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DREAM: Diffusion Rectification and Estimation-Adaptive Models

30 November 2023
Jinxin Zhou
Tianyu Ding
Tianyi Chen
Jiachen Jiang
Ilya Zharkov
Zhihui Zhu
Luming Liang
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Abstract

We present DREAM, a novel training framework representing Diffusion Rectification and Estimation Adaptive Models, requiring minimal code changes (just three lines) yet significantly enhancing the alignment of training with sampling in diffusion models. DREAM features two components: diffusion rectification, which adjusts training to reflect the sampling process, and estimation adaptation, which balances perception against distortion. When applied to image super-resolution (SR), DREAM adeptly navigates the tradeoff between minimizing distortion and preserving high image quality. Experiments demonstrate DREAM's superiority over standard diffusion-based SR methods, showing a 222 to 3×3\times 3× faster training convergence and a 101010 to 20×20\times20× reduction in sampling steps to achieve comparable results. We hope DREAM will inspire a rethinking of diffusion model training paradigms.

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