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Masked and Shuffled Blind Spot Denoising for Real-World Images

About

We introduce a novel approach to single image denoising based on the Blind Spot Denoising principle, which we call MAsked and SHuffled Blind Spot Denoising (MASH). We focus on the case of correlated noise, which often plagues real images. MASH is the result of a careful analysis to determine the relationships between the level of blindness (masking) of the input and the (unknown) noise correlation. Moreover, we introduce a shuffling technique to weaken the local correlation of noise, which in turn yields an additional denoising performance improvement. We evaluate MASH via extensive experiments on real-world noisy image datasets. We demonstrate on par or better results compared to existing self-supervised denoising methods.

Hamadi Chihaoui, Paolo Favaro• 2024

Related benchmarks

TaskDatasetResultRank
Image DenoisingSIDD (val)
PSNR35.06
105
Image DenoisingSIDD Benchmark
PSNR34.8
61
Image DenoisingPolyU
PSNR37.62
56
Image DenoisingCC
PSNR31.17
40
Image DenoisingFMDD
PSNR33.71
31
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