Remote Sensing (Jun 2024)

A Method for Underwater Acoustic Target Recognition Based on the Delay-Doppler Joint Feature

  • Libin Du,
  • Zhengkai Wang,
  • Zhichao Lv,
  • Dongyue Han,
  • Lei Wang,
  • Fei Yu,
  • Qing Lan

DOI
https://doi.org/10.3390/rs16112005
Journal volume & issue
Vol. 16, no. 11
p. 2005

Abstract

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With the aim of solving the problem of identifying complex underwater acoustic targets using a single signal feature in the Time–Frequency (TF) feature, this paper designs a method that recognizes the underwater targets based on the Delay-Doppler joint feature. First, this method uses symplectic finite Fourier transform (SFFT) to extract the Delay-Doppler features of underwater acoustic signals, analyzes the Time–Frequency features at the same time, and combines the Delay-Doppler (DD) feature and Time–Frequency feature to form a joint feature (TF-DD). This paper uses three types of convolutional neural networks to verify that TF-DD can effectively improve the accuracy of target recognition. Secondly, this paper designs an object recognition model (TF-DD-CNN) based on joint features as input, which simplifies the neural network’s overall structure and improves the model’s training efficiency. This research employs ship-radiated noise to validate the efficacy of TF-DD-CNN for target identification. The results demonstrate that the combined characteristic and the TF-DD-CNN model introduced in this study can proficiently detect ships, and the model notably enhances the precision of detection.

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