2024
DOI: 10.3389/fmars.2024.1321549
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A learnable full-frequency transformer dual generative adversarial network for underwater image enhancement

Shijian Zheng,
Rujing Wang,
Shitao Zheng
et al.

Abstract: Underwater applications present unique challenges such as color deviation, noise, and low contrast, which can degrade image quality. Addressing these issues, we propose a novel approach called the learnable full-frequency transformer dual generative adversarial network (LFT-DGAN). Our method comprises several key innovations. Firstly, we introduce a reversible convolution-based image decomposition technique. This method effectively separates underwater image information into low-, medium-, and high-frequency d… Show more

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Cited by 4 publications
(1 citation statement)
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“…Take underwater scenes as an example (depicted in Figure 1): they exhibit various degradation issues and diverse styles. By employing two restoration techniques, Learnable Full-frequency Transformer Dual Generative Adversarial Network (LFT-DGAN) [9], and Divide-and-Conquer network (DC-net) [10], higher-quality images can be generated. Each column represents the same scene but with varying detection outcomes using the cascaded RCNN detector, suggesting a potential link between underwater image restoration and object detection.…”
Section: Introductionmentioning
confidence: 99%
“…Take underwater scenes as an example (depicted in Figure 1): they exhibit various degradation issues and diverse styles. By employing two restoration techniques, Learnable Full-frequency Transformer Dual Generative Adversarial Network (LFT-DGAN) [9], and Divide-and-Conquer network (DC-net) [10], higher-quality images can be generated. Each column represents the same scene but with varying detection outcomes using the cascaded RCNN detector, suggesting a potential link between underwater image restoration and object detection.…”
Section: Introductionmentioning
confidence: 99%