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Next-Scale Prediction: A Self-Supervised Approach for Real-World Image Denoising

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Self-supervised real-world image denoising remains a fundamental challenge, arising from the antagonistic trade-off between decorrelating spatially structured noise and preserving high-frequency details. Existing blind-spot network (BSN) methods rely on pixel-shuffle downsampling (PD) to decorrelate noise, but aggressive downsampling fragments fine structures, while milder downsampling fails to remove correlated noise. To address this, we introduce Next-Scale Prediction (NSP), a novel self-supervised paradigm that decouples noise decorrelation from detail preservation. NSP constructs cross-scale training pairs, where BSN takes low-resolution, fully decorrelated sub-images as input to predict high-resolution targets that retain fine details. As a by-product, NSP naturally supports super-resolution of noisy images without retraining or modification. Extensive experiments demonstrate that NSP achieves state-of-the-art self-supervised denoising performance on real-world benchmarks, significantly alleviating the long-standing conflict between noise decorrelation and detail preservation.

Yiwen Shan, Haiyu Zhao, Peng Hu, Xi Peng, Yuanbiao Gou• 2025

Related benchmarks

TaskDatasetResultRank
Image DenoisingSIDD (val)
PSNR37.12
105
Image DenoisingDND
PSNR37.87
99
Image DenoisingSIDD Benchmark
PSNR37.46
61
Noisy image super-resolutionSIDD (val)
PSNR35.53
12
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