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Papers/Learning Enriched Features via Selective State Spaces Mode...

Learning Enriched Features via Selective State Spaces Model for Efficient Image Deblurring

Hu Gao, Depeng Dang

2024-03-29DeblurringImage Defocus DeblurringImage Deblurring
PaperPDFCode(official)

Abstract

Image deblurring aims to restore a high-quality image from its corresponding blurred. The emergence of CNNs and Transformers has enabled significant progress. However, these methods often face the dilemma between eliminating long-range degradation perturbations and maintaining computational efficiency. While the selective state space model (SSM) shows promise in modeling long-range dependencies with linear complexity, it also encounters challenges such as local pixel forgetting and channel redundancy. To address this issue, we propose an efficient image deblurring network that leverages selective state spaces model to aggregate enriched and accurate features. Specifically, we introduce an aggregate local and global information block (ALGBlock) designed to effectively capture and integrate both local invariant properties and non-local information. The ALGBlock comprises two primary modules: a module for capturing local and global features (CLGF), and a feature aggregation module (FA). The CLGF module is composed of two branches: the global branch captures long-range dependency features via a selective state spaces model, while the local branch employs simplified channel attention to model local connectivity, thereby reducing local pixel forgetting and channel redundancy. In addition, we design a FA module to accentuate the local part by recalibrating the weight during the aggregation of the two branches for restoration. Experimental results demonstrate that the proposed method outperforms state-of-the-art approaches on widely used benchmarks.

Results

TaskDatasetMetricValueModel
DeblurringRealBlur-JPSNR (sRGB)32.94ALGNet
DeblurringRealBlur-JSSIM (sRGB)0.946ALGNet
DeblurringRealBlur-RPSNR (sRGB)41.16ALGNet
DeblurringRealBlur-RSSIM (sRGB)0.981ALGNet
DeblurringRealBlur-R (trained on GoPro)PSNR (sRGB)36.35ALGNet
DeblurringRealBlur-R (trained on GoPro)SSIM (sRGB)0.961ALGNet
DeblurringRealBlur-J (trained on GoPro)PSNR (sRGB)29.12ALGNet
DeblurringRealBlur-J (trained on GoPro)SSIM (sRGB)0.886ALGNet
2D ClassificationRealBlur-JPSNR (sRGB)32.94ALGNet
2D ClassificationRealBlur-JSSIM (sRGB)0.946ALGNet
2D ClassificationRealBlur-RPSNR (sRGB)41.16ALGNet
2D ClassificationRealBlur-RSSIM (sRGB)0.981ALGNet
2D ClassificationRealBlur-R (trained on GoPro)PSNR (sRGB)36.35ALGNet
2D ClassificationRealBlur-R (trained on GoPro)SSIM (sRGB)0.961ALGNet
2D ClassificationRealBlur-J (trained on GoPro)PSNR (sRGB)29.12ALGNet
2D ClassificationRealBlur-J (trained on GoPro)SSIM (sRGB)0.886ALGNet
Image DeblurringHIDEPSNR31.68ALGNet-B
Image DeblurringGoProPSNR34.05ALGNet-B
Image DeblurringGoProSSIM0.969ALGNet-B
10-shot image generationRealBlur-JPSNR (sRGB)32.94ALGNet
10-shot image generationRealBlur-JSSIM (sRGB)0.946ALGNet
10-shot image generationRealBlur-RPSNR (sRGB)41.16ALGNet
10-shot image generationRealBlur-RSSIM (sRGB)0.981ALGNet
10-shot image generationRealBlur-R (trained on GoPro)PSNR (sRGB)36.35ALGNet
10-shot image generationRealBlur-R (trained on GoPro)SSIM (sRGB)0.961ALGNet
10-shot image generationRealBlur-J (trained on GoPro)PSNR (sRGB)29.12ALGNet
10-shot image generationRealBlur-J (trained on GoPro)SSIM (sRGB)0.886ALGNet
10-shot image generationHIDEPSNR31.68ALGNet-B
10-shot image generationGoProPSNR34.05ALGNet-B
10-shot image generationGoProSSIM0.969ALGNet-B
1 Image, 2*2 StitchiHIDEPSNR31.68ALGNet-B
1 Image, 2*2 StitchiGoProPSNR34.05ALGNet-B
1 Image, 2*2 StitchiGoProSSIM0.969ALGNet-B
16kHIDEPSNR31.68ALGNet-B
16kGoProPSNR34.05ALGNet-B
16kGoProSSIM0.969ALGNet-B
Blind Image DeblurringRealBlur-JPSNR (sRGB)32.94ALGNet
Blind Image DeblurringRealBlur-JSSIM (sRGB)0.946ALGNet
Blind Image DeblurringRealBlur-RPSNR (sRGB)41.16ALGNet
Blind Image DeblurringRealBlur-RSSIM (sRGB)0.981ALGNet
Blind Image DeblurringRealBlur-R (trained on GoPro)PSNR (sRGB)36.35ALGNet
Blind Image DeblurringRealBlur-R (trained on GoPro)SSIM (sRGB)0.961ALGNet
Blind Image DeblurringRealBlur-J (trained on GoPro)PSNR (sRGB)29.12ALGNet
Blind Image DeblurringRealBlur-J (trained on GoPro)SSIM (sRGB)0.886ALGNet

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