DualGAN: Unsupervised Dual Learning for Image-to-Image Translation
Memorial University of Newfoundland · Simon Fraser University
Abstract
Conditional Generative Adversarial Networks (GANs) for cross-domain image-to-image translation have made much progress recently [7, 8, 21, 12, 4, 18]. Depending on the task complexity, thousands to millions of labeled image pairs are needed to train a conditional GAN. However, human labeling is expensive, even impractical, and large quantities of data may not always be available. Inspired by dual learning from natural language translation [23], we develop a novel dual-GAN mechanism, which enables image translators to be trained from two sets of unlabeled images from two domains. In our architecture, the primal GAN learns to translate images from domain U to those in domain V, while the dual GAN learns to…
Citation impact
- FWCI
- 84.93
- Percentile
- 100%
- References
- 33
Authors
4Topics & keywords
- Image translation
- Computer science
- Translation (biology)
- Image (mathematics)
- Artificial intelligence
- Dual (grammatical number)
- Task (project management)
- Domain (mathematical analysis)
- Quality Education