Smoothness Similarity Regularization for Few-Shot GAN Adaptation
The task of few-shot GAN adaptation aims to adapt a pre-trained GAN model to a small dataset with very few training images. While existing methods perform well when the dataset for pre-training is structurally similar to the target dataset, the approaches suffer from training instabilities or memorization issues when the objects in the two domains have a very different structure. To mitigate this limitation, we propose a new smoothness similarity regularization that transfers the inherently learned smoothness of the pre-trained GAN to the few-shot target domain even if the two domains are very different. We evaluate our approach by adapting an unconditional and a class-conditional GAN to diverse few-shot target domains. Our proposed method significantly outperforms prior few-shot GAN adaptation methods in the challenging case of structurally dissimilar source-target domains, while performing on par with the state of the art for similar source-target domains.
- Published in:
IEEE/CVF International Conference on Computer Vision - Type:
Inproceedings - Authors:
Sushko, Vadim; Wang, Ruyu; Gall, Jürgen - Year:
2023
Citation information
Sushko, Vadim; Wang, Ruyu; Gall, Jürgen: Smoothness Similarity Regularization for Few-Shot GAN Adaptation, IEEE/CVF International Conference on Computer Vision, 2023, October, https://ieeexplore.ieee.org/document/10377596, Sushko.etal.2023a,
@Inproceedings{Sushko.etal.2023a,
author={Sushko, Vadim; Wang, Ruyu; Gall, Jürgen},
title={Smoothness Similarity Regularization for Few-Shot GAN Adaptation},
booktitle={IEEE/CVF International Conference on Computer Vision},
month={October},
url={https://ieeexplore.ieee.org/document/10377596},
year={2023},
abstract={The task of few-shot GAN adaptation aims to adapt a pre-trained GAN model to a small dataset with very few training images. While existing methods perform well when the dataset for pre-training is structurally similar to the target dataset, the approaches suffer from training instabilities or memorization issues when the objects in the two domains have a very different structure. To mitigate this...}}