Download PDFOpen PDF in browserMaritime Security Optimization for Large Scale Surveillance through Automated Object Detection12 pages•Published: August 6, 2024AbstractEnsuring maritime security and surveillance demands advanced technological solutions, and satellite imagery has emerged as a pivotal asset in this domain. This paper introduces an innovative approach for ship detection in satellite imagery, integrating convolutional neural networks (CNNs) and artificial neural networks (ANNs). The amalgamation of these neural network architectures aims to overcome the intricate challenges associated with maritime surveillance, including dynamic environmental conditions and the diverse nature of vessels. The Convolutional Neural Network (CNN) component is used for extracting complex spatial features from satellite imagery, allowing for the identification of potential ship-related patterns. Acting as a specialized detector, the CNN navigates the complexities of maritime landscapes, discerning vessels from varying backgrounds and environmental factors. Complementing the CNN, the Artificial Neural Network (ANN) component refines the high-level features extracted, facilitating advanced analysis and reducing false positives. The synergy between CNN and ANN contributes to a comprehensive ship detection system, enhancing accuracy and adaptability in real-world scenarios. Extensive experimentation on diverse satellite imagery datasets validates the effectiveness of the proposed integrated approach. The results demonstrate a high performance compared to individual neural network models, ensuring the system's resilience to the changing conditions. The versatility of this integrated solution positions it as a valuable asset in real-time maritime surveillance, promising to increase the standards of maritime security and surveillance operations.Keyphrases: artificial, convolution neural network (cnn), maritime surveillance, neural network (ann), satellite images, ship detection In: Rajakumar G (editor). Proceedings of 6th International Conference on Smart Systems and Inventive Technology, vol 19, pages 217-228.
|