Paper ID: 2407.17493

ReDiFine: Reusable Diffusion Finetuning for Mitigating Degradation in the Chain of Diffusion

Youngseok Yoon, Dainong Hu, Iain Weissburg, Yao Qin, Haewon Jeong

Diffusion models have achieved tremendous improvements in generative modeling for images, enabling high-quality generation that is indistinguishable by humans from real images. The qualities of images have reached a threshold at which we can reuse synthetic images for training machine learning models again. This attracts the area as it can relieve the high cost of data collection and fundamentally solve many problems in data-limited areas. In this paper, we focus on a practical scenario in which pretrained text-to-image diffusion models are iteratively finetuned using a set of synthetic images, which we call the Chain of Diffusion. Finetuned models generate images that are used for the next iteration of finetuning. We first demonstrate how these iterative processes result in severe degradation in image qualities. Thorough investigations reveal the most impactful factor for the degradation, and we propose finetuning and generation strategies that can effectively resolve the degradation. Our method, Reusable Diffusion Finetuning (ReDiFine), combines condition drop finetuning and CFG scheduling to maintain the qualities of generated images throughout iterations. ReDiFine works effectively for multiple datasets and models without further hyperparameter search, making synthetic images reusable to finetune future generative models.

Submitted: Jul 4, 2024