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Papers/DeblurDiNAT: A Compact Model with Exceptional Generalizati...

DeblurDiNAT: A Compact Model with Exceptional Generalization and Visual Fidelity on Unseen Domains

Hanzhou Liu, Binghan Li, Chengkai Liu, Mi Lu

2024-03-19DeblurringImage DeblurringSSIMImage Restoration
PaperPDFCode(official)

Abstract

Recent deblurring networks have effectively restored clear images from the blurred ones. However, they often struggle with generalization to unknown domains. Moreover, these models typically focus on distortion metrics such as PSNR and SSIM, neglecting the critical aspect of metrics aligned with human perception. To address these limitations, we propose DeblurDiNAT, a deblurring Transformer based on Dilated Neighborhood Attention. First, DeblurDiNAT employs an alternating dilation factor paradigm to capture both local and global blurred patterns, enhancing generalization and perceptual clarity. Second, a local cross-channel learner aids the Transformer block to understand the short-range relationships between adjacent channels. Additionally, we present a linear feed-forward network with a simple while effective design. Finally, a dual-stage feature fusion module is introduced as an alternative to the existing approach, which efficiently process multi-scale visual information across network levels. Compared to state-of-the-art models, our compact DeblurDiNAT demonstrates superior generalization capabilities and achieves remarkable performance in perceptual metrics, while maintaining a favorable model size.

Results

TaskDatasetMetricValueModel
DeblurringGoProPSNR33.63DeblurDiNAT-L
DeblurringGoProSSIM0.967DeblurDiNAT-L
DeblurringRealBlur-R (trained on GoPro)PSNR (sRGB)36.09DeblurDiNAT-L
DeblurringRealBlur-R (trained on GoPro)SSIM (sRGB)0.955DeblurDiNAT-L
DeblurringRealBlur-J (trained on GoPro)PSNR (sRGB)28.98DeblurDiNAT-L
DeblurringRealBlur-J (trained on GoPro)SSIM (sRGB)0.885DeblurDiNAT-L
DeblurringHIDE (trained on GOPRO)PSNR (sRGB)31.47DeblurDiNAT-L
DeblurringHIDE (trained on GOPRO)Params (M)16.1DeblurDiNAT-L
DeblurringHIDE (trained on GOPRO)SSIM (sRGB)0.944DeblurDiNAT-L
2D ClassificationGoProPSNR33.63DeblurDiNAT-L
2D ClassificationGoProSSIM0.967DeblurDiNAT-L
2D ClassificationRealBlur-R (trained on GoPro)PSNR (sRGB)36.09DeblurDiNAT-L
2D ClassificationRealBlur-R (trained on GoPro)SSIM (sRGB)0.955DeblurDiNAT-L
2D ClassificationRealBlur-J (trained on GoPro)PSNR (sRGB)28.98DeblurDiNAT-L
2D ClassificationRealBlur-J (trained on GoPro)SSIM (sRGB)0.885DeblurDiNAT-L
2D ClassificationHIDE (trained on GOPRO)PSNR (sRGB)31.47DeblurDiNAT-L
2D ClassificationHIDE (trained on GOPRO)Params (M)16.1DeblurDiNAT-L
2D ClassificationHIDE (trained on GOPRO)SSIM (sRGB)0.944DeblurDiNAT-L
10-shot image generationGoProPSNR33.63DeblurDiNAT-L
10-shot image generationGoProSSIM0.967DeblurDiNAT-L
10-shot image generationRealBlur-R (trained on GoPro)PSNR (sRGB)36.09DeblurDiNAT-L
10-shot image generationRealBlur-R (trained on GoPro)SSIM (sRGB)0.955DeblurDiNAT-L
10-shot image generationRealBlur-J (trained on GoPro)PSNR (sRGB)28.98DeblurDiNAT-L
10-shot image generationRealBlur-J (trained on GoPro)SSIM (sRGB)0.885DeblurDiNAT-L
10-shot image generationHIDE (trained on GOPRO)PSNR (sRGB)31.47DeblurDiNAT-L
10-shot image generationHIDE (trained on GOPRO)Params (M)16.1DeblurDiNAT-L
10-shot image generationHIDE (trained on GOPRO)SSIM (sRGB)0.944DeblurDiNAT-L
Blind Image DeblurringGoProPSNR33.63DeblurDiNAT-L
Blind Image DeblurringGoProSSIM0.967DeblurDiNAT-L
Blind Image DeblurringRealBlur-R (trained on GoPro)PSNR (sRGB)36.09DeblurDiNAT-L
Blind Image DeblurringRealBlur-R (trained on GoPro)SSIM (sRGB)0.955DeblurDiNAT-L
Blind Image DeblurringRealBlur-J (trained on GoPro)PSNR (sRGB)28.98DeblurDiNAT-L
Blind Image DeblurringRealBlur-J (trained on GoPro)SSIM (sRGB)0.885DeblurDiNAT-L
Blind Image DeblurringHIDE (trained on GOPRO)PSNR (sRGB)31.47DeblurDiNAT-L
Blind Image DeblurringHIDE (trained on GOPRO)Params (M)16.1DeblurDiNAT-L
Blind Image DeblurringHIDE (trained on GOPRO)SSIM (sRGB)0.944DeblurDiNAT-L

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