AI Article Synopsis

  • Recent trends in underwater target recognition involve deep learning models, typically using either 1D or 2D approaches for time-domain signals and time-frequency spectra.
  • This paper introduces a new temporal 2D modeling method that combines 1D and 2D techniques for classifying ship radiation noise, leveraging periodic characteristics of time-domain signals to enhance long-term correlation insights.
  • The study shows that this hybrid method improves model accuracy by 0.9% and reduces parameter count by 30%, while also comparing the effectiveness of models trained on time-domain signals versus time-frequency representations, noting that time-domain models are more sensitive and space-efficient.

Article Abstract

In recent years, the application of deep learning models for underwater target recognition has become a popular trend. Most of these are pure 1D models used for processing time-domain signals or pure 2D models used for processing time-frequency spectra. In this paper, a recent temporal 2D modeling method is introduced into the construction of ship radiation noise classification models, combining 1D and 2D. This method is based on the periodic characteristics of time-domain signals, shaping them into 2D signals and discovering long-term correlations between sampling points through 2D convolution to compensate for the limitations of 1D convolution. Integrating this method with the current state-of-the-art model structure and using samples from the Deepship database for network training and testing, it was found that this method could further improve the accuracy (0.9%) and reduce the parameter count (30%), providing a new option for model construction and optimization. Meanwhile, the effectiveness of training models using time-domain signals or time-frequency representations has been compared, finding that the model based on time-domain signals is more sensitive and has a smaller storage footprint (reduced to 30%), whereas the model based on time-frequency representation can achieve higher accuracy (1-2%).

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC10935271PMC
http://dx.doi.org/10.3390/s24051633DOI Listing

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