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CoRe^2: Collect, Reflect and Refine to Generate Better and Faster

12 March 2025
Shitong Shao
Zikai Zhou
Dian Xie
Yuetong Fang
Tian Ye
Lichen Bai
Zeke Xie
    DiffM
    VLM
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Abstract

Making text-to-image (T2I) generative model sample both fast and well represents a promising research direction. Previous studies have typically focused on either enhancing the visual quality of synthesized images at the expense of sampling efficiency or dramatically accelerating sampling without improving the base model's generative capacity. Moreover, nearly all inference methods have not been able to ensure stable performance simultaneously on both diffusion models (DMs) and visual autoregressive models (ARMs). In this paper, we introduce a novel plug-and-play inference paradigm, CoRe^2, which comprises three subprocesses: Collect, Reflect, and Refine. CoRe^2 first collects classifier-free guidance (CFG) trajectories, and then use collected data to train a weak model that reflects the easy-to-learn contents while reducing number of function evaluations during inference by half. Subsequently, CoRe^2 employs weak-to-strong guidance to refine the conditional output, thereby improving the model's capacity to generate high-frequency and realistic content, which is difficult for the base model to capture. To the best of our knowledge, CoRe^2 is the first to demonstrate both efficiency and effectiveness across a wide range of DMs, including SDXL, SD3.5, and FLUX, as well as ARMs like LlamaGen. It has exhibited significant performance improvements on HPD v2, Pick-of-Pic, Drawbench, GenEval, and T2I-Compbench. Furthermore, CoRe^2 can be seamlessly integrated with the state-of-the-art Z-Sampling, outperforming it by 0.3 and 0.16 on PickScore and AES, while achieving 5.64s time saving usingthis http URLis released atthis https URL.

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@article{shao2025_2503.09662,
  title={ CoRe^2: Collect, Reflect and Refine to Generate Better and Faster },
  author={ Shitong Shao and Zikai Zhou and Dian Xie and Yuetong Fang and Tian Ye and Lichen Bai and Zeke Xie },
  journal={arXiv preprint arXiv:2503.09662},
  year={ 2025 }
}
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