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A Wavelet-based Dual-stream Network for Underwater Image Enhancement

About

We present a wavelet-based dual-stream network that addresses color cast and blurry details in underwater images. We handle these artifacts separately by decomposing an input image into multiple frequency bands using discrete wavelet transform, which generates the downsampled structure image and detail images. These sub-band images are used as input to our dual-stream network that incorporates two sub-networks: the multi-color space fusion network and the detail enhancement network. The multi-color space fusion network takes the decomposed structure image as input and estimates the color corrected output by employing the feature representations from diverse color spaces of the input. The detail enhancement network addresses the blurriness of the original underwater image by improving the image details from high-frequency sub-bands. We validate the proposed method on both real-world and synthetic underwater datasets and show the effectiveness of our model in color correction and blur removal with low computational complexity.

Ziyin Ma, Changjae Oh• 2022

Related benchmarks

TaskDatasetResultRank
Underwater Image EnhancementU45
UCIQE0.51
23
Underwater Image EnhancementLSUI (test)
PSNR15.43
19
Underwater Image EnhancementChallenge
UCIQE0.55
13
Underwater Image EnhancementUIEB
PSNR13.68
13
Underwater Image EnhancementEUVP
PSNR13.93
13
Underwater Image EnhancementUIEBD (test)
FID85.12
9
Underwater Image EnhancementU45 (test)
UIQM2.458
9
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