SwiftBrush v2: Make Your One-step Diffusion Model Better Than Its Teacher
Abstract
In this paper, we aim to enhance the performance of SwiftBrush, a prominent one-step text-to-image diffusion model, to be competitive with its multi-step Stable Diffusion counterpart. Initially, we explore the quality-diversity trade-off between SwiftBrush and SD Turbo: the former excels in image diversity, while the latter excels in image quality. This observation motivates our proposed modifications in the training methodology, including better weight initialization and efficient LoRA training. Moreover, our introduction of a novel clamped CLIP loss enhances image-text alignment and results in improved image quality. Remarkably, by combining the weights of models trained with efficient LoRA and full training, we achieve a new state-of-the-art one-step diffusion model, achieving an FID of 8.14 and surpassing all GAN-based and multi-step Stable Diffusion models. The evaluation code is available at: https://github.com/vinairesearch/swiftbrushv2.
Community
The evaluation code and pre-trained models are in the final review process and will be publicized soon! In the meantime, please check out our qualitative results over here: https://swiftbrushv2.github.io/
Nooo, I want the code and pretrained models now 😤😤😤
Really cool work 🔥 Looking forward to seeing the model and demo on the hub!
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