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Patch Diffusion: Faster and More Data-Efficient Training of Diffusion Models

Authors :
Wang, Zhendong
Jiang, Yifan
Zheng, Huangjie
Wang, Peihao
He, Pengcheng
Wang, Zhangyang
Chen, Weizhu
Zhou, Mingyuan
Publication Year :
2023
Publisher :
arXiv, 2023.

Abstract

Diffusion models are powerful, but they require a lot of time and data to train. We propose Patch Diffusion, a generic patch-wise training framework, to significantly reduce the training time costs while improving data efficiency, which thus helps democratize diffusion model training to broader users. At the core of our innovations is a new conditional score function at the patch level, where the patch location in the original image is included as additional coordinate channels, while the patch size is randomized and diversified throughout training to encode the cross-region dependency at multiple scales. Sampling with our method is as easy as in the original diffusion model. Through Patch Diffusion, we could achieve $\mathbf{\ge 2\times}$ faster training, while maintaining comparable or better generation quality. Patch Diffusion meanwhile improves the performance of diffusion models trained on relatively small datasets, $e.g.$, as few as 5,000 images to train from scratch. We achieve state-of-the-art FID scores 1.77 on CelebA-64$\times$64 and 1.93 on AFHQv2-Wild-64$\times$64. We will share our code and pre-trained models soon.

Details

Database :
OpenAIRE
Accession number :
edsair.doi.dedup.....fe75388f030f47762ab6ae525ae3b488
Full Text :
https://doi.org/10.48550/arxiv.2304.12526