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Comparison of U-Net and OASRN neural network for microwave imaging

Author

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  • C. C. Chiu
  • T. H. Kang
  • P. H. Chen
  • H. Jiang
  • Y. K. Chen

Abstract

U-Net and Object-Attentional Super-Resolution Network (OASRN) neural network for electromagnetic imaging are compared and investigated in this paper. The outcome shows that though under limited training data, the regeneration capability is still highly reliable. We first transmit the electromagnetic waves to the scatterer and use the received scattered field information to calculate the estimated permittivity distribution by Green’s function, subspace method and Dominant Current Scheme (DCS). The estimation technique can effectively reduce the training process of the neural network modules. Next, we train the U-Net and OASRN modules for real-time images. Lastly, we used Root Mean Square Error (RMSE) and Structural Similarity Index Measure (SSIM) to compare and analyze the reconstructed images of the two neural networks. Numerical results show that the reconstructed image by OASRN is better than that by U-net with 5% or 20% Gaussian noise for different dielectric constant distributions.

Suggested Citation

  • C. C. Chiu & T. H. Kang & P. H. Chen & H. Jiang & Y. K. Chen, 2023. "Comparison of U-Net and OASRN neural network for microwave imaging," Journal of Electromagnetic Waves and Applications, Taylor & Francis Journals, vol. 37(1), pages 93-109, January.
  • Handle: RePEc:taf:tewaxx:v:37:y:2023:i:1:p:93-109
    DOI: 10.1080/09205071.2022.2113444
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