2024
DOI: 10.3390/rs16142541
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Weakly Supervised Transformer for Radar Jamming Recognition

Menglu Zhang,
Yushi Chen,
Ye Zhang

Abstract: Radar jamming recognition is a key step in electronic countermeasures, and accurate and sufficient labeled samples are essential for supervised learning-based recognition methods. However, in real practice, collected radar jamming samples often have weak labels (i.e., noisy-labeled or unlabeled ones), which degrade recognition performance. Additionally, recognition performance is hindered by limitations in capturing the global features of radar jamming. The Transformer (TR) has advantages in modeling long-rang… Show more

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