Alex Ling Yu HungKai ZhaoHaoxin ZhengRan YanSteven S. RamanDemetri TerzopoulosKyunghyun Sung
Conditional image generation plays a vital role in medical image analysis as it is effective in tasks such as super-resolution, denoising, and inpainting, among others. Diffusion models have been shown to perform at a state-of-the-art level in natural image generation, but they have not been thoroughly studied in medical image generation with specific conditions. Moreover, current medical image generation models have their own problems, limiting their usage in various medical image generation tasks. In this paper, we introduce the use of conditional Denoising Diffusion Probabilistic Models (cDDPMs) for medical image generation, which achieve state-of-the-art performance on several medical image generation tasks.
Joshua SchaefferkoetterPaul SchleyerMaurizio Conti
Yuanzhi ZhuZhaohai LiTianwei WangMengchao HeCong Yao
Haomiao NiChanghao ShiKai LiXiaolei HuangMartin Renqiang Min
Xinrong HuYu-Jen ChenTsung-Yi HoYiyu Shi