Abstract
Underwater image enhancement has become the requirement for more people to have a better visual experience or to extract information. However, underwater images often suffer from the mixture of color distortion and blurred quality degradation due to the external environment (light attenuation, background noise and the type of water). To solve the above problem, we design a Divide-and-Conquer network (DC-net) for enhancing underwater image, which mainly consists of a texture network, a color network and a refinement network. Specifically, the multi-axis attention block is presented in the texture network, which combine different region/channel features into a single stream structure. And the color network employs an adaptive 3D look-up table method to obtain the color enhanced results. Meanwhile, the refinement network is presented to focus on image features of ground truth. Compared to state-of-the-art (SOTA) underwater image enhance methods, our proposed method can obtain the better visual quality of underwater images and better qualitative and quantitative performance. The code is publicly available at https://github.com/zhengshijian1993/DC-Net.
Publisher
Public Library of Science (PLoS)
Reference52 articles.
1. Derya Akkaynak, Tali Treibitz, Tom Shlesinger, Yossi Loya, Raz Tamir, and David Iluz. What is the space of attenuation coefficients in underwater computer vision? In Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition, pages 4931–4940, 2017.
2. Underwater image enhancement via medium transmission-guided multi-color space embedding;Chongyi Li;IEEE Transactions on Image Processing,2021
3. Junjie Wen, Jinqiang Cui, Zhenjun Zhao, Ruixin Yan, Zhi Gao, Lihua Dou, et al. Syreanet: A physically guided underwater image enhancement framework integrating synthetic and real images. arXiv preprint arXiv:2302.08269, 2023.
4. Ziyuan Xiao, Yina Han, Susanto Rahardja, and Yuanliang Ma. Usln: A statistically guided lightweight network for underwater image enhancement via dual-statistic white balance and multi-color space stretch. arXiv preprint arXiv:2209.02221, 2022.
5. Di Wang, Long Ma, Risheng Liu, and Xin Fan. Semantic-aware texture-structure feature collaboration for underwater image enhancement. In 2022 International Conference on Robotics and Automation (ICRA), pages 4592–4598. IEEE, 2022.
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