Image-Based Ship Detection Using Deep Variational Information Bottleneck

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Abstract

Image-based ship detection is a critical function in maritime security. However, lacking high-quality training datasets makes it challenging to train a robust supervision deep learning model. Conventional methods use data augmentation to increase training samples. This approach is not robust because the data augmentation may not present a complex background or occlusion well. This paper proposes to use an information bottleneck and a reparameterization trick to address the challenge. The information bottleneck learns features that focus only on the object and eliminate all backgrounds. It helps to avoid background variance. In addition, the reparameterization introduces uncertainty during the training phase. It helps to learn more robust detectors. Comprehensive experiments show that the proposed method outperforms conventional methods on Seaship datasets, especially when the number of training samples is small. In addition, this paper discusses how to integrate the information bottleneck and the reparameterization into well-known object detection frameworks efficiently.

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Ngo, D. D., Vo, V. L., Nguyen, T., Nguyen, M. H., & Le, M. H. (2023). Image-Based Ship Detection Using Deep Variational Information Bottleneck. Sensors, 23(19). https://doi.org/10.3390/s23198093

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