A Survey on Generative Diffusion Models 论文

2024IEEE Transactions on Knowledge and Data Engineering引用 431
Machine Learning in Materials ScienceGenerative Adversarial Networks and Image Synthesis

详细信息

发表期刊/会议
IEEE Transactions on Knowledge and Data Engineering
发表日期
2024-02-02
发表年份
2024

关键词

Machine Learning in Materials ScienceGenerative Adversarial Networks and Image Synthesis

摘要

Deep generative models have unlocked another profound realm of human creativity. By capturing and generalizing patterns within data, we have entered the epoch of all-encompassing Artificial Intelligence for General Creativity (AIGC). Notably, diffusion models, recognized as one of the paramount generative models, materialize human ideation into tangible instances across diverse domains, encompassing imagery, text, speech, biology, and healthcare. To provide advanced and comprehensive insights into diffusion, this survey comprehensively elucidates its developmental trajectory and future directions from three distinct angles: the fundamental formulation of diffusion, algorithmic enhancements, and the manifold applications of diffusion. Each layer is meticulously explored to offer a profound comprehension of its evolution. Structured and summarized approaches are presented here.