Underwater Image Enhancement Using Dual Adversarial Network

Zhengao Wang, Tanlin Li, Wenzheng Qu
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引用次数: 1

Abstract

Since the degradation of the image has seriously constrained the development of marine research, the underwater image enhancement has been paid more and more attentions. Due to the diversity of underwater images (for example, underwater images show different attenuation and color bias in different scenes) and the lack of underwater datasets, most existing methods usually show satisfactory results on some kinds of underwater types. To solve the problems, we built a novel model, including two adversarial network blocks, to learn the essential content features of multiple underwater types and restore high quality images. We trained the model under the synthetic dataset based on Jerlov underwater type image dataset. Experimental results show that the model not only outperforms most previous methods in PSNR and UIQM but also shows the generalization ability.
基于双对抗网络的水下图像增强
由于图像的退化严重制约了海洋研究的发展,水下图像增强越来越受到人们的重视。由于水下图像的多样性(例如,水下图像在不同场景下呈现出不同的衰减和颜色偏差)以及水下数据集的缺乏,现有的大多数方法通常对某些水下类型具有满意的效果。为了解决这一问题,我们建立了一个新的模型,包括两个对抗网络块,以学习多种水下类型的本质内容特征,并恢复高质量的图像。我们在基于Jerlov水下类型图像数据集的合成数据集下训练模型。实验结果表明,该模型不仅在PSNR和UIQM方面优于以往的大多数方法,而且具有良好的泛化能力。
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