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Adversarial diffusion distillation

8 Pith papers cite this work. Polarity classification is still indexing.

8 Pith papers citing it

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2026 8

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UNVERDICTED 8

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representative citing papers

Inverse Design for Conditional Distribution Matching

cs.LG · 2026-05-10 · unverdicted · novelty 7.0

Defines Conditional Distribution Matching (CDM) as finding inputs whose induced conditional distributions match a target distribution and proposes the MLGD-F inference-time algorithm using pretrained diffusion models to solve it without retraining.

Efficient Video Diffusion Models: Advancements and Challenges

cs.CV · 2026-04-17 · unverdicted · novelty 7.0

A survey that groups efficient video diffusion methods into four paradigms—step distillation, efficient attention, model compression, and cache/trajectory optimization—and outlines open challenges for practical use.

OSOR: One-Step Diffusion Inpainting for Effect-Aware Object Removal

cs.CV · 2026-06-26 · unverdicted · novelty 6.0

OSOR is a one-step diffusion inpainting method using an occupancy-guided discriminator, alpha head, and semantic-anchored verification pipeline to achieve effect-aware object removal, outperforming multi-step baselines in quality at 4-30x speed.

Improving Generative Adversarial Networks with Self-Distillation

cs.CV · 2026-05-09 · unverdicted · novelty 6.0

SD-GAN uses the EMA generator as a teacher to distill perceptual knowledge to the training generator, improving FID scores, stabilizing training, and providing guidance uncorrelated with standard adversarial loss.

citing papers explorer

Showing 8 of 8 citing papers after filters.

  • StAD: Stein Amortized Divergence for Fast Likelihoods with Diffusion and Flow stat.ML · 2026-05-15 · unverdicted · none · ref 22

    StAD distills divergence of PF-ODEs via the Langevin-Stein operator for faster, lower-variance likelihood estimation in generative models without Jacobian costs.

  • Inverse Design for Conditional Distribution Matching cs.LG · 2026-05-10 · unverdicted · none · ref 33

    Defines Conditional Distribution Matching (CDM) as finding inputs whose induced conditional distributions match a target distribution and proposes the MLGD-F inference-time algorithm using pretrained diffusion models to solve it without retraining.

  • Sparse-to-Complete: From Sparse Image Captures to Complete 3D Scenes cs.CV · 2026-05-07 · unverdicted · none · ref 7

    S2C-3D reconstructs complete high-fidelity 3D scenes from as few as 6-8 images by finetuning a diffusion model on scene data, applying consistency-conditioned sampling, and planning trajectories for full coverage.

  • Efficient Video Diffusion Models: Advancements and Challenges cs.CV · 2026-04-17 · unverdicted · none · ref 113

    A survey that groups efficient video diffusion methods into four paradigms—step distillation, efficient attention, model compression, and cache/trajectory optimization—and outlines open challenges for practical use.

  • OSOR: One-Step Diffusion Inpainting for Effect-Aware Object Removal cs.CV · 2026-06-26 · unverdicted · none · ref 36

    OSOR is a one-step diffusion inpainting method using an occupancy-guided discriminator, alpha head, and semantic-anchored verification pipeline to achieve effect-aware object removal, outperforming multi-step baselines in quality at 4-30x speed.

  • K-Forcing: Joint Next-K-Token Decoding via Push-Forward Language Modeling cs.LG · 2026-06-09 · unverdicted · none · ref 16

    K-Forcing introduces progressive self-forcing distillation to train a conditional push-forward model that jointly decodes k future tokens per forward pass, yielding 2.4-3.5x speedup at k=4 with modest quality loss on LM1B and OpenWebText.

  • Improving Generative Adversarial Networks with Self-Distillation cs.CV · 2026-05-09 · unverdicted · none · ref 34

    SD-GAN uses the EMA generator as a teacher to distill perceptual knowledge to the training generator, improving FID scores, stabilizing training, and providing guidance uncorrelated with standard adversarial loss.

  • One-Forcing: Towards Stable One-Step Autoregressive Video Generation cs.CV · 2026-05-22 · unverdicted · none · ref 48

    One-Forcing augments DMD with a GAN loss to enable stable one-step causal autoregressive video generation, reporting a VBench score of 83.76 as SOTA among one-step methods.