Publication | Closed Access
Scaling up GANs for Text-to-Image Synthesis
341
Citations
53
References
2023
Year
Unknown Venue
EngineeringMachine LearningGenerative SystemData ScienceText-to-image SynthesisStylegan ArchitectureGenerative ModelComputational ImagingMachine TranslationSynthetic Image GenerationNew Gan ArchitectureGenerative ModelsComputer ScienceHuman Image SynthesisDeep LearningComputer VisionStyle MixingGenerative Adversarial NetworkGenerative Ai
The recent success of text-to-image synthesis has taken the world by storm and captured the general public's imagination. From a technical standpoint, it also marked a drastic change in the favored architecture to design generative image models. GANs used to be the de facto choice, with techniques like StyleGAN. With DALL.E 2, autoregressive and diffusion models became the new standard for large-scale generative models overnight. This rapid shift raises a fundamental question: can we scale up GANs to benefit from large datasets like LAION? We find that naïvely increasing the capacity of the StyleGan architecture quickly becomes unstable. We introduce GigaGAN, a new GAN architecture that far exceeds this limit, demonstrating GANs as a viable option for text-to-image synthesis. GigaGAN offers three major advantages. First, it is orders of magnitude faster at inference time, taking only 0.13 seconds to synthesize a 512px image. Second, it can synthesize high-resolution images, for example, 16-megapixel images in 3.66 seconds. Finally, GigaGAN supports various latent space editing applications such as latent interpolation, style mixing, and vector arithmetic operations.
| Year | Citations | |
|---|---|---|
Page 1
Page 1