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2026-05-25visioncommunity code

Everything at Every Scale: Scale-Invariant Diffusion with Continuous Super-Resolution

Zixin Jessie Chen, Zhuo Chen, Archer Wang, Jeff Gore, William T. Freeman, Congyue Deng, Marin Soljačić

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Key claim

SKILD unifies image generation and super-resolution effectively.

The SKILD model introduces a unified framework for image generation and super-resolution, achieving impressive results on CIFAR-10 and ImageNet. It operates without task-specific architectures or retraining, making it a versatile tool for image processing.

In plain English

The SKILD model introduces a unified framework for image generation and super-resolution, achieving impressive results on CIFAR-10 and ImageNet. It operates without task-specific architectures or retraining, making it a versatile tool for image processing.

Novelty
8.5/10

The SKILD model unifies image generation and super-resolution in a novel way, leveraging scale invariance.

Reliability
8.0/10

The empirical results on CIFAR-10 and ImageNet are strong, with clear performance metrics provided.

GitHub1 repo
Dihlotar/GMKN_260326_260526Community
Everything at Every Scale: Scale-Invariant Diffusion with Continuous Super-Resolution — Frontier Papers