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Zero-Shot Blind-spot Image Denoising via Implicit Neural Sampling

2025-01-01CVPR 2025Code Available1· sign in to hype

Yuhui Quan, Tianxiang Zheng, Zhiyuan Ma, Hui Ji

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Abstract

The blind-spot principle has been a widely used tool in zero-shot image denoising but faces challenges with real-world noise that exhibits strong local correlations. Existing methods focus on reducing noise correlation, which also weaken the pixel correlations needed for accurately estimating missing pixels. In this paper, we first present a rigorous analysis of how noise correlation and pixel correlation impact the statistical risk of a linear blind-spot denoiser. We then propose using an implicit neural representation to resample noisy pixels, effectively reducing noise correlation while preserving the essential pixel correlations for successful blind-spot denoising. Extensive experiments show our method surpasses existing zero-shot denoising techniques on real-world noisy images.

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