CVAIJun 15, 2025

Scene-aware SAR ship detection guided by unsupervised sea-land segmentation

arXiv:2506.12775v11 citationsh-index: 252025 IEEE 6th International Conference on Pattern Recognition and Machine Learning (PRML)
Originality Incremental advance
AI Analysis

This addresses SAR ship detection accuracy for remote sensing applications, but appears incremental as it builds on a classical two-stage framework with added modules.

The paper tackles the problem of SAR ship detection accuracy being affected by lack of prior knowledge by proposing a scene-aware method guided by unsupervised sea-land segmentation, which reduces attention to land and enhances offshore detection performance.

DL based Synthetic Aperture Radar (SAR) ship detection has tremendous advantages in numerous areas. However, it still faces some problems, such as the lack of prior knowledge, which seriously affects detection accuracy. In order to solve this problem, we propose a scene-aware SAR ship detection method based on unsupervised sea-land segmentation. This method follows a classical two-stage framework and is enhanced by two models: the unsupervised land and sea segmentation module (ULSM) and the land attention suppression module (LASM). ULSM and LASM can adaptively guide the network to reduce attention on land according to the type of scenes (inshore scene and offshore scene) and add prior knowledge (sea land segmentation information) to the network, thereby reducing the network's attention to land directly and enhancing offshore detection performance relatively. This increases the accuracy of ship detection and enhances the interpretability of the model. Specifically, in consideration of the lack of land sea segmentation labels in existing deep learning-based SAR ship detection datasets, ULSM uses an unsupervised approach to classify the input data scene into inshore and offshore types and performs sea-land segmentation for inshore scenes. LASM uses the sea-land segmentation information as prior knowledge to reduce the network's attention to land. We conducted our experiments using the publicly available SSDD dataset, which demonstrated the effectiveness of our network.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes