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PUCA: Patch-Unshuffle and Channel Attention for Enhanced Self-Supervised Image Denoising

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arxiv 2310.10088 v1 pith:Y7VGY77U submitted 2023-10-16 eess.IV cs.CVcs.LG

PUCA: Patch-Unshuffle and Channel Attention for Enhanced Self-Supervised Image Denoising

classification eess.IV cs.CVcs.LG
keywords denoisingself-supervisedimagej-invariancepucabeenbsnsattention
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Although supervised image denoising networks have shown remarkable performance on synthesized noisy images, they often fail in practice due to the difference between real and synthesized noise. Since clean-noisy image pairs from the real world are extremely costly to gather, self-supervised learning, which utilizes noisy input itself as a target, has been studied. To prevent a self-supervised denoising model from learning identical mapping, each output pixel should not be influenced by its corresponding input pixel; This requirement is known as J-invariance. Blind-spot networks (BSNs) have been a prevalent choice to ensure J-invariance in self-supervised image denoising. However, constructing variations of BSNs by injecting additional operations such as downsampling can expose blinded information, thereby violating J-invariance. Consequently, convolutions designed specifically for BSNs have been allowed only, limiting architectural flexibility. To overcome this limitation, we propose PUCA, a novel J-invariant U-Net architecture, for self-supervised denoising. PUCA leverages patch-unshuffle/shuffle to dramatically expand receptive fields while maintaining J-invariance and dilated attention blocks (DABs) for global context incorporation. Experimental results demonstrate that PUCA achieves state-of-the-art performance, outperforming existing methods in self-supervised image denoising.

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