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Unsupervised image-to-image translation method via pre-trained StyleGAN2 network

License CC BY-NC-SA 4.0

We proposed an unsupervised image-to-image translation method via pre-trained StyleGAN2 network.

mona

paper: Unsupervised Image-to-Image Translation via Pre-trained StyleGAN2 Network

Prerequisite

  • PyTorch 1.3.1
  • CUDA 10.1

Step 1: Model Fine-tuning

To obtain the target model, you need to follow the instruction of data preparation stated in the StyleGAN2 pytorch implementation here

python prepare_data.py --out LMDB_PATH --n_worker N_WORKER --size SIZE1,SIZE2,SIZE3,... DATASET_PATH

And fine-tune the model with data in the target domain:

python -m torch.distributed.launch --nproc_per_node=N_GPU --master_port=PORT train.py --batch BATCH_SIZE LMDB_PATH --ckpt your_base_model_path

Step 2: Closed-Form GAN space

Calculate the GAN space via the proposed algorithm, and a factor can then be obtained. python3 closed_form_factorization.py --ckpt your_model --out output_factor_path

Step 3: Image inversion

Inverse the image to a latent code based on the StyleGAN2 model trained on its domain python3 project_factor.py --ckpt stylegan_model_path --fact factor_path IMAGE_FILE

Step 4: LS Image generation with multiple styles

We use the inversed code to generate images with multiple style in the target domain

python3 gen_multi_style.py --model base_model_path --model2 target_model_path --fact base_inverse.pt --fact_base factor_from_base_model -o output_path --swap_layer 3 --stylenum 10

In additon to multi-modal translation, the style of the output can be specified by reference. To achieve this, we need to inverse the reference image as well since its latent code would then be used as style code in the generation.

python3 gen_ref.py --model1 base_model_path --model2 target_model_path --fact base_inverse.pt --fac_ref reference_inverse.pt --fact_base1 factor_from_base_model --fact_base2 factor_from_target_model -o output_path

pre-trained base model and dataset

We use the StyleGAN2 face models trained on FFHQ, 256x256 (by @rosinality). And the 1024x1024 can be found in the StyleGAN2 official implementation, model conversion between TF and Pytorch is needed. Models fine-tuned on such models can be used for I2I translation, though with FreezeFC they can achieve better results.

Many thanks to Gwern for providing the Anime dataset Danbooru and Doron Adler and Justin Pinkney for providing the cartoon dataset.

Some Results

cartoon2face1 cartoon2face2 cartoon2face3 cartoon2face4 face2portrait1 face2portrait2

The code is heavily borrowed from StyleGAN2 implementation (rosality's StyleGAN2 implementation) and close-form Factorization, thanks to their great work and contribution!

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