Diffusion models as plug-and-play priors
–Neural Information Processing Systems
The auxiliary constraint is expected to have a differentiable form, but can come from diverse sources. The possibility of such inference turns diffusion models into plug-and-play modules, thereby allowing a range of potential applications in adapting models to new domains and tasks, such as conditional generation or image segmentation. The structure of diffusion models allows us to perform approximate inference by iterating differentiation through the fixed denoising network enriched with different amounts of noise at each step.
Neural Information Processing Systems
Aug-15-2025, 04:57:25 GMT
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