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Implicit Image-to-Image Schrodinger Bridge for Image Restoration

Abstract

Diffusion-based models have demonstrated remarkable effectiveness in image restoration tasks; however, their iterative denoising process, which starts from Gaussian noise, often leads to slow inference speeds. The Image-to-Image Schrödinger Bridge (I2^2SB) offers a promising alternative by initializing the generative process from corrupted images while leveraging training techniques from score-based diffusion models. In this paper, we introduce the Implicit Image-to-Image Schrödinger Bridge (I3^3SB) to further accelerate the generative process of I2^2SB. I3^3SB restructures the generative process into a non-Markovian framework by incorporating the initial corrupted image at each generative step, effectively preserving and utilizing its information. To enable direct use of pretrained I2^2SB models without additional training, we ensure consistency in marginal distributions. Extensive experiments across many image corruptions, including noise, low resolution, JPEG compression, and sparse sampling, and multiple image modalities, such as natural, human face, and medical images, demonstrate the acceleration benefits of I3^3SB. Compared to I2^2SB, I3^3SB achieves the same perceptual quality with fewer generative steps, while maintaining or improving fidelity to the ground truth.

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@article{wang2025_2403.06069,
  title={ Implicit Image-to-Image Schrodinger Bridge for Image Restoration },
  author={ Yuang Wang and Siyeop Yoon and Pengfei Jin and Matthew Tivnan and Sifan Song and Zhennong Chen and Rui Hu and Li Zhang and Quanzheng Li and Zhiqiang Chen and Dufan Wu },
  journal={arXiv preprint arXiv:2403.06069},
  year={ 2025 }
}
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