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A Novel Deep-Learning Method with Channel Attention Mechanism for Underwater Target Recognition

  • Northwestern Polytechnical University Xian

Research output: Contribution to journalArticlepeer-review

46 Scopus citations

Abstract

The core of underwater acoustic recognition is to extract the spectral features of targets. The running speed and track of the targets usually result in a Doppler shift, which poses significant challenges for recognizing targets with different Doppler frequencies. This paper proposes deep learning with a channel attention mechanism approach for underwater acoustic recognition. It is based on three crucial designs. Feature structures can obtain high-dimensional underwater acoustic data. The feature extraction model is the most important. First, we develop a ResNet to extract the deep abstraction spectral features of the targets. Then, the channel attention mechanism is introduced in the camResNet to enhance the energy of stable spectral features of residual convolution. This is conducive to subtly represent the inherent characteristics of the targets. Moreover, a feature classification approach based on one-dimensional convolution is applied to recognize targets. We evaluate our approach on challenging data containing four kinds of underwater acoustic targets with different working conditions. Our experiments show that the proposed approach achieves the best recognition accuracy (98.2%) compared with the other approaches. Moreover, the proposed approach is better than the ResNet with a widely used channel attention mechanism for data with different working conditions.

Original languageEnglish
Article number5492
JournalSensors
Volume22
Issue number15
DOIs
StatePublished - Aug 2022

Keywords

  • feature extraction
  • neural networks
  • target recognition
  • underwater acoustic signals

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