Underwater enhancement based on a self-learning strategy and attention mechanism for high-intensity regions

Q4 Computer Science
Claudio D. Mello, Bryan U. Moreira, Paulo J. O. Evald, Paulo L. J. Drews-Jr, Silvia S. Botelho
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引用次数: 5

Abstract

Images acquired during underwater activities suffer from environmental properties of the water, such as turbidity and light attenuation. These phenomena cause color distortion, blurring, and contrast reduction. In addition, irregular ambient light distribution causes color channel unbalance and regions with high-intensity pixels. Recent works related to underwater image enhancement, and based on deep learning approaches, tackle the lack of paired datasets generating synthetic ground-truth. In this paper, we present a self-supervised learning methodology for underwater image enhancement based on deep learning that requires no paired datasets. The proposed method estimates the degradation present in underwater images. Besides, an autoencoder reconstructs this image, and its output image is degraded using the estimated degradation information. Therefore, the strategy replaces the output image with the degraded version in the loss function during the training phase. This procedure \textit{misleads} the neural network that learns to compensate the additional degradation. As a result, the reconstructed image is an enhanced version of the input image. Also, the algorithm presents an attention module to reduce high-intensity areas generated in enhanced images by color channel unbalances and outlier regions. Furthermore, the proposed methodology requires no ground-truth. Besides, only real underwater images were used to train the neural network, and the results indicate the effectiveness of the method in terms of color preservation, color cast reduction, and contrast improvement.
基于自学习策略和高强度区域注意机制的水下增强
在水下活动中获得的图像受到水的环境特性的影响,如浊度和光衰减。这些现象导致色彩失真、模糊和对比度降低。此外,不规则的环境光分布导致色彩通道不平衡和高强度像素区域。最近的工作与水下图像增强有关,并基于深度学习方法,解决了缺乏生成合成地面真相的配对数据集的问题。在本文中,我们提出了一种基于深度学习的水下图像增强自监督学习方法,该方法不需要配对数据集。提出的方法估计水下图像中存在的退化。此外,自动编码器重建该图像,并使用估计的退化信息对其输出图像进行降级。因此,该策略在训练阶段将输出图像替换为损失函数中的降级版本。这个过程\textit{会误导}神经网络去补偿额外的退化。因此,重建图像是输入图像的增强版本。此外,该算法还提出了一个关注模块,以减少彩色通道不平衡和异常区域在增强图像中产生的高强度区域。此外,所提出的方法不需要基础真理。此外,只使用真实的水下图像来训练神经网络,结果表明该方法在保持颜色、减少色偏和提高对比度方面是有效的。
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来源期刊
Computer Graphics World
Computer Graphics World 工程技术-计算机:软件工程
CiteScore
0.03
自引率
0.00%
发文量
0
审稿时长
>12 weeks
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