BEGAN
BEGAN: Boundary Equilibrium Generative Adversarial Networks. We propose a new equilibrium enforcing method paired with a loss derived from the Wasserstein distance for training auto-encoder based Generative Adversarial Networks. This method balances the generator and discriminator during training. Additionally, it provides a new approximate convergence measure, fast and stable training and high visual quality. We also derive a way of controlling the trade-off between image diversity and visual quality. We focus on the image generation task, setting a new milestone in visual quality, even at higher resolutions. This is achieved while using a relatively simple model architecture and a standard training procedure.
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References in zbMATH (referenced in 6 articles )
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Sorted by year (- Galanti, Tomer; Benaim, Sagie; Wolf, Lior: Risk bounds for unsupervised cross-domain mapping with IPMs (2021)
- Sahimi, Muhammad; Tahmasebi, Pejman: Reconstruction, optimization, and design of heterogeneous materials and media: basic principles, computational algorithms, and applications (2021)
- Bang, Duhyeon; Kang, Seoungyoon; Shim, Hyunjung: Discriminator feature-based inference by recycling the discriminator of GANs (2020)
- Yang, Liu; Zhang, Dongkun; Karniadakis, George Em: Physics-informed generative adversarial networks for stochastic differential equations (2020)
- Wang, Haifeng; Zhang, Qianqian; Won, Daehan; Yoon, Sang Won: Smart health in medical image analysis (2019)
- Daubechies, Ingrid (ed.); Kutyniok, Gitta (ed.); Rauhut, Holger (ed.); Strohmer, Thomas (ed.): Applied harmonic analysis and data processing. Abstracts from the workshop held March 25--31, 2018 (2018)