Improving Complex Scene Generation by Enhancing Multi-Scale Representations of GAN Discriminators
  • Lee, Hanbit
  • Lee, Sang-Goo
  • Park, Jaehui
  • Shim, Junho
Citations

WEB OF SCIENCE

1
Citations

SCOPUS

3

초록

While recent advances of GAN models enabled photo-realistic synthesis of various object images, challenges still remain in modeling more complex image distributions such as scenes with multiple objects. The difficulty lies in the high structural complexity of scene images, where the discriminator carries a heavy burden in discriminating complex structural differences between real and fake scene images. Therefore, enhancing the discriminative capability of the discriminator could be one of the effective strategies to improve the generation performance of GAN models. In this paper, we explore ways to boost the discriminative capability by leveraging two recent paradigms on visual representation learning: self-supervised learning and transfer learning. As the first approach, we propose a self-supervised auxiliary task tailored to enhance the multi-scale representations of the discriminator. In the second approach, we further enhance the discriminator by utilizing pretrained representations from various scene understanding models. To fully utilize knowledge from multiple expert models, we propose a multi-scale feature ensemble to mix multi-sale representations. Empirical results on challenging scene datasets demonstrate that the proposed strategies significantly advance the generation performance, enabling diverse and photo-realistic synthesis of complex scene images.

키워드

Image analysisGenerative adversarial networksTransfer learningFeature extractionSelf-supervised learningGeneratorsscene generationself-supervised learningtransfer learning
제목
Improving Complex Scene Generation by Enhancing Multi-Scale Representations of GAN Discriminators
저자
Lee, HanbitLee, Sang-GooPark, JaehuiShim, Junho
DOI
10.1109/ACCESS.2023.3270561
발행일
2023-04
유형
Article
저널명
IEEE Access
11
페이지
43067 ~ 43079