IEEE Access (Jan 2024)

Underwater Targets Radiated Noise Classification Based on Enhanced Images and Convolutional Neural Networks

  • Lei Zhufeng,
  • Luo Jiachao,
  • Qin Qiwei,
  • Lei Xiaofang,
  • Zhou Chuanghui,
  • Zhang Qian

DOI
https://doi.org/10.1109/ACCESS.2024.3435669
Journal volume & issue
Vol. 12
pp. 105968 – 105973

Abstract

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As the economy and society continue to develop, the types of underwater targets are becoming increasingly diverse, accompanied by a corresponding increase in environmental noise. This noise presents a significant challenge for the recognition of underwater target radiation noise, as it can result in the loss of effective information during the noise processing stage. This, in turn, reduces the accuracy of underwater target radiation noise recognition. This paper proposes an underwater target radiation noise recognition method based on the enhanced image method. The method transforms the original underwater target radiation noise signal into an enhanced image, builds a convolutional neural network with the enhanced image as an input, and uses the convolutional neural network’s ability to classify images to recognise and classify underwater target radiation noise. The experimental results demonstrate that the training time of the method described in this paper is longer than that of the traditional machine learning method, yet the recognition and classification accuracy is significantly higher.

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