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Variational Control for Guidance in Diffusion Models

About

Diffusion models exhibit excellent sample quality, but existing guidance methods often require additional model training or are limited to specific tasks. We revisit guidance in diffusion models from the perspective of variational inference and control, introducing Diffusion Trajectory Matching (DTM) that enables guiding pretrained diffusion trajectories to satisfy a terminal cost. DTM unifies a broad class of guidance methods and enables novel instantiations. We introduce a new method within this framework that achieves state-of-the-art results on several linear, non-linear, and blind inverse problems without requiring additional model training or specificity to pixel or latent space diffusion models. Our code will be available at https://github.com/czi-ai/oc-guidance

Kushagra Pandey, Farrin Marouf Sofian, Felix Draxler, Theofanis Karaletsos, Stephan Mandt• 2025

Related benchmarks

TaskDatasetResultRank
Super-ResolutionFFHQ 256 x 256
PSNR29.9
52
Super-ResolutionImageNet 256
PSNR22.58
50
InpaintingImageNet 256
PSNR20.65
30
HDR ReconstructionFFHQ 256 x 256
PSNR25.4
14
HDR ReconstructionImageNet 256 x 256
PSNR22.52
13
Random Inpainting (90%)FFHQ-256
Inference Time (s)4.1
10
Random Inpainting (90%)ImageNet 256
Time (s)5.8
10
Super-Resolution (x4)FFHQ-256
Time (s)4.1
10
Super-resolution (x8)FFHQ-256
Time (s)4.1
10
Super-resolution (x8)ImageNet 256
Time (s)5.8
10
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