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arxiv:2603.19187

GenMFSR: Generative Multi-Frame Image Restoration and Super-Resolution

Published on Mar 19
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Abstract

GenMFSR presents a novel generative multi-frame raw-to-RGB super-resolution pipeline that leverages foundation model priors for enhanced camera ISP processing while addressing limitations of existing adversarial approaches through targeted loss functions.

AI-generated summary

Camera pipelines receive raw Bayer-format frames that need to be denoised, demosaiced, and often super-resolved. Multiple frames are captured to utilize natural hand tremors and enhance resolution. Multi-frame super-resolution is therefore a fundamental problem in camera pipelines. Existing adversarial methods are constrained by the quality of ground truth. We propose GenMFSR, the first Generative Multi-Frame Raw-to-RGB Super Resolution pipeline, that incorporates image priors from foundation models to obtain sub-pixel information for camera ISP applications. GenMFSR can align multiple raw frames, unlike existing single-frame super-resolution methods, and we propose a loss term that restricts generation to high-frequency regions in the raw domain, thus preventing low-frequency artifacts.

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