Exploring Sparse MoE in GANs for Text-conditioned Image Synthesis
/ Authors
/ Abstract
Due to the difficulty in scaling up, generative adversarial networks (GANs) seem to be falling out of grace with the task of text-conditioned image synthesis. Sparsely activated mixture-of-experts (MoE) has recently been demonstrated as a valid solution to training large-scale models with limited resources. Inspired by this, we present Aurora, a GAN-based text-to-image generator that employs a collection of experts to learn feature processing, together with a sparse router to adaptively select the most suitable expert for each feature point. We adopt a two-stage training strategy, which first learns a base model at 64 × 64 resolution followed by an upsampler to produce 512 × 512 images. Trained with only public data, our approach encouragingly closes the performance gap between GANs and industry-level diffusion models, maintaining a fast inference speed. We release the code and checkpoints here to facilitate the community for further development.
Journal: 2025 IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR)