TUDSR applies a twice-upsampling diffusion strategy with chunk-based training to achieve state-of-the-art super-resolution at 1024^2 and 2048^2 resolutions using a one-step GAN on SD2.1-base.
Distillation-free one-step diffusion for real-world image super-resolution
4 Pith papers cite this work. Polarity classification is still indexing.
citation-role summary
citation-polarity summary
fields
cs.CV 4years
2026 4roles
method 1polarities
baseline 1representative citing papers
DVFace uses a spatio-temporal dual-codebook and asymmetric fusion in a one-step diffusion model to deliver better video face restoration quality, temporal consistency, and identity preservation than recent methods.
FlowSR reformulates SR as a rectified flow and applies consistency distillation with HR regularization plus fast-slow scheduling to enable single-step high-quality super-resolution.
The NTIRE 2026 challenge establishes a benchmark for x4 super-resolution of remote sensing infrared images, with 13 teams submitting valid methods evaluated on a dedicated dataset.
citing papers explorer
-
TUDSR: Twice Upsampling-Diffusion for Higher Super-Resolution
TUDSR applies a twice-upsampling diffusion strategy with chunk-based training to achieve state-of-the-art super-resolution at 1024^2 and 2048^2 resolutions using a one-step GAN on SD2.1-base.
-
DVFace: Spatio-Temporal Dual-Prior Diffusion for Video Face Restoration
DVFace uses a spatio-temporal dual-codebook and asymmetric fusion in a one-step diffusion model to deliver better video face restoration quality, temporal consistency, and identity preservation than recent methods.
-
Fast Image Super-Resolution via Consistency Rectified Flow
FlowSR reformulates SR as a rectified flow and applies consistency distillation with HR regularization plus fast-slow scheduling to enable single-step high-quality super-resolution.