New Approach to Underwater Image Enhancement Using Modified Residual Blocks in Generator Architecture for Improved Cycle Generative Adversarial Networks

Karthik Selvaraju, Samson Rajamani
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Abstract

Images captured underwater frequently have a low resolution as a result of a number of issues including light attenuation, backscattering, and colour distortion. The restoration of underwater images, which serves as an essential building block for the field of underwater vision research, remains a difficult endeavor. The process of removing the haziness and the colour distortion caused by the underwater environs is the main focus of the work that goes into the restoration of underwater images. Within the confines of this research, we present an enhanced approach for the enhancement of underwater images called Improved Cycle GAN (Generative Adversarial Network). The suggested approach makes use of a dual architecture that is composed of a generator network and a discriminator network in order to learn the mapping between low-quality underwater photographs and high-quality images. This dual architecture is comprised of a generator network and a discriminator network. The generator network is trained to transform the input image into an enhanced image, while the discriminator network evaluates the realism of the generated images. The suggested method outperforms state-of-the-art visual quality methods on a real-world UFO underwater image dataset. The proposed method is used to recover the original image. In order to measure quantity, the underwater image quality measure attributes called underwater image colourfulness measure (UICM), underwater image sharpness measure (UISM), and underwater image contrast measure (UIConM) are assessed. The proposed method could be employed in various underwater imaging processing applications, such as underwater surveillance, marine biology research, and underwater exploration, where high-quality images are crucial for effective analysis and decision-making.
水下图像增强的新方法:利用生成器架构中的修正残差块改进循环生成对抗网络
由于光衰减、反向散射和色彩失真等一系列问题,水下拍摄的图像通常分辨率较低。水下图像是水下视觉研究领域的重要基石,但水下图像的修复仍然是一项艰巨的任务。消除水下环境造成的朦胧和色彩失真是水下图像修复工作的重点。在这项研究的范围内,我们提出了一种增强水下图像的方法,称为 "改进循环生成对抗网络"(Improved Cycle GAN)。所建议的方法利用由生成器网络和判别器网络组成的双重架构来学习低质量水下照片和高质量图像之间的映射。这种双重架构由生成器网络和判别器网络组成。生成器网络通过训练将输入图像转换为增强图像,而判别器网络则对生成图像的真实性进行评估。在真实世界的 UFO 水下图像数据集上,所建议的方法优于最先进的视觉质量方法。建议的方法可用于恢复原始图像。为了测量数量,评估了水下图像质量测量属性,即水下图像色彩度测量(UICM)、水下图像清晰度测量(UISM)和水下图像对比度测量(UIConM)。所提出的方法可用于各种水下图像处理应用,如水下监控、海洋生物研究和水下勘探,在这些应用中,高质量的图像对于有效的分析和决策至关重要。
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