Underwater acoustic target recognition using attention-based deep neural network.

Journal: JASA express letters
Published Date:

Abstract

Underwater acoustic target recognition based on ship-radiated noise is difficult owing to the complex marine environment and the interference by multiple targets. As an important technology for target recognition, deep-learning has high accuracy but poor interpretability. In this study, an attention-based neural network (ABNN) is proposed for target recognition in the pressure spectrogram with multi-source interference using an attention module to inspect the inner workings of the neural network. From data obtained during a September 2020 sea trial, the ABNN exhibited a gradual focus on the frequency-domain feature of the target ship and suppressed environmental noises and marine vessel interference, which led to high accuracy in the target detection and recognition.

Authors

  • Xu Xiao
    Key Laboratory of Underwater Acoustics Environment, Chinese Academy of Sciences, Beijing 100190, China.
  • Wenbo Wang
  • Qunyan Ren
    Key Laboratory of Underwater Acoustic Environment, Institute of Acoustics, Chinese Academy of Sciences, Beijing 100190, China.
  • Peter Gerstoft
    Scripps Institution of Oceanography, University of California San Diego, La Jolla, California 92093-0238, USAytytcj110@163.com, lxl_ouc@outlook.com, coolice@ouc.edu.cn, dzgao@ouc.edu.cn, pgerstoft@ucsd.edu.
  • Li Ma
    Department of Technological Research and Development, Hunan Guanmu Biotech Co., Ltd, Changsha, China.