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Underwater Image Enhancement based on Deep Learning and Image Formation Model

Xuelei Chen, Pin Zhang, Lingwei Quan, Chao Yi, Cunyue Lu

发表年份
2021
引用次数
51
访问权限
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摘要

Underwater robots play an important role in oceanic geological exploration, resource exploitation, ecological research, and other fields. However, the visual perception of underwater robots is affected by various environmental factors. The main challenge now is that images captured by underwater robots are color-distorted. The hue of underwater images tends to be close to green and blue. In addition, the contrast is low and the details are fuzzy. In this paper, a new underwater image enhancement algorithm based on deep learning and image formation model is proposed. Experimental results show that the advantages of the proposed method are that it eliminates the influence of underwater environmental factors, enriches the color, enhances details, achieves higher scores in PSNR and SSIM metrics, and helps feature key-point point matching get better results. Another significant advantage is that its computation speed is much faster than other methods.

关键词

Image (mathematics)UnderwaterArtificial intelligenceDeep learningComputer scienceComputer visionImage formationImage enhancementGeologyOceanography

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