基于视网膜分解和无监督生成对抗网络的水下图像增强

Q3 Engineering
Yong Lai, Xuebo Zhang, Zhouyan He, Yang Song, Ting Luo, Haiyong Xu
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引用次数: 0

摘要

背景:由于难以获得真实的水下图像配对数据集,构建无监督水下图像增强网络迫在眉睫。目的:针对水下图像增强问题,提出了一种基于Retinex分解和无监督生成对抗网络(RUGAN)的水下图像增强方法。方法:针对水下图像的不同色彩失真,提出一种色彩校正模块。进一步,考虑到人类视觉感知机制,利用水下成像和Retinex分解的特点,构建了类似于U-Net的RUGAN网络。基于Retinex分解和水下成像的特点,构建了类似于U-Net的RUGAN网络。得到了反射图像和照明图像。选取效果较好的反射图像作为增强结果。与以往的监督方法不同,RUGAN采用清澈的空气图像和失真的水下图像作为训练。RUGAN采用色彩校正模块的水下图像作为伪地面真值,实现无监督效果。结果:大量的实验将RUGAN网络与其他方法进行了比较,进一步证明了该网络的优越性。结论:所提出的RUGAN在主观上和客观上都取得了较好的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Underwater Image Enhancement based on Retinex Decomposition and Unsupervised Generative Adversarial Networks
Background:: Due to the difficulty of obtaining the real dataset of paired underwater images, it is urgent to build an unsupervised underwater image enhancement network. Objective:: To address the problem, a novel underwater image enhancement based on Retinex decomposition and Unsupervised Generative Adversarial Network (RUGAN) is proposed. Method:: A color correction module is proposed considering the different color distortions of underwater images. Further, considering the human visual perception mechanism, the RUGAN network, which is similar to U-Net, is constructed using the characteristics of underwater imaging and Retinex decomposition. Based on Retinex decomposition and the characteristics of underwater imaging, the RUGAN network similar to U-Net is constructed. The reflectance image and illumination image are obtained. The reflectance image with a better effect is taken as the enhancement result. Unlike the previous supervised methods, RUGAN adopts clear air images and distorted underwater images as training. RUGAN adopts the underwater image of the color correction module as pseudo-ground truth to achieve an unsupervised effect. Results:: The superiority of RUGAN network is further supported by extensive experiments that compared it with more methods. conclusion: The proposed RUGAN achieves better results both subjectively and objectively.
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来源期刊
Recent Patents on Engineering
Recent Patents on Engineering Engineering-Engineering (all)
CiteScore
1.40
自引率
0.00%
发文量
100
期刊介绍: Recent Patents on Engineering publishes review articles by experts on recent patents in the major fields of engineering. A selection of important and recent patents on engineering is also included in the journal. The journal is essential reading for all researchers involved in engineering sciences.
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