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Uncertainty Inspired Underwater Image Enhancement

About

A main challenge faced in the deep learning-based Underwater Image Enhancement (UIE) is that the ground truth high-quality image is unavailable. Most of the existing methods first generate approximate reference maps and then train an enhancement network with certainty. This kind of method fails to handle the ambiguity of the reference map. In this paper, we resolve UIE into distribution estimation and consensus process. We present a novel probabilistic network to learn the enhancement distribution of degraded underwater images. Specifically, we combine conditional variational autoencoder with adaptive instance normalization to construct the enhancement distribution. After that, we adopt a consensus process to predict a deterministic result based on a set of samples from the distribution. By learning the enhancement distribution, our method can cope with the bias introduced in the reference map labeling to some extent. Additionally, the consensus process is useful to capture a robust and stable result. We examined the proposed method on two widely used real-world underwater image enhancement datasets. Experimental results demonstrate that our approach enables sampling possible enhancement predictions. Meanwhile, the consensus estimate yields competitive performance compared with state-of-the-art UIE methods. Code available at https://github.com/zhenqifu/PUIE-Net.

Zhenqi Fu, Wu Wang, Yue Huang, Xinghao Ding, Kai-Kuang Ma• 2022

Related benchmarks

TaskDatasetResultRank
Underwater Image EnhancementU45
UCIQE0.388
33
Underwater Image EnhancementChallenge
UCIQE0.376
23
Underwater Image EnhancementEUVP
UCIQE57.57
21
Underwater Image EnhancementLSUI L400 (test)
PSNR24.14
17
Underwater Image RestorationRUIE
UIQM3.053
17
Underwater Image EnhancementR53 (test)
PAUQA41.23
16
Underwater Image EnhancementC60 (test)
PAUQA Score41.45
16
Underwater Image EnhancementUIEB
PSNR22.18
16
Underwater Image EnhancementT622 (test)
PSNR23.01
16
Underwater Image EnhancementU80 (test)
PSNR20.45
16
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