一种有效的水下图像增强框架

Huiqing Zhang, Luyu Sun, Lifang Wu, Ke Gu
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引用次数: 11

摘要

水下图像增强是一项重要的低层次视觉任务,受到了广泛的关注。清晰的水下图像有助于水下作业。然而,原始的水下图像往往遭受不同类型的水下环境造成的畸变。为了解决这些问题,本文提出了一种端到端双生成对抗网络(DuGAN)用于水下图像增强。将现有方法处理后的图像作为训练样本进行参考,并将其分割为清晰部分和不清晰部分。使用两个判别器分别对图像的不同区域采用不同的训练策略完成对抗性训练。该方法能够输出比参考图像更令人满意的图像。同时,为了保证增强图像的真实性,我们将内容损失、对抗损失和风格损失作为我们框架的损失函数。该框架易于使用,主观和客观实验表明,与文献中提到的方法相比,该框架取得了优异的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
DuGAN: An effective framework for underwater image enhancement
Underwater image enhancement is an important low-level vision task with much attention of community. Clear underwater images are helpful for underwater operations. However, raw underwater images often suffer from different types of distortions caused by the underwater environment. To solve these problems, this paper proposes an end-to-end dual generative adversarial network (DuGAN) for underwater image enhancement. The images processed by existing methods are taken as training samples for reference, and they are segmented into clear parts and unclear parts. Two discriminators are used to complete adversarial training toward different areas of images with different training strategies, respectively. The proposed method is able to output more pleasing images than reference images benefit by this framework. Meanwhile, to ensure the authenticity of the enhanced images, content loss, adversarial loss, and style loss are combined as loss function of our framework. This framework is easy to use, and the subjective and objective experiments show that excellent results are achieved compared to those methods mentioned in the literature.
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