DMML:用于水下图像增强的深度多先验和多判别器学习

IF 3.2 1区 计算机科学 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC IEEE Transactions on Broadcasting Pub Date : 2024-01-25 DOI:10.1109/TBC.2024.3349773
Alireza Esmaeilzehi;Yang Ou;M. Omair Ahmad;M. N. S. Swamy
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引用次数: 0

摘要

在许多广播技术中,提高水下环境图像的质量至关重要。随着深度水下图像增强网络生成的特征丰富度的提高,可以生成质量更高的视觉信号。有鉴于此,本文针对水下图像增强任务提出了一种新的深度网络,该网络的特征生成过程以各种水下介质传输图和大气光估计方法获得的先验信息为指导。此外,为了获得与拟建网络生成的图像相关的不同图像质量评估指标的高值,我们为网络引入了多阶段训练过程。在第一阶段,我们采用传统的监督学习技术对网络进行训练;在第二阶段,我们采用对抗学习技术对网络进行训练。最后,在第三阶段,在对抗学习技术的指导下,继续训练通过传统监督学习获得的网络。在开发基于对抗学习阶段的网络时,我们提出了一种新颖的多判别器生成对抗网络,它能够生成具有更逼真纹理和结构的图像。所提出的多判别器生成式对抗网络在各种水下环境色彩空间中采用了真假数据判别过程。不同的实验结果表明,与其他最先进的深度水下图像增强网络相比,所提出的方案能有效地还原高质量的图像。
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DMML: Deep Multi-Prior and Multi-Discriminator Learning for Underwater Image Enhancement
Enhancing the quality of the images acquired under the water environments is crucial in many broadcast technologies. As the richness of the features generated by deep underwater image enhancement networks improves, the visual signals with higher qualities can be yielded. In view of this, in this paper, we propose a new deep network for the task of underwater image enhancement, in which the network feature generation process is guided by the prior information obtained from various underwater medium transmission map and atmospheric light estimation methods. Further, in order to obtain high values for different image quality assessment metrics associated with the images produced by the proposed network, we introduce a multi-stage training process for our network. In the first stage, the proposed network is trained with the conventional supervised learning technique, whereas, in the second stage, the training process of the network is carried out by the adversarial learning technique. Finally, in the third stage, the training of the network obtained by the conventional supervised learning is continued by the guidance of the one trained by the adversarial learning technique. In the development of the adversarial learning-based stage of our network, we propose a novel multi-discriminator generative adversarial network, which is able to produce images with more realistic textures and structures. The proposed multi-discriminator generative adversarial network employs the discrimination process between the real and fake data in various underwater environment color spaces. The results of different experimentations show the effectiveness of the proposed scheme in restoring the high-quality images compared to the other state-of-the-art deep underwater image enhancement networks.
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来源期刊
IEEE Transactions on Broadcasting
IEEE Transactions on Broadcasting 工程技术-电信学
CiteScore
9.40
自引率
31.10%
发文量
79
审稿时长
6-12 weeks
期刊介绍: The Society’s Field of Interest is “Devices, equipment, techniques and systems related to broadcast technology, including the production, distribution, transmission, and propagation aspects.” In addition to this formal FOI statement, which is used to provide guidance to the Publications Committee in the selection of content, the AdCom has further resolved that “broadcast systems includes all aspects of transmission, propagation, and reception.”
期刊最新文献
Table of Contents 2024 Scott Helt Memorial Award for the Best Paper Published in the IEEE Transactions on Broadcasting IEEE Transactions on Broadcasting Publication Information IEEE Transactions on Broadcasting Information for Authors Enhancing Channel Estimation in Terrestrial Broadcast Communications Using Machine Learning
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