UGATIT is a state-of-the-art machine learning image converter.
* Paper
* GitHub project page
You can train this model on your own dataset.
For this training, we recommend a Google Colaboratory notebook with a free GPU. This is because UGATIT requires powerful computing power.
1, clone from the GitHub project page above.
git clone https://github.com/taki0112/UGATIT.git
cd UGATIT
pip install tensorflow-gpu==1.14
Specify the directory name of the dataset (for example, “selfly2anime”). Then place the dataset directory in the UGATIT directory.
4, run the train script. You must specify your own dataset name in the “— dataset” argument.
python main.py --dataset your_dataset_name --phase train
Training starts, and the result image and checkpoint are output.
Any question?
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