outputs with text a full year before Stable Diffusion was published.
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StyleGAN-NADA: CLIP-Guided Domain Adaptation of Image Generators
StyleGAN-NADA: CLIP-Guided Domain Adaptation of Image Generators
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[R][P] Gradio Web demo for StyleGAN-NADA: CLIP-Guided Domain Adaptation of Image Generators (SIGGRAPH 2022)
project page: https://stylegan-nada.github.io/
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The Danny AI of your dreams
Sooo I retrained the FFHQ model to be Danny using StyleGAN-NADA via this Colab notebook.
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I made a VFX face filter thing that might be of interest to you guys (it runs in the browser without sending anything to a server and is quite fast)
Haha thanks for trying it out :) It was actually really challenging to get it working (especially all in the browser without processing on a server). A lot of help came from stylegan-nada https://github.com/rinongal/StyleGAN-nada (and a custom lightweight model basically distilling pairs from it and ffhq).
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[D] StyleGAN3: Overview, Tutorial, and Pre-Trained Model
As for usage on non-face images most of NVidia's pre-trained models were face based (animal, humans, and paintings). Which was the aim of releasing our WikiArt model so the community would have something that could generate a greater variety of images. However these models are still constrained to the dataset that they were trained on. So without some tricks you can't generate "novel" images (like mashups of different objects)
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[D] What are some cool projects for generating art?
I think the directional loss concepts in https://github.com/rinongal/StyleGAN-nada have real potential for artistic work, as they can go beyond the filter and paint effects that traditional style transfer applies well, while maintaining recognisable equivalency between the resulting images.
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[R] NVIDIA and Tel Aviv Researchers Propose ‘StyleGAN-NADA’, A Text-Driven Method That Converts a Pre-Trained AI Generator to New Domains Using Only a Textual Prompt and No Training Data
5 Min Read | Paper | Project | Code
- Arquitectura colonial Argentina (Generado por IA)
- StyleGAN-NADA: Clip-Guided Domain Adaptation of Image Generators
What are some alternatives?
stylegan3-fun - Modifications of the official PyTorch implementation of StyleGAN3. Let's easily generate images and videos with StyleGAN2/2-ADA/3!
artistic-videos - Torch implementation for the paper "Artistic style transfer for videos"
stylegan3 - Official PyTorch implementation of StyleGAN3
neural-style-pt - PyTorch implementation of neural style transfer algorithm
deep-photo-styletransfer - Code and data for paper "Deep Photo Style Transfer": https://arxiv.org/abs/1703.07511
prompt-to-prompt
GANce - Maps music and video into the latent space of StyleGAN networks.
stylegan2-pytorch - Simplest working implementation of Stylegan2, state of the art generative adversarial network, in Pytorch. Enabling everyone to experience disentanglement