一种增强低对比度、模糊和颜色退化的水下图像的深度学习方法

Ayushi Gupta, R. Singh
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引用次数: 0

摘要

本文介绍了如何使用基于物理神经网络(PNN)的图像增强方法来改善光照不均匀、对比度低、模糊和颜色退化的水下图像。该方法基于深度学习原理,重点关注受损或有噪声的水下图像的输入图像、权重和权重图以及白平衡数据。所提出的方法采用各种权重映射,包括亮度、对比度、色度和显著性,以创建克服初始图像或噪声图像缺乏明显清晰度的限制的图像。降低噪音水平和更好地暴露黑暗区域,以及增加的整体对比度和更精细的特征和边缘,可以在水下图像中找到,利用上述过程创建。在EUVP数据集上进行了实验,观察到所提出的方法在效率方面优于其他最先进的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Deep Learning Approach to Enhance Underwater Images with Low Contrast, Blurriness and Degraded Color
This paper presents how to improve underwater images with non-uniform lighting, low contrast, blurriness, and degraded color using a Physical Neural Network (PNN)-based image-enhancing approach. The suggested method is built on the deep learning principle and focuses on a damaged or noisy underwater image's input images, weight & weight maps, and white balance data. The proposed method employs a variety of weight maps, including luminance, contrast, chromatic, and saliency, to create an image that overcomes the limits of the initial or noised image, which lacks distinct clarity. Reduced noise levels and better exposed dark regions, as well as increased global contrast and finer features and edges, can be found in the underwater image, created utilizing the aforementioned processes. The experiments are carried out on the EUVP dataset, and it is observed that the proposed method surpasses other state-of-the-art methods in terms of efficiency.
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