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Underwater Ranker: Learn Which Is Better and How to Be Better

About

In this paper, we present a ranking-based underwater image quality assessment (UIQA) method, abbreviated as URanker. The URanker is built on the efficient conv-attentional image Transformer. In terms of underwater images, we specially devise (1) the histogram prior that embeds the color distribution of an underwater image as histogram token to attend global degradation and (2) the dynamic cross-scale correspondence to model local degradation. The final prediction depends on the class tokens from different scales, which comprehensively considers multi-scale dependencies. With the margin ranking loss, our URanker can accurately rank the order of underwater images of the same scene enhanced by different underwater image enhancement (UIE) algorithms according to their visual quality. To achieve that, we also contribute a dataset, URankerSet, containing sufficient results enhanced by different UIE algorithms and the corresponding perceptual rankings, to train our URanker. Apart from the good performance of URanker, we found that a simple U-shape UIE network can obtain promising performance when it is coupled with our pre-trained URanker as additional supervision. In addition, we also propose a normalization tail that can significantly improve the performance of UIE networks. Extensive experiments demonstrate the state-of-the-art performance of our method. The key designs of our method are discussed. We will release our dataset and code.

Chunle Guo, Ruiqi Wu, Xin Jin, Linghao Han, Zhi Chai, Weidong Zhang, Chongyi Li• 2022

Related benchmarks

TaskDatasetResultRank
Underwater Image EnhancementUIEB
PSNR22.459
16
Underwater Image EnhancementUIEB (T90)
PSNR22.82
12
Underwater Image EnhancementDeepSea (T80)
UIQM3.071
12
Underwater Image EnhancementUIEB C60
UIQM2.508
12
Underwater Image EnhancementEUVP T515
UIQM2.767
12
Underwater Image EnhancementRUIE (T78)
UIQM3.061
12
Underwater light field image enhancementLFUB (test)
PSNR18.48
12
Underwater Image EnhancementGeneral Architectural Comparison 1.0 (UEIB-T90)
PSNR22.82
8
Underwater Image EnhancementHICRD
CCF29.09
6
Underwater Image RestorationPRISMA and NASA EO
CCF18.5
6
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