水下
计算机科学
稳健性(进化)
人工智能
计算机视觉
编码器
先验概率
像素
频道(广播)
遥感
贝叶斯概率
计算机网络
生物化学
海洋学
化学
基因
地质学
操作系统
作者
Dehuan Zhang,Jingchun Zhou,Weishi Zhang,Zifan Lin,Jian Yao,Kemal Polat,Fayadh Alenezi,Adi Alhudhaif
标识
DOI:10.1016/j.eswa.2023.120842
摘要
Due to the complex underwater environment, underwater images exhibit different degradation characteristics, severely affecting their practical applications. Although underwater image enhancement networks with physical priors exist, the statistical priors are not applicable in extreme underwater scenes. Therefore, we propose ReX-Net, a reflectance-guided underwater image enhancement network for extreme scenarios. ReX-Net leverages the complementary information of reflectance and the underwater image obtained through the original encoder and reflectance encoder to minimize the impact of different scene environments. As underwater images contain object information at different scales, the encoder includes a TriFuse reflected-image object extractor module (TRIOE), which employs Tri-scale convolutions to capture features at different scales and utilize attention mechanisms to enhance channel and spatial information. In the decoder, we design a context-sensitive multi-level integration module (CSMLI) to fuse feature vectors at different resolutions, thereby improving the expressiveness and robustness of features while avoiding artifacts and ensuring pixel accuracy. Experiments on multiple datasets demonstrate that ReX-Net outperforms existing methods. Furthermore, application experiments show the practicality of ReX-Net in other visualization tasks.
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