Semantic Browsing: Controllable Diversity for Image Generation
This article introduces Semantic Browsing, a method for generating controlled diversity in text-to-image models by enforcing structure on generated samples to overcome the lack of meaningful variation in current systems. The approach induces diversity directly at the text level rather than relying on stochastic variations within the model.