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arxiv:2605.18736

Spectral Progressive Diffusion for Efficient Image and Video Generation

Published on May 20
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Abstract

Spectral Progressive Diffusion accelerates diffusion model generation by progressively increasing resolution along the denoising trajectory using spectral noise expansion and optimal scheduling derived from the model's power spectrum.

AI-generated summary

Diffusion models have been shown to implicitly generate visual content autoregressively in the frequency domain, where low-frequency components are generated earlier in the denoising process while high-frequency details emerge only in later timesteps. This structure offers a natural opportunity for efficient generation, as high-resolution computation on noise-dominated frequencies is largely redundant. We propose Spectral Progressive Diffusion, a general framework that progressively grows resolution along the denoising trajectory of pretrained diffusion models. To this end, we develop a spectral noise expansion mechanism and derive an optimal resolution schedule from the model's power spectrum. Our framework supports training-free acceleration and a novel fine-tuning recipe that further improves efficiency and quality. We demonstrate significant speedups on state-of-the-art pretrained image and video generation models while preserving visual quality.

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