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Papers/Unified-Width Adaptive Dynamic Network for All-In-One Imag...

Unified-Width Adaptive Dynamic Network for All-In-One Image Restoration

Yimin Xu, Nanxi Gao, Zhongyun Shan, Fei Chao, Rongrong Ji

2024-01-24Image RestorationAll
PaperPDFCode(official)

Abstract

In contrast to traditional image restoration methods, all-in-one image restoration techniques are gaining increased attention for their ability to restore images affected by diverse and unknown corruption types and levels. However, contemporary all-in-one image restoration methods omit task-wise difficulties and employ the same networks to reconstruct images afflicted by diverse degradations. This practice leads to an underestimation of the task correlations and suboptimal allocation of computational resources. To elucidate task-wise complexities, we introduce a novel concept positing that intricate image degradation can be represented in terms of elementary degradation. Building upon this foundation, we propose an innovative approach, termed the Unified-Width Adaptive Dynamic Network (U-WADN), consisting of two pivotal components: a Width Adaptive Backbone (WAB) and a Width Selector (WS). The WAB incorporates several nested sub-networks with varying widths, which facilitates the selection of the most apt computations tailored to each task, thereby striking a balance between accuracy and computational efficiency during runtime. For different inputs, the WS automatically selects the most appropriate sub-network width, taking into account both task-specific and sample-specific complexities. Extensive experiments across a variety of image restoration tasks demonstrate that the proposed U-WADN achieves better performance while simultaneously reducing up to 32.3\% of FLOPs and providing approximately 15.7\% real-time acceleration. The code has been made available at \url{https://github.com/xuyimin0926/U-WADN}.

Results

TaskDatasetMetricValueModel
Image Restoration3-DegradationsAverage PSNR31.47U-WADN
Image Restoration3-DegradationsSSIM0.91U-WADN
10-shot image generation3-DegradationsAverage PSNR31.47U-WADN
10-shot image generation3-DegradationsSSIM0.91U-WADN
Unified Image Restoration3-DegradationsAverage PSNR31.47U-WADN
Unified Image Restoration3-DegradationsSSIM0.91U-WADN

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