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Two-step domain adaptation for underwater image enhancement

Qun Jiang, Yunfeng Zhang, Fangxun Bao, Xiuyang Zhao, Caiming Zhang, Пэйдэ Лю

2021Pattern Recognition140 citationsDOIOpen Access PDF

Abstract

In recent years, underwater image enhancement methods based on deep learning have achieved remarkable results. Since the images obtained in complex underwater scenarios lack a ground truth, these algorithms mainly train models on underwater images synthesized from in-air images. Synthesized underwater images are different from real-world underwater images; this difference leads to the limited generalizability of the training model when enhancing real-world underwater images. In this work, we present an underwater image enhancement method that does not require training on synthetic underwater images and eliminates the dependence on underwater ground-truth images. Specifically, a novel domain adaptation framework for real-world underwater image enhancement inspired by transfer learning is presented; it transfers in-air image dehazing to real-world underwater image enhancement. The experimental results on different real-world underwater scenes indicate that the proposed method produces visually satisfactory results.

Topics & Concepts

UnderwaterArtificial intelligenceComputer scienceComputer visionGeneralizability theoryGround truthImage (mathematics)GeologyMathematicsStatisticsOceanographyImage Enhancement TechniquesAdvanced Image Processing TechniquesAdvanced Vision and Imaging