Alakh NiranjanSparsh PatialAditya AryanAkshat MittalTanupriya ChoudhuryHamidreza Rabiei‐DastjerdiPraveen Kumar
INTRODUCTION: This paper addresses ship detection in satellite imagery through a deep learning approach, vital for maritime applications. Traditional methods face challenges with large datasets, motivating the adoption of deep learning techniques. OBJECTIVES: The primary objective is to present an algorithmic methodology for U-Net model training, focusing on achieving accuracy, efficiency, and robust ship detection. Overcoming manual limitations and enhancing real-time monitoring capabilities are key objectives. METHOD: The methodology involves dataset collection from Copernicus Open Hub, employing run-length encoding for efficient preprocessing, and utilizing a U-Net model trained on Sentinel-2 images. Data manipulation includes run-length encoding, masking, and balanced dataset preprocessing. RESULT: Results demonstrate the proposed deep learning model's effectiveness in handling diverse datasets, ensuring accuracy through U-Net architecture, and addressing imbalances. The algorithmic process showcases proficiency in ship detection. CONCLUSION: In conclusion, this paper contributes a comprehensive methodology for ship detection, significantly advancing accuracy, efficiency, and robustness in maritime applications. The U-Net-based model successfully automates ship detection, promising real-time monitoring enhancements and improved maritime security.
Marzuraikah Mohd StofaMohd Asyraf ZulkifleySiti Zulaikha Muhammad Zaki
Kodanda Dhar NaikManisha RautarayShivam SharmaSourav MohapatraSubhashree DashAbhishek Parida
Jigyasa ChadhaAarti JainYogesh Kumar
Mohamed Fuad Amin Mohamed JamalShaima Shawqi AlmeerSini Raj Pulari