Underwater Image Enhancement using Convolutional Block Attention Module

N. Singh, Aruna Bhat
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Abstract

Underwater images include poor contrast, fuzzy features, and colour distortion due to light scattering, refraction and absorption by unwanted dust particles in water. This research demonstrates that assigning the appropriate receptive field size context depending on the traversal scope of the color channel can result in a significant performance boost for the objective of underwater image enhancement. It’s critical to reduce non-uniform multiple contextual elements, and also boost the model’s representational potential. So to dynamically modify the learnt multi-contextual characteristics, we included an attentive skip method. The suggested framework is improved via pixel wise and feature based cost functions. Experiments and comparisons with existing deep learning models and conventional approaches validate the framework for underwater image enhancement. The proposed framework is superior according to comparison results.
基于卷积块注意力模块的水下图像增强
水下图像包括对比度差,模糊的特征,以及由于水中不需要的尘埃颗粒的光散射,折射和吸收而导致的颜色失真。本研究表明,根据颜色通道的遍历范围分配适当的感受野大小上下文可以导致水下图像增强目标的显著性能提升。减少不一致的多个上下文元素,并提高模型的表示潜力是至关重要的。因此,为了动态修改学习到的多上下文特征,我们引入了注意跳过方法。建议的框架通过像素和基于特征的代价函数得到改进。与现有深度学习模型和传统方法的实验和比较验证了该框架的有效性。对比结果表明,所提出的框架具有较好的优越性。
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