扩散
噪音(视频)
生成模型
图像(数学)
计算机科学
推论
生成语法
算法
去模糊
各项异性扩散
编码(集合论)
遮罩(插图)
高斯噪声
高斯分布
统计物理学
图像复原
人工智能
图像处理
物理
视觉艺术
艺术
集合(抽象数据类型)
程序设计语言
热力学
量子力学
作者
Arpit Bansal,Eitan Borgnia,Hongmin Chu,Jie S. Li,Hamid Kazemi,Furong Huang,Micah Goldblum,Jonas Geiping,Tom Goldstein
标识
DOI:10.48550/arxiv.2208.09392
摘要
Standard diffusion models involve an image transform -- adding Gaussian noise -- and an image restoration operator that inverts this degradation. We observe that the generative behavior of diffusion models is not strongly dependent on the choice of image degradation, and in fact an entire family of generative models can be constructed by varying this choice. Even when using completely deterministic degradations (e.g., blur, masking, and more), the training and test-time update rules that underlie diffusion models can be easily generalized to create generative models. The success of these fully deterministic models calls into question the community's understanding of diffusion models, which relies on noise in either gradient Langevin dynamics or variational inference, and paves the way for generalized diffusion models that invert arbitrary processes. Our code is available at https://github.com/arpitbansal297/Cold-Diffusion-Models
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