Journal of Electromagnetic Engineering and Science (Mar 2024)

Improving Deep CNN-Based Radar Target Classification Performance by Applying a Denoise Filter

  • Van-Tra Nguyen,
  • Chi-Thanh Vu,
  • Van-Sang Doan

DOI
https://doi.org/10.26866/jees.2024.2.r.220
Journal volume & issue
Vol. 24, no. 2
pp. 198 – 205

Abstract

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This paper presents a novel method for removing noise from range-Doppler images by using a filter prior to conducting target classification using a deep neural network. Specifically, Kuan, Frost, and Lee filters are employed to eliminate speckle noise components from radar data images. Furthermore, a neural network that combines residual and inception blocks (RINet) is proposed. The RINet model is trained and tested on the RAD-DAR dataset—a collection of range-Doppler feature maps. The analysis results show that the application of a Lee filter with a window size of 7 in the RAD-DAR dataset demonstrates the most improvement in the model’s classification performance. On applying this noise filter to the dataset, the RINet model successfully classified radar targets, exhibiting a 4.51% increase in accuracy and a 14.07% decrease in loss compared to the classification results achieved for the original data. Furthermore, a comparison of the RINet model with the noise filtering solution with five other networks was conducted, the results of which show that the proposed model significantly outperforms the others.

Keywords