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SIR-DIFF: Sparse Image Sets Restoration with Multi-View Diffusion Model

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arxiv 2503.14463 v1 pith:DZPOQ3FD submitted 2025-03-18 cs.CV

SIR-DIFF: Sparse Image Sets Restoration with Multi-View Diffusion Model

classification cs.CV
keywords multi-viewimageinformationmodelrestorationscenedegradeddiffusion
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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The computer vision community has developed numerous techniques for digitally restoring true scene information from single-view degraded photographs, an important yet extremely ill-posed task. In this work, we tackle image restoration from a different perspective by jointly denoising multiple photographs of the same scene. Our core hypothesis is that degraded images capturing a shared scene contain complementary information that, when combined, better constrains the restoration problem. To this end, we implement a powerful multi-view diffusion model that jointly generates uncorrupted views by extracting rich information from multi-view relationships. Our experiments show that our multi-view approach outperforms existing single-view image and even video-based methods on image deblurring and super-resolution tasks. Critically, our model is trained to output 3D consistent images, making it a promising tool for applications requiring robust multi-view integration, such as 3D reconstruction or pose estimation.

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