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Upsample What Matters: Region-Adaptive Latent Sampling for Accelerated Diffusion Transformers
Episode 1000

Upsample What Matters: Region-Adaptive Latent Sampling for Accelerated Diffusion Transformers

Daily Paper Cast

July 24, 202519m 23s

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Show Notes

🤗 Upvotes: 27 | cs.CV, eess.IV

Authors:
Wongi Jeong, Kyungryeol Lee, Hoigi Seo, Se Young Chun

Title:
Upsample What Matters: Region-Adaptive Latent Sampling for Accelerated Diffusion Transformers

Arxiv:
http://arxiv.org/abs/2507.08422v1

Abstract:
Diffusion transformers have emerged as an alternative to U-net-based diffusion models for high-fidelity image and video generation, offering superior scalability. However, their heavy computation remains a major obstacle to real-world deployment. Existing acceleration methods primarily exploit the temporal dimension such as reusing cached features across diffusion timesteps. Here, we propose Region-Adaptive Latent Upsampling (RALU), a training-free framework that accelerates inference along spatial dimension. RALU performs mixed-resolution sampling across three stages: 1) low-resolution denoising latent diffusion to efficiently capture global semantic structure, 2) region-adaptive upsampling on specific regions prone to artifacts at full-resolution, and 3) all latent upsampling at full-resolution for detail refinement. To stabilize generations across resolution transitions, we leverage noise-timestep rescheduling to adapt the noise level across varying resolutions. Our method significantly reduces computation while preserving image quality by achieving up to 7.0$\times$ speed-up on FLUX and 3.0$\times$ on Stable Diffusion 3 with minimal degradation. Furthermore, RALU is complementary to existing temporal accelerations such as caching methods, thus can be seamlessly integrated to further reduce inference latency without compromising generation quality.