Improved Techniques for Training Single-Image GANs
Winter Conference on Applications of Computer Vision,
pages 1300-1309,
- Jan 2021
Recently there has been an interest in the potential of
learning generative models from a single image, as opposed
to from a large dataset. This task is of significance, as it
means that generative models can be used in domains where
collecting a large dataset is not feasible. However, training
a model capable of generating realistic images from only a
single sample is a difficult problem. In this work, we conduct
a number of experiments to understand the challenges of
training these methods and propose some best practices that
we found allowed us to generate improved results over previous work. One key piece is that, unlike prior single image
generation methods, we concurrently train several stages in
a sequential multi-stage manner, allowing us to learn models
with fewer stages of increasing image resolution. Compared
to a recent state of the art baseline, our model is up to six
times faster to train, has fewer parameters, and can better
capture the global structure of images.
@InProceedings{HFWW21, author = {Hinz, Tobias and Fisher, Matthew and Wang, Oliver and Wermter, Stefan}, title = {Improved Techniques for Training Single-Image GANs}, booktitle = {Winter Conference on Applications of Computer Vision}, editors = {}, number = {}, volume = {}, pages = {1300-1309}, year = {2021}, month = {Jan}, publisher = {IEEE}, doi = {}, }