2024
DOI: 10.1049/rsn2.12647
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Efficient multi‐perspective jamming feature perception network for suppressive jamming recognition with limited training samples

Minghua Wu,
Yupei Lin,
Dongyang Cheng
et al.

Abstract: Recognising suppressive jamming signals is crucial for radar systems to counteract this type of jamming, highlighting the importance of research in this area. Current deep learning‐based methods for identifying suppressive jamming signals suffer from reduced effectiveness with limited training samples and issues related to high parameter counts and computational complexity. To address these challenges, the authors propose a jamming recognition method based on an efficient multi‐perspective jamming feature perc… Show more

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