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Deep convolution stack for waveform in underwater acoustic target recognition.

Shengzhao Tian1, Duanbing Chen1,2,3, Hang Wang1

  • 1Big Data Research Center, University of Electronic Science and Technology of China, Chengdu, 611731, China.

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A new deep neural network, the multiscale residual deep neural network (MSRDN), enhances underwater acoustic target recognition by using a deep convolution stack. This approach improves accuracy by effectively processing original signal waveforms.

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Area of Science:

  • Marine acoustics
  • Artificial intelligence
  • Signal processing

Background:

  • Deep learning effectively recognizes underwater acoustic targets from signal waveforms.
  • Existing methods using large convolutional kernels create shallow, imbalanced networks, underutilizing deep learning's potential.
  • Deep convolution stacks offer flexible, balanced structures but are underexplored in this domain.

Purpose of the Study:

  • To introduce a novel deep convolution stack network for underwater acoustic target recognition.
  • To propose a multiscale residual unit (MSRU) for constructing effective deep neural networks.
  • To enhance the accuracy of classifying underwater acoustic targets.

Main Methods:

  • Developed a multiscale residual unit (MSRU) to build a deep convolution stack network.
  • Proposed the multiscale residual deep neural network (MSRDN) for underwater acoustic target classification.
  • Validated the MSRU within Generative Adversarial Networks and tested MSRDN on real-world acoustic data.

Main Results:

  • The MSRDN model achieved a top recognition accuracy of 83.15%.
  • This represents a 6.99% improvement over related networks using original signal waveforms.
  • It also shows a 4.48% improvement compared to networks using time-frequency representations.

Conclusions:

  • The proposed MSRU is effective for building deep convolution stack networks in underwater acoustics.
  • MSRDN demonstrates superior performance in underwater acoustic target recognition.
  • The deep convolution stack approach offers a promising direction for improving acoustic target classification accuracy.