
Enhancing Underwater Imagery Using Generative Adversarial Networks: A Deep Sea Vision Approach | IJET β Volume 11 Issue 6 | IJET-V11I6P16

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ToggleInternational Journal of Engineering and Techniques (IJET)
Open Access β’ Peer Reviewed β’ High Citation & Impact Factor β’ ISSN: 2395-1303
Volume 11, Issue 6 | Published: November 2025
Author:T Swath, Kurri Sai Priya, Kasaram Bhanuja, Manda Deepika, Malreddy Anusha, Mallela Sruthi Reddy
Abstract
Underwater image enhancement is a challenging task due to factors such as light absorption, scattering, and color distortion, which degrade image quality and visibility. This project proposes an advanced image enhancement approach using Generative Adversarial Networks (GANs) to address these challenges effectively. The study explores and implements various GAN-based architectures, including Deep Convolutional GANs (DCGANs) and Conditional GANs (cGANs), for restoring natural colors, enhancing contrast, and improving overall image clarity. By leveraging the generatorβdiscriminator framework of GANs, the model learns to reconstruct visually appealing underwater images that closely resemble their natural appearance. Comprehensive experimentation and evaluation will be conducted using standard underwater image datasets and objective metrics such as PSNR, SSIM, and color accuracy. The proposed method aims to outperform traditional image enhancement techniques in both visual quality and computational efficiency. This research contributes to the growing field of underwater image processing, offering potential applications in marine biology, underwater robotics, environmental monitoring, and ocean exploration. The findings demonstrate the feasibility and effectiveness of GAN-based approaches for robust underwater image enhancement.
Keywords
GAN, deep sea vision, image enhancement, underwater image
Conclusion
GAN is a new field hence thereβs lot to explore and learn. As an unsupervised learning method, GANs is one of the most important research directions in deep learning. GAN, which rely on the internal confrontation between real data and models to achieve unsupervised learning, is just a glimmer of light for AIs self-learning ability.
Throughout this project, we have demonstrated the effectiveness of GAN-based techniques in enhancing underwater images by learning from both clean and distorted data. By training the model on a diverse dataset and optimizing its architecture, we have achieved remarkable results in improving image clarity, restoring natural colors, and reducing noise artifacts. Our experimentation and evaluation have shown that our proposed method outperforms traditional image enhancement techniques, providing more robust and reliable results.
Looking ahead, the insights gained from this project pave the way for further advancements in underwater imaging technology. Future research directions may include exploring novel GAN architectures, integrating additional sensor data for enhanced performance, and addressing specific challenges in different underwater environments. Overall, our project contributes to the ongoing efforts to unlock the full potential of underwater imaging, ultimately leading to better understanding and utilization of our planet’s underwater ecosystems.
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Cite this article
APA
T Swath, Kurri Sai Priya, Kasaram Bhanuja, Manda Deepika, Malreddy Anusha, Mallela Sruthi Reddy (November 2025). Enhancing Underwater Imagery Using Generative Adversarial Networks: A Deep Sea Vision Approach. International Journal of Engineering and Techniques (IJET), 11(6). https://zenodo.org/records/17681642
T Swath, Kurri Sai Priya, Kasaram Bhanuja, Manda Deepika, Malreddy Anusha, Mallela Sruthi Reddy, βEnhancing Underwater Imagery Using Generative Adversarial Networks: A Deep Sea Vision Approach,β International Journal of Engineering and Techniques (IJET), vol. 11, no. 6, November 2025, doi: https://zenodo.org/records/17681642.
