2023
DOI: 10.1007/s11063-023-11214-3
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Completion-Attention Ladder Network for Few-Shot Underwater Acoustic Recognition

Abstract: Underwater acoustic object recognition is becoming attractive given the critical information available. However, this comes at the expense of large-scale annotated data, which is expensive to collect and annotate. This paper proposes a semi-supervised learning approach of SE_RseNet_Decoder to recognizing insufficient sample underwater acoustic targets. Given this goal, we introduce the SE_RseNet_Decoder network containing supervised and unsupervised modules. Firstly, we leverage the supervised module to recogn… Show more

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