Ship-Radiated Noise Separation in Underwater Acoustic Environments Using a Deep Time-Domain Network

Qunyi He, Haitao Wang, Xiangyang Zeng, Anqi Jin

Research output: Contribution to journalArticlepeer-review

2 Scopus citations

Abstract

Ship-radiated noise separation is critical in both military and economic domains. However, due to the complex underwater environments with multiple noise sources and reverberation, separating ship-radiated noise poses a significant challenge. Traditionally, underwater acoustic signal separation has employed blind source separation methods based on independent component analysis. Recently, the separation of underwater acoustic signals has been approached as a deep learning problem. This involves learning the features of ship-radiated noise from training data. This paper introduces a deep time-domain network for ship-radiated noise separation by leveraging the power of parallel dilated convolution and group convolution. The separation layer employs parallel dilated convolution operations with varying expansion factors to better extract low-frequency features from the signal envelope while preserving detailed information. Additionally, we use group convolution to reduce the expansion of network size caused by parallel convolution operations, enabling the network to maintain a smaller size and computational complexity while achieving good separation performance. The proposed approach is demonstrated to be superior to the other common networks in the DeepShip dataset through comprehensive comparisons.

Original languageEnglish
Article number885
JournalJournal of Marine Science and Engineering
Volume12
Issue number6
DOIs
StatePublished - Jun 2024

Keywords

  • deep network
  • group convolution
  • parallel dilated convolution
  • ship-radiated noise separation
  • underwater acoustic

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