2024
DOI: 10.3390/rs16142551
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Data Matters: Rethinking the Data Distribution in Semi-Supervised Oriented SAR Ship Detection

Yimin Yang,
Ping Lang,
Junjun Yin
et al.

Abstract: Data, in deep learning (DL), are crucial to detect ships in synthetic aperture radar (SAR) images. However, SAR image annotation limitations hinder DL-based SAR ship detection. A novel data-selection method and teacher–student model are proposed in this paper to effectively leverage sparse labeled data and improve SAR ship detection performance, based on the semi-supervised oriented object-detection (SOOD) framework. More specifically, we firstly propose a SAR data-scoring method based on fuzzy comprehensive e… Show more

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